Biological Age: Difference between revisions

    From Longevity Wiki
     
    (33 intermediate revisions by the same user not shown)
    Line 1: Line 1:
    Biological Age (BA) is a concept used to assess an individual's aging status, offering a more nuanced understanding than Chronological Age (CA). CA refers simply to the amount of time that has elapsed since a person's birth, while BA provides a measure of aging based on various physiological, biochemical, and molecular factors. This distinction is crucial because individuals of the same CA can exhibit significantly different aging processes and health statuses.
    '''Biological Age (BA)''' is a concept used to assess an individual's aging status, offering a more nuanced understanding than '''Chronological Age (CA)'''. Chronological age refers simply to the amount of time that has elapsed since a person's birth, while biological age provides a measure of aging based on various physiological, biochemical, and molecular factors. This distinction is crucial because individuals of the same chronological age can exhibit significantly different aging processes and health statuses.


    === Key Aspects of Biological Age ===
    === Key Aspects of Biological Age ===
     
    Biological age is estimated as the equivalent age within the same-sex population which corresponds to an individual's mortality risk.
    # '''Biomarkers:''' BA is typically determined by analyzing a range of biomarkers. These can include genetic markers, [[Epigenetic Alterations|epigenetic alterations]], [[Cellular Senescence|cellular senescence]], [[Telomere Attrition|telomere length]], metabolic markers, and more. The specific biomarkers chosen depend on the method of estimation and the focus of the study.
    # '''Biomarkers:''' Biological age is typically determined by analyzing a range of biomarkers. These can include genetic markers, [[Epigenetic Alterations|epigenetic alterations]], [[Cellular Senescence|cellular senescence]], [[Telomere Attrition|telomere length]], metabolic markers, and more. The specific biomarkers chosen depend on the method of estimation and the focus of the study.
    # '''Health and Functionality:''' BA reflects the functional state of an individual's organs and systems. A lower BA compared to CA might indicate better health and lower risk for [[Age-Related Diseases|age-related diseases]], whereas a higher BA suggests accelerated aging and potentially increased health risks.
    # '''Health and Functionality:''' Biological age reflects the functional state of an individual's organs and systems. A lower biological age compared to chronological age might indicate better health and lower risk for [[Age-Related Diseases|age-related diseases]], whereas a higher biological age suggests accelerated aging and potentially increased health risks.
    # '''Variability:''' Unlike CA, which is uniform and progresses at a constant rate (one year per year), BA can vary significantly between individuals. Factors such as lifestyle, genetics, environment, and disease can influence the rate at which a person's biological systems age.
    # '''Variability:''' Unlike chronological age, which is uniform and progresses at a constant rate (one year per year), biological age can vary significantly between individuals. Factors such as lifestyle, genetics, environment, and disease can influence the rate at which a person's biological systems age. For example, biological age estimated from blood markers ranged between 20-years younger and 20-years older than individuals' chronological age.{{pmid|37884697}}


    === Importance in Research and Medicine ===
    === Importance in Research and Medicine ===


    # '''Research Tool:''' In scientific research, BA is valuable for understanding the aging process, identifying aging biomarkers, and evaluating the effectiveness of anti-aging interventions.
    # '''Research Tool:''' In scientific research, biological age is valuable for understanding the aging process, identifying aging biomarkers, and evaluating the effectiveness of anti-aging interventions.
    # '''Clinical Applications:''' In a clinical setting, BA can be used to assess an individual's overall health status, predict the risk of age-related diseases, and personalize healthcare and treatment plans.
    # '''Clinical Applications:''' In a clinical setting, biological age can be used to assess an individual's overall health status, predict the risk of age-related diseases, and personalize healthcare and treatment plans.


    == Estimation Methods ==
    == Biological Age Estimation Methods ==
    Biological age estimation has emerged as a significant tool in gerontology, aiming to provide a more accurate measure of aging than chronological age.  
    Biological age estimation has emerged as a significant tool in gerontology, aiming to provide a more accurate measure of aging than chronological age.  


    The accurate estimation of BA has significant implications for clinical practice, including predicting disease onset and prognosis, improving the quality of life for the elderly, and promoting successful aging. Each method offers unique insights, and a comprehensive understanding of these methods can lead to better clinical decision-making and more effective interventions for aging-related conditions.
    The accurate estimation of biological age has significant implications for clinical practice, including predicting disease onset and prognosis, improving the quality of life for the elderly, and promoting successful aging. Each method offers unique insights, and a comprehensive understanding of these methods can lead to better clinical decision-making and more effective interventions for aging-related conditions.
     
    Various methods have been developed to estimate biological age, each with its unique approach and criteria:{{pmid|28546743}}
     
    * '''Multiple Linear Regression (MLR)''' is a statistical technique that estimates biological age by relating several independent variables (biomarkers) to a dependent variable (chronological age). In this method, chronological age is used as a criterion for selecting biomarkers and is treated as an independent index.
    * '''Principal Component Analysis (PCA)''' is another statistical technique used in biological age estimation. PCA reduces the dimensionality of the data by transforming multiple biomarkers into a set of linearly uncorrelated variables, known as principal components.
    * '''Hochschild’s Method''' differs from MLR and PCA by making chronological age an independent variable. It aims to estimate biological age by adjusting chronological age based on specific biomarkers.
    * '''Klemera and Doubal’s Method (KDM)''' shares a similar concept with Hochschild’s method but uses a more complex statistical approach. It treats chronological age as an independent variable and incorporates multiple biomarkers to estimate biological age.
    * '''Deep Learning'''-based approaches represent an emerging and powerful method for biological age estimation. Leveraging complex neural network architectures, these methods can analyze large datasets of biomarkers, integrating diverse types of biological data. Deep learning models can uncover intricate patterns in the data that may be missed by traditional statistical techniques, offering potentially more accurate and personalized biological age estimations. However, they require large, well-curated datasets to be effective.


    Various methods have been developed to estimate BA, each with its unique approach and criteria:{{pmid|28546743}}
    === Role of Chronological Age ===
    The role of chronological age in the estimation of biological age varies significantly between different methods. In MLR and PCA, chronological age is used as a criterion for selecting biomarkers. This means that the biomarkers are chosen based on how well they correlate with chronological age. In this context, chronological age is not an independent variable in the statistical model but rather a reference point against which the predictive power of biomarkers is measured.


    * '''Multiple Linear Regression (MLR)''' is a statistical technique that estimates BA by relating several independent variables (biomarkers) to a dependent variable (CA). In this method, CA is used as a criterion for selecting biomarkers and is treated as an independent index.
    In contrast, Hochschild’s method and KDM treat chronological age as an independent variable. This means chronological age is directly incorporated into the model as one of the variables that predict biological age.
    * '''Principal Component Analysis (PCA)''' is another statistical technique used in BA estimation. PCA reduces the dimensionality of the data by transforming multiple biomarkers into a set of linearly uncorrelated variables, known as principal components.
    * '''Hochschild’s Method''' differs from MLR and PCA by making CA an independent variable. It aims to estimate BA by adjusting CA based on specific biomarkers.
    * '''Klemera and Doubal’s Method (KDM)''' shares a similar concept with Hochschild’s method but uses a more complex statistical approach. It treats CA as an independent variable and incorporates multiple biomarkers to estimate BA.


    Comparisons among MLR, PCA, Hochschild’s method, and KDM
    === Comparison ===
    Comparisons of various biological age estimation methods
    {| class="wikitable"
    {| class="wikitable"
    ! colspan="1" rowspan="1" |Method
    ! Method
    ! colspan="1" rowspan="1" |Proposer
    ! Proposed
    ! colspan="1" rowspan="1" |Year
    ! Core concept
    ! colspan="1" rowspan="1" |Core concept
    ! Advantage
    ! colspan="1" rowspan="1" |Advantage
    ! Disadvantage
    ! colspan="1" rowspan="1" |Disadvantage
    |-
    ! colspan="1" rowspan="1" |Main researchers
    | MLR
    | 1965, Hollingsworth{{pmid|5841151}}
    | Aging biomarkers are determined by the correlation with chronological age using MLR model
    |
    * MLR is the preliminary method and is easy to operate
    |
    * The standards of aging biomarkers lead to the paradox of chronological age
    * MLR also distorts the biological age at the regression edge and ignores discontinuity in the aging rate{{pmid|6873212}}{{pmid|3226152}}{{pmid|950448}}
    |-
    |-
    | colspan="1" rowspan="1" |MLR
    | PCA
    | colspan="1" rowspan="1" |
    | 1988, Nakamura{{pmid|2737197}}
    | colspan="1" rowspan="1" |More than 50 years ago
    | PCA uses fewer uncorrelated variables to explain the main variance
    | colspan="1" rowspan="1" |Aging biomarkers are determined by the correlation with CA using MLR model
    |
    | colspan="1" rowspan="1" |MLR is the preliminary method and is easy to operate
    * Biomarkers are uncorrelated variables{{pmid|16318865}}
    | colspan="1" rowspan="1" |(1) The standards of aging biomarkers lead to the paradox of CA
    * PCA avoids the influence of regression edge in MLR{{pmid|3226152}}
    (2) MLR also distorts the BA at the regression edge and ignores discontinuity in the aging rate{{pmid|6873212}}{{pmid|3226152}}{{pmid|950448}}
    |
    | colspan="1" rowspan="1" |Hollingsworth et al{{pmid|5841151}} and Kroll and Saxtrup{{pmid|11708217}}
    * PCA cannot avoid the paradox of chronological age and some statistical deficiencies of MLR{{pmid|16318865}}
    |-
    |-
    | colspan="1" rowspan="1" |PCA
    | Hochschild’s method
    | colspan="1" rowspan="1" |Nakamura
    | 1989, Hochschild{{pmid|2684676}}
    | colspan="1" rowspan="1" |1985
    | Hochschild’s method aims to select aging biomarkers according to their effects on life expectancy{{pmid|2684676}}
    | colspan="1" rowspan="1" |PCA uses fewer uncorrelated variables to explain the main variance
    |
    | colspan="1" rowspan="1" |(1) Biomarkers are uncorrelated variables{{pmid|16318865}}
    * Hochschild’s method solves the paradox of chronological age
    (2) PCA avoids the influence of regression edge in MLR{{pmid|3226152}}
    * Hochschild’s method avoids statistical problems of MLR
    | colspan="1" rowspan="1" |PCA cannot avoid the paradox of CA and some statistical deficiencies of MLR{{pmid|16318865}}
    |
    | colspan="1" rowspan="1" |Nakamura et al,{{pmid|2737197}}{{pmid|2282902}} Nakamura and Miyao,{{pmid|12634284}} Nakamura et al,{{pmid|8026568}}{{pmid|9762521}} Nakamura and Miyao,{{pmid|17921421}} Nakamura et al,{{pmid|3226152}} Nakamura,<ref>75. Nakamura E. The assessment of physiological age based upon a principal component analysis of various physiological variables. J Kyoto Pref Univ Med. 1985;94:757–769. [Google Scholar]</ref> Nakamura and Miyao,{{pmid|18840798}} Nakamura et al,{{pmid|8803500}} Park et al,{{pmid|18597867}} Bai et al,{{pmid|19940465}} and Zhang{{pmid|25470806}}–{{pmid|24659482}}
    * Hochschild’s method is nonstandard and relatively complicated
    * Hochschild’s method is not based on the definition of biological age
    * A large number of subjects are required when this approach is adopted for another system{{pmid|20005245}}
    |-
    |-
    | colspan="1" rowspan="1" |Hochschild’s method
    | KDM
    | colspan="1" rowspan="1" |Hochschild
    | 2006, Klemera and Doubal{{pmid|16318865}}
    | colspan="1" rowspan="1" |1989
    | KDM is based on minimizing the distance between ''m'' regression lines and ''m'' biomarker points in an ''m''-dimensional space of all biomarkers{{pmid|16318865}}
    | colspan="1" rowspan="1" |Hochschild’s method aims to select aging biomarkers according to their effects on life expectancy{{pmid|2684676}}
    |
    | colspan="1" rowspan="1" |(1) Hochschild’s method solves the paradox of CA
    * KDM performed better than chronological age{{pmid|23213031}}
    (2) Hochschild’s method avoids statistical problems of MLR
    * KDM is precise when compared with other methods{{pmid|23213031}}{{pmid|20005245}}{{pmid|28110151}}
    | colspan="1" rowspan="1" |(1) Hochschild’s method is nonstandard and relatively complicated
    * KDM solves the paradox of chronological age{{pmid|23213031}}{{pmid|20005245}}
    (2) Hochschild’s method is not based on the definition of BA
    |
    (3) A large number of subjects are required when this approach is adopted for another system{{pmid|20005245}}
    * The calculation of KDM is complicated{{pmid|20005245}}
    | colspan="1" rowspan="1" |Hochschild{{pmid|2684676}}{{pmid|2583248}}<ref>76. Hochschild R. Validating Biomarkers of Aging-Mathematical Approaches and Results of a 2462-Person Study. Boca Raton: CRC Press; 1994. [Google Scholar]</ref>
    |-
    |-
    | colspan="1" rowspan="1" |KDM
    |Deep learning
    | colspan="1" rowspan="1" |Klemera and Doubal
    |2015{{pmid|26017442}}
    | colspan="1" rowspan="1" |2006
    |Deep learning is a subfield of machine learning, where good features can be learned automatically using a general-purpose learning procedure{{pmid|26017442}}. Deep neural networks (DNNs){{pmid|27191382}}{{pmid|29340580}}{{pmid|30644411}}{{pmid|34453631}}, convolutional neural networks (CNNs){{pmid|29581467}}{{pmid|33744131}}, and recurrent neural networks (RNNs){{pmid|31388024}} have been employed to build BA models in recent years.
    | colspan="1" rowspan="1" |KDM is based on minimizing the distance between ''m'' regression lines and ''m'' biomarker points in an ''m''-dimensional space of all biomarkers{{pmid|16318865}}
    |
    | colspan="1" rowspan="1" |(1) KDM performed better than CA{{pmid|23213031}}
    * Good at handling high-dimensional dataset{{pmid|26017442}}
    (2) KDM is precise when compared with other methods{{pmid|23213031}}{{pmid|20005245}}{{pmid|28110151}}
    * The machine extracts features autonomously by learning{{pmid|26017442}}
    (3) KDM solves the paradox of CA{{pmid|23213031}}{{pmid|20005245}}
    |
    | colspan="1" rowspan="1" |The calculation of KDM is complicated{{pmid|20005245}}
    * Difficulty in building large data{{pmid|27191382}}
    | colspan="1" rowspan="1" |Klemera and Doubal,{{pmid|16318865}} Levine,{{pmid|23213031}} Levine and Crimmins,{{pmid|25088793}} Cho et al{{pmid|20005245}} and Jee and Park{{pmid|28110151}}
    * The existence of a “black box” and uncontrollable results
    * Excellent programming skills and computer hardware and software support required
    |}
    |}


    ====Comparison and Discussion====
    == Biomarkers for Biological Age Estimation ==
    While MLR and PCA treat CA as a criterion for biomarker selection, Hochschild’s method and KDM consider CA as an independent variable. The choice of method depends on the specific research goals and the nature of the available data. MLR and PCA are more straightforward and are often used in initial studies, while Hochschild’s method and KDM provide a more nuanced view of the aging process.
    {| class="wikitable"
    ! Organ system
    ! PCA
    ! MLR
    ! Hochschild’s
    ! KDM
    |-
    | rowspan="10" | Cardiovascular system
    | Pulse pressure{{pmid|19940465}}{{pmid|24659482}}{{pmid|29188884}}
    |
    |
    |
    |-
    | Systolic blood pressure{{pmid|2737197}}{{pmid|2282902}}{{pmid|17921421}}{{pmid|18597867}}{{pmid|12672981}}{{pmid|18840798}}{{pmid|8803500}}{{pmid|28110151}}
    | Systolic blood pressure{{pmid|23213031}}{{pmid|6967883}}{{pmid|5841151}}{{pmid|950448}}{{pmid|28110151}}
    |
    | Systolic blood pressure{{pmid|28110151}}
    |-
    | Heart rate{{pmid|2737197}}{{pmid|2282902}}
    |
    |
    |
    |-
    | Intima-media thickness{{pmid|19940465}}{{pmid|24522464}}{{pmid|24659482}}
    |
    |
    |
    |-
    | Maximum internal diameter of carotid artery{{pmid|24522464}}{{pmid|24659482}}
    |
    |
    |
    |-
    | End diastolic velocity{{pmid|19940465}}
    |
    |
    |
    |-
    | Mitral valve annulus ventricular septum of the peak velocity of early filling{{pmid|24522464}}
    |
    |
    |
    |-
    | Mitral valve annulus lateral wall of peak velocity of early filling{{pmid|19940465}}
    |
    |
    |
    |-
    | Mitral annulus peak E anterior wall{{pmid|24659482}}
    |
    |
    |
    |-
    | Ratio of peak velocity of early filling to atrial filling{{pmid|19940465}}
    |
    |
    |
    |-
    | rowspan="4" | Respiratory system
    | VO2 max{{pmid|22433233}}{{pmid|18597867}}
    |
    |
    |
    |-
    | Forced expiratory volume in 1 second{{pmid|22433233}}{{pmid|17921421}}{{pmid|18597867}}{{pmid|12672981}}{{pmid|18840798}}
    | Forced expiratory volume in 1 second{{pmid|23213031}}{{pmid|6967883}}{{pmid|28110151}}
    | Forced expiratory volume in 1 second{{pmid|2583248}}
    | Forced expiratory volume in 1 second{{pmid|28110151}}
    |-
    | Forced vital capacity{{pmid|2737197}}{{pmid|2282902}}{{pmid|8803500}}
    | Forced vital capacity{{pmid|20005245}}
    | Forced vital capacity{{pmid|2583248}}
    |
    |-
    | Maximal mid expiratory flow rate 75/25{{pmid|24522464}}
    | Vital capacity{{pmid|5841151}}
    |
    |
    |-
    | rowspan="9" | Nervous system
    | Trail making test{{pmid|24522464}}{{pmid|29188884}}
    |
    |
    |
    |-
    | Digital symbol test{{pmid|20005245}}{{pmid|24659482}}
    | Digital symbol test{{pmid|20005245}}
    |
    |
    |-
    | Memory test linking names with faces{{pmid|20005245}}
    | Memory test linking names with faces{{pmid|20005245}}
    |
    |
    |-
    | Memory test: which picture is at what place{{pmid|20005245}}
    | Memory test: which picture is at what place{{pmid|20005245}}
    |
    |
    |-
    | Speed test: pointing icons from 1 to 15 sequentially, mixed in random positions{{pmid|20005245}}
    |
    |
    |
    |-
    | Visual reaction time{{pmid|20005245}}{{pmid|22433233}}
    |
    | Visual reaction time{{pmid|2583248}}
    |
    |-
    |
    |
    | Sequence of lamps{{pmid|2583248}}
    |
    |-
    |
    |
    | Alternate button tapping time with/without decision{{pmid|2583248}}
    |
    |-
    |
    |
    | Movement time with/without decision{{pmid|2583248}}
    |
    |-
    | rowspan="3" | Renal system
    | Blood urea nitrogen{{pmid|2737197}}{{pmid|2282902}}{{pmid|17921421}}{{pmid|18597867}}{{pmid|29380856}}{{pmid|18840798}}{{pmid|8803500}}
    | Blood urea nitrogen{{pmid|23213031}}{{pmid|6967883}}{{pmid|28110151}}
    |
    | Blood urea nitrogen{{pmid|28110151}}
    |-
    |
    | Serum creatinine{{pmid|28110151}}
    |
    | Serum creatinine{{pmid|28110151}}
    |-
    | Cystatin C{{pmid|19940465}}{{pmid|24522464}}{{pmid|24659482}}{{pmid|29188884}}
    |
    |
    |
    |-
    | rowspan="7" | Liver
    | Serum albumin{{pmid|17921421}}{{pmid|18597867}}{{pmid|29380856}}{{pmid|18840798}}
    | Serum albumin{{pmid|950448}}
    |
    |
    |-
    | Glutamic oxaloacetic transaminase{{pmid|2737197}}{{pmid|2282902}}
    | Glutamic oxaloacetic transaminase{{pmid|28110151}}
    |
    | Glutamic oxaloacetic transaminase{{pmid|28110151}}
    |-
    | Glutamic pyruvic transaminase{{pmid|8803500}}
    |
    |
    |
    |-
    | Ratio of albumin to globulin{{pmid|12672981}}
    |
    |
    |
    |-
    | Lactate dehydrogenase{{pmid|2737197}}{{pmid|2282902}}{{pmid|8803500}}
    |
    |
    |
    |-
    |
    | Serum globulin{{pmid|950448}}
    |
    |
    |-
    |
    | Alkaline phosphatase{{pmid|950448}}
    |
    |
    |-
    | rowspan="7" | Hematologic system
    | Erythrocyte sedimentation rate{{pmid|18597867}}
    | Erythrocyte sedimentation rate{{pmid|950448}}
    |
    |
    |-
    | Mean corpuscular hemoglobin{{pmid|12672981}}
    |
    |
    |
    |-
    | Red blood cell count{{pmid|18840798}}
    |
    |
    |
    |-
    | Hematocrit{{pmid|17921421}}
    |
    |
    |
    |-
    | Hemoglobin concentration{{pmid|2737197}}{{pmid|2282902}}
    |
    |
    |
    |-
    | Fibrinogen{{pmid|19940465}}
    |
    |
    |
    |-
    |
    | Ferratin{{pmid|28110151}}
    |
    | Ferratin{{pmid|28110151}}
    |-
    | rowspan="6" | Metabolism
    | Glycosylated hemoglobin{{pmid|18597867}}
    |
    |
    |
    |-
    | Glucose{{pmid|12672981}}{{pmid|8803500}}
    | Glucose{{pmid|950448}}
    |
    |
    |-
    | Low-density cholesterol{{pmid|18597867}}
    |
    |
    |
    |-
    | Atherogenic index{{pmid|2737197}}{{pmid|2282902}}
    |
    |
    |
    |-
    | Triglyceride{{pmid|2282902}}
    | Triglycerides{{pmid|6967883}}
    |
    |
    |-
    | Total cholesterol{{pmid|8803500}}
    | Total cholesterol{{pmid|23213031}}{{pmid|6967883}}{{pmid|5841151}}{{pmid|28110151}}
    |
    | Total cholesterol{{pmid|28110151}}
    |-
    | rowspan="4" | Muscle and fat
    | Grip strength{{pmid|20005245}}{{pmid|22433233}}
    | Grip strength{{pmid|20005245}}{{pmid|5841151}}
    |
    |
    |-
    | Soft lean mass{{pmid|22433233}}
    |
    |
    |
    |-
    | Waist circumference{{pmid|22433233}}{{pmid|18597867}}
    | Waist circumference{{pmid|28110151}}
    |
    | Waist circumference{{pmid|28110151}}
    |-
    | Percent body fat{{pmid|18597867}}
    |
    |
    |
    |-
    | rowspan="8" | Sensory system
    | Hearing threshold{{pmid|18597867}}
    |
    |
    |
    |-
    | Highest audible pitch{{pmid|20005245}}
    | Highest audible pitch{{pmid|20005245}}
    | Highest audible pitch{{pmid|2583248}}
    |
    |-
    |
    | Light extinction test{{pmid|5841151}}
    |
    |
    |-
    |
    | Visual acuity{{pmid|5841151}}
    |
    |
    |-
    |
    | Auditory function{{pmid|5841151}}
    |
    |
    |-
    |
    | Vibrotactile sensitivity{{pmid|5841151}}
    | Vibrotactile sensitivity{{pmid|2583248}}
    |
    |-
    |
    | Auditory reaction time{{pmid|20005245}}
    | Auditory reaction time{{pmid|2583248}}
    |
    |-
    |
    | Focal range test using a Landolt ring{{pmid|20005245}}
    | Visual accommodation{{pmid|2583248}}
    |
    |-
    | Genetic index
    | Telomere restriction fragment{{pmid|24659482}}
    |
    |
    |
    |}
     
    == Biomarkers 2 ==
    The common aging biomarkers of four methods in different systems.
    {| class="wikitable sortable"
    ! System
    !
    ! MLR
    ! PCA
    ! KDM
    ! Deep learning
    |-
    | Cardiovascular system
    |Systolic Blood Pressure (SBP)
    | 23213031  5841151  3226152  950448  6667707  17889950  23642770  28110151  30899733
    | 23213031  3226152  2737197  2282902  8803500  12634284  12672981  17921421  18840798  18597867  22433233  28110151  30899733
    | 23213031  26150497  28110151  28958059  28977464  30999227  30899733  31566204  32946548  34038024
    |
    |-
    | Cardiovascular system
    |Diastolic Blood Pressure (DBP)
    | 17889950  23642770  31179487
    | 31179487
    | 27216811 31179487
    |
    |-
    | Cardiovascular system
    |Pulse Pressure
    | 23642770
    | 29188884  24522464  19940465
    |
    |
    |-
    | Cardiovascular system
    |Mean Arterial Pressure
    |
    | 28203066
    |
    |
    |-
    | Cardiovascular system
    |Pulse
    | 3226152
    | 3226152  2737197
    |
    |
    |-
    | Cardiovascular system
    |Pulse Wave Velocity
    | 6667707
    |
    |
    |
    |-
    | Cardiovascular system
    |Heart Rate
    |
    | 2282902
    |
    |
    |-
    | Cardiovascular system
    |Intima-Media Thickness
    |
    | 24659482 19940465
    |
    |
    |-
    | Cardiovascular system
    |Minimum Intima-Media Thickness
    |
    | 29188884 24522464
    |
    |
    |-
    | Cardiovascular system
    |End Diastolic Velocity
    |
    | 19940465
    |
    |
    |-
    | Cardiovascular system
    |Mitral Valve E/A Peak
    |
    | 29188884 19940465
    |
    |
    |-
    | Cardiovascular system
    |MVEL, MVES, MVEA
    |
    | MVEL 19940465 , MVES 24522464 , MVEA 24659482
    |
    |
    |-
    | Cardiovascular system
    |Atherosclerosis Index
    |
    | 2737197  2282902
    |
    |
    |-
    | Cardiovascular system
    |NT-proBNP
    |
    |
    |
    | 34453631
    |-
    | Cardiovascular system
    |Cardiac Troponin I
    |
    |
    |
    | 34453631
    |-
    | Cardiovascular system
    |Creatine Phosphokinase
    | 23642770
    |
    |
    |
    |-
    | Cardiovascular system
    |Homocysteine
    | 23642770
    |
    |
    |
    |-
    | Respiratory system
    |Forced Vital Capacity (FVC)
    | 3226152  17889950  23642770  20005245
    | 3226152  2737197  2282902  8803500  12634284
    | 20005245
    |
    |-
    |Respiratory system
    |Forced Expiratory Volume in 1 Second (FEV1)
    | 23213031  950448  7162237  17889950  23642770  28110151  30899733  31179487
    | 23213031  12634284  12672981  17921421  18840798  18597867  22433233  28110151  30899733  31179487
    | 23213031  26150497  28110151  28958059  28977464  30899733  31179487
    |
    |-
    |Respiratory system
    |Vital Capacity
    | 5841151  6667707
    |
    |
    |
    |-
    |Respiratory system
    |Maximal Midexpiratory Flow Rate 75/25
    |
    | 24522464
    |
    |
    |-
    |Respiratory system
    |VO2 Max
    |
    | 18597867  22433233
    |
    |
    |-
    |Respiratory system
    |Chest Radiography
    |
    |
    |
    | 33744131
    |-
    | Nervous system
    |Mini-Mental State Examination (MMSE)
    | 31179487
    | 31179487
    | 31179487
    |
    |-
    | Nervous system
    |Digital Symbol Test
    | 6667707
    | 24659482
    |
    |
    |-
    | Nervous system
    |Numeric Memory
    | 20005245
    |
    | 20005245
    |
    |-
    | Nervous system
    |Associated Memory
    | 20005245
    |
    | 20005245
    |
    |-
    | Nervous system
    |Topological Memory
    | 20005245
    |
    | 20005245
    |
    |-
    | Nervous system
    |Short-Time Memory
    | 6610563
    |
    |
    |
    |-
    | Nervous system
    |Concentration
    | 20005245
    |
    | 20005245
    |
    |-
    | Nervous system
    |Intellectuality - Mental Defect
    | 6667707
    |
    |
    |
    |-
    | Nervous system
    |Trail Making Test
    |
    | 29188884  24522464
    |
    |
    |-
    | Endocrine metabolic system
    |Glucose
    | 17889950  23642770
    | 8803500  12672981  28203066
    | 28977464
    | 27191382  29340580  30644411  34453631
    |-
    | Endocrine metabolic system
    |HBA1C
    | 23213031  23642770
    | 23213031  18597867
    | 23213031  26150497  28958059  30999227  31566204  32946548  31693736  34038024
    | 30644411
    |-
    | Endocrine metabolic system
    |C-peptide
    |
    |
    |
    | 34453631
    |-
    | Endocrine metabolic system
    |Insulin
    |
    |
    |
    | 34453631
    |-
    | Endocrine metabolic system
    |Triglyceride
    | 950448  17889950  23642770
    | 2282902  28203066
    | 32946548
    | 29340580  34453631
    |-
    | Endocrine metabolic system
    |Total Cholesterol (TC)
    | 23213031  5841151  3226152  950448  7162237  17889950  23642770  28110151
    | 23213031  3226152  8803500  28110151
    | 23213031  26150497  28110151  28958059  28977464  31566204  32946548  34038024
    | 27191382  29340580
    |-
    | Endocrine metabolic system
    |High-Density Lipoprotein (HDL)
    | 17889950 ,
    | 28203066
    |
    | 29340580  34453631
    |-
    | Endocrine metabolic system
    |Low-Density Lipoprotein (LDL)
    |23642770
    |18597867
    |
    |29340580 34453631
    |-
    | Endocrine metabolic system
    |Apolipoprotein A1 and B
    |
    |
    |
    | 34453631
    |-
    | Endocrine metabolic system
    |Thyroid-Stimulating Hormone (TSH)
    | 17889950
    |
    | 27216811
    |
    |-
    | Endocrine metabolic system
    |Testosterone
    | 17889950
    |
    |
    | Testosterone 34453631
    |-
    | Endocrine metabolic system
    |Vitamin D
    | 30899733
    | 30899733
    | 30899733
    | 34453631
    |-
    | Endocrine metabolic system
    |Calcium
    |
    |
    | 27216811
    | 29340580
    |-
    | Endocrine metabolic system
    |Potassium
    |
    |
    |
    | 29340580
    |-
    | Endocrine metabolic system
    |Sodium
    |
    |
    |
    | 29340580
    |-
    | Endocrine metabolic system
    |Inorganic Phosphorus
    |
    |
    | 27216811
    |
    |-
    | Endocrine metabolic system
    |Urea
    | 23213031  3226152  950448  23642770  28110151
    | 23213031  3226152  2737197  2282902  8803500  12634284  17921421  18840798  18597867  28110151
    | 23213031  26150497  27216811  28110151  30999227  31566204  32946548  31693736
    | 27191382  29340580  30644411
    |-
    | Endocrine metabolic system
    |Creatinine
    | 23213031  17889950  23642770  28110151  30899733
    | 28110151  30899733
    | 23213031  26150497  27216811  28958059  30999227  31566204  32946548  31693736  34038024
    | 29340580  34453631
    |-
    | Endocrine metabolic system
    |Estimated Glomerular Filtration Rate (eGFR)
    | 31179487
    | 31179487
    | 31179487
    |
    |-
    | Endocrine metabolic system
    |Uric Acid
    |
    |
    | 30999227  31693736
    | 34453631
    |-
    | Endocrine metabolic system
    |Cystatin C
    |
    | 29188884  24659482  24522464  19940465
    |
    | 34453631
    |-
    | Endocrine metabolic system
    |Creatinine Clearance
    | 23642770
    |
    |
    |
    |-
    | Endocrine metabolic system
    |Urine Specific Gravity
    | 23642770
    |
    |
    |
    |-
    | Endocrine metabolic system
    |Urine pH
    | 23642770
    |
    |
    |
    |-
    | Digestive system
    |Alanine Aminotransferase (ALT)
    | 23642770
    | 8803500
    |
    | 34453631
    |-
    | Digestive system
    |Aspartate Aminotransferase (AST)
    | 3226152  23642770  28110151
    | 3226152  2737197  2282902  28110151
    | 28110151
    | 34453631
    |-
    | Digestive system
    |Alkaline Phosphatase (ALP)
    | 23213031  950448  23642770
    | 23213031
    | ALP 23213031  26150497  27216811  28958059  30999227  31693736  34038024
    | ALP 27191382
    |-
    | Digestive system
    |Total Protein
    | Total protein 23642770
    |
    | Total protein 27216811
    | Total protein 29340580
    |-
    | Digestive system
    |Albumin
    | Albumin 23213031  3226152  23642770
    | Albumin 23213031  3226152  12634284  17921421  18840798  18597867
    | Albumin 23213031  26150497  27216811  28958059  30999227  31566204  32946548  31693736  34038024
    | Albumin 27191382  29340580  34453631
    |-
    | Digestive system
    |Albumin/Globulin Ratio (A/G)
    | A/G 3226152  23642770
    | A/G 3226152  12634284  12672981
    |
    |
    |-
    | Digestive system
    |Total Bilirubin
    | Total bilirubin 23642770
    |
    |
    | Total bilirubin 29340580
    |-
    | Digestive system
    |Direct Bilirubin
    | Direct bilirubin 23642770
    |
    |
    |
    |-
    | Digestive system
    |Amylase
    | Amylase 23642770
    |
    |
    |
    |-
    | Digestive system
    |Lactate Dehydrogenase
    | Lactate dehydrogenase 7162237  23642770
    | Lactate dehydrogenase 2282902  8803500
    |
    |
    |-
    | Digestive system
    |Alpha 2 Globulin
    |
    |
    |
    | Alpha 2 globulin 27191382
    |-
    | Digestive system
    |Gamma Glutamyl Transpeptidase
    | Gamma glutamyl
    transpeptidase 23642770
    |
    |
    |
    |-
    | Hematologic System
    |Red Blood Cell
    | Red blood cell 30899733
    | Red blood cell 12634284  18840798  30899733
    | Red blood cell 30899733  32946548
    | Red blood cell 27191382  29340580  34453631
    |-
    | Hematologic System
    |Red Blood Cell Volume Distribution Width
    |
    |
    | Red blood cell volume
    distribution width 30999227
    | Red blood cell volume
    distribution width 27191382  34453631
    |-
    | Hematologic System
    |Hematocrit
    |
    | Hematocrit 12634284  17921421
    |
    | Hematocrit 27191382  29340580
    |-
    | Hematologic System
    |Mean Corpuscular Volume
    |
    |
    | Mean corpuscular
    volume 30999227  31566204  31693736
    | Mean corpuscular
    volume 29340580  34453631
    |-
    | Hematologic System
    |Mean Corpuscular Hemoglobin
    |
    | Mean corpuscular
    hemoglobin 12672981
    |
    |
    |-
    | Hematologic System
    |Mean Corpuscular Hemoglobin Concentration
    |
    |
    |
    | Mean corpuscular hemoglobin concentration 29340580  34453631
    |-
    | Hematologic System
    |Hemoglobin
    | Hemoglobin 3226152  31179487
    | Hemoglobin 3226152  2737197  2282902  8803500  12634284  31179487
    | Hemoglobin 27216811  31179487
    | Hemoglobin 29340580  34453631
    |-
    | Hematologic System
    |White Blood Cell
    |
    |
    | White blood cell 30999227  31566204  31693736
    | White blood cell 34453631
    |-
    | Hematologic System
    |Granulocytes
    |
    |
    |
    | Granulocytes 34453631
    |-
    | Hematologic System
    |Neutrophils
    |
    |
    |
    | Neutrophils 34453631
    |-
    | Hematologic System
    |Basophils, Eosinophils
    |
    |
    |
    | Basophils 34453631 , Eosinophils 34453631
    |-
    | Hematologic System
    |Lymphocytes
    |
    |
    | Lymphocytes 30999227  31566204  31693736
    | Lymphocytes 27191382  34453631
    |-
    | Hematologic System
    |Monocytes
    | Monocytes 31179487
    | Monocytes 31179487
    | Monocytes 31179487
    | Monocytes 34453631
    |-
    | Hematologic System
    |Platelet
    |
    |
    | Platelet 32946548
    | Platelet 29340580  34453631
    |-
    | Hematologic System
    |Mean Platelet Volume
    |
    |
    |
    | Mean platelet volume 34453631
    |-
    | Hematologic System
    |Platelet Distribution Width
    |
    |
    |
    | Platelet distribution width 34453631
    |-
    | Hematologic System
    |Erythrocyte Sedimentation Rate
    | 950448  17889950
    | 18597867
    |
    |
    |-
    | Hematologic System
    |D-dimer, Fibrinogen
    |
    | D-dimer 24659482
    Fibrinogen 19940465
    |
    | D-dimer 34453631
    |-
    | Hematologic System
    |Ferritin
    | Ferritin 28110151
    | Ferritin 28110151
    | Ferritin 28110151  32946548
    | Ferritin 30644411
    |-
    | Hematologic System
    |Transferrin
    |
    |
    | Fransferrin 32946548
    |
    |-
    | Sensory system
    |Visual Accommodation
    | Visual accommodation 6667707  20005245
    |
    | Visual accommodation 20005245
    |
    |-
    | Sensory system
    |Visual Reaction Time
    | Visual reaction time 20005245
    |
    | Visual reaction time 20005245
    |
    |-
    | Sensory system
    |Visual Acuity
    | Visual acuity 5841151  3226152
    | Visual acuity 3226152
    |
    |
    |-
    | Sensory system
    |Hearing
    | Hearing 5841151  7162237  6667707  20005245
    | Hearing 18597867
    | Hearing 20005245
    |
    |-
    | Sensory system
    |Vibrotactile
    | Vibrotactile 5841151  6610563  20005245
    |
    | Vibrotactile 20005245
    |
    |-
    | Sensory system
    |Retinal Photos
    |
    |
    |
    | Retinal photos
    |-
    | Inflammatory index
    |C-Reactive Protein (CRP)
    | CRP 23213031
    | CRP 23213031
    | CRP 23213031  26150497  28958059  28977464  30999227  31566204  32946548  31693736  34038024
    | CRP 34453631
    |-
    | Inflammatory index
    |Cytomegalovirus Optical Density
    | Cytomegalovirus optical density 23213031
    | Cytomegalovirus
    optical density 23213031
    | Cytomegalovirus
    optical density 23213031  26150497  31566204
    |
    |-
    | Inflammatory index
    |Interleukin-6
    | colspan="1" rowspan="2" |
    | colspan="1" rowspan="2" |
    | Interleukin-6 28977464
    | colspan="1" rowspan="2" |
    |-
    | Inflammatory index
    |P-selectin
    | P-selectin 28977464
    |-
    | Motion index
    |Grip Strength
    | Grip strength 5841151  6610563  31179487  20005245
    | Grip strength 22433233  31179487
    | Grip strength 31179487  20005245
    |
    |-
    | Motion index
    |Vertical Jump
    |
    | Vertical jump 22433233
    |
    |
    |-
    | Motion index
    |Timed Up and Go Test
    | Timed up and go test 31179487
    | Timed up and go test 31179487
    | Timed up and go test 31179487
    |
    |-
    | Motion index
    |Chair Rise Time
    | Chair rise time 31179487
    | Chair rise time 31179487
    | Chair rise time 31179487
    |
    |-
    | Motion index
    |1-Week Physical Activity
    |
    |
    |
    | 1-week physical activity 29581467  31388024
    |-
    | Body morphology index
    |Waist Circumference (WC)
    | WC 23642770  28110151
    | WC 18597867  22433233  28110151  28203066
    | WC 28110151
    |
    |-
    | Body morphology index
    |Waist-to-Hip Ratio
    | Waist-to-hip ratio 17889950  23642770
    |
    |
    |
    |-
    | Body morphology index
    |Waist-to-Height Ratio
    | Waist-to-height ratio 30899733
    | Waist-to-height ratio 30899733
    | Waist-to-height ratio 30899733
    |
    |-
    | Body morphology index
    |Body Mass Index (BMI)
    | Body mass index 17889950  23642770
    |
    |
    |
    |-
    | Body morphology index
    |Weight
    | Weight 6667707
    |
    |
    |
    |-
    | Body morphology index
    |Height
    | Height 31179487
    | Height 31179487
    | Height 31179487
    |
    |-
    | Body morphology index
    |Body Fat
    | Body fat 17889950  23642770
    | Body fat 18597867
    |
    |
    |-
    | Body morphology index
    |Lean Body Mass
    | Lean body mass 17889950  23642770
    |
    |
    |
    |-
    | Body morphology index
    |Soft Lean Mass
    |
    | Soft lean mass 22433233
    |
    |
    |-
    | Genetic index
    |Terminal Telomere Restriction Fragment
    |
    | Terminal telomere restriction
    fragment 24659482
    |
    |
    |}
    SBP, systolic blood pressure; DBP, diastolic blood pressure; NT-proBNP, N-terminal pro brain natriuretic peptide; MVEA, mitral annulus peak E anterior wall; MVEL, mitral valve annulus lateral wall of peak velocity of early filling; MVES, mitral valve annulus ventricular septum of the peak velocity of early filling; FEV1, forced expiratory volume in 1.0 s; FVC, forced vital capacity; MMSE, mini-mental state examination; eGFR, estimated glomerular filtration rat; HBA1C, glycosylated hemoglobin; HDL, high density lipoprotein; LDL, low density lipoprotein; TSH, thyroid stimulating hormone; ALT, Alanine aminotransferase; AST, Aspartate aminotransferase; ALP, alkaline ''phosphatase; A/G, ratio of albumin to globulin; CRP, c-reactive protein; WC, waist circumference''.


    == Further Reading ==
    == Further Reading ==


    * {{pmid text|28546743}}
    * {{pmid text|28546743}}
    * {{pmid text|37124811}}
    == Todo ==
    * {{pmid text|28396265}}
    * {{pmid text|36499430}}
    * {{pmid text|34595331}}
    * {{pmid text|37884697}}
    * {{pmid text|32363395}}


    == See Also ==
    == See Also ==

    Latest revision as of 01:55, 6 February 2024

    Biological Age (BA) is a concept used to assess an individual's aging status, offering a more nuanced understanding than Chronological Age (CA). Chronological age refers simply to the amount of time that has elapsed since a person's birth, while biological age provides a measure of aging based on various physiological, biochemical, and molecular factors. This distinction is crucial because individuals of the same chronological age can exhibit significantly different aging processes and health statuses.

    Key Aspects of Biological Age

    Biological age is estimated as the equivalent age within the same-sex population which corresponds to an individual's mortality risk.

    1. Biomarkers: Biological age is typically determined by analyzing a range of biomarkers. These can include genetic markers, epigenetic alterations, cellular senescence, telomere length, metabolic markers, and more. The specific biomarkers chosen depend on the method of estimation and the focus of the study.
    2. Health and Functionality: Biological age reflects the functional state of an individual's organs and systems. A lower biological age compared to chronological age might indicate better health and lower risk for age-related diseases, whereas a higher biological age suggests accelerated aging and potentially increased health risks.
    3. Variability: Unlike chronological age, which is uniform and progresses at a constant rate (one year per year), biological age can vary significantly between individuals. Factors such as lifestyle, genetics, environment, and disease can influence the rate at which a person's biological systems age. For example, biological age estimated from blood markers ranged between 20-years younger and 20-years older than individuals' chronological age.[1]

    Importance in Research and Medicine

    1. Research Tool: In scientific research, biological age is valuable for understanding the aging process, identifying aging biomarkers, and evaluating the effectiveness of anti-aging interventions.
    2. Clinical Applications: In a clinical setting, biological age can be used to assess an individual's overall health status, predict the risk of age-related diseases, and personalize healthcare and treatment plans.

    Biological Age Estimation Methods

    Biological age estimation has emerged as a significant tool in gerontology, aiming to provide a more accurate measure of aging than chronological age.

    The accurate estimation of biological age has significant implications for clinical practice, including predicting disease onset and prognosis, improving the quality of life for the elderly, and promoting successful aging. Each method offers unique insights, and a comprehensive understanding of these methods can lead to better clinical decision-making and more effective interventions for aging-related conditions.

    Various methods have been developed to estimate biological age, each with its unique approach and criteria:[2]

    • Multiple Linear Regression (MLR) is a statistical technique that estimates biological age by relating several independent variables (biomarkers) to a dependent variable (chronological age). In this method, chronological age is used as a criterion for selecting biomarkers and is treated as an independent index.
    • Principal Component Analysis (PCA) is another statistical technique used in biological age estimation. PCA reduces the dimensionality of the data by transforming multiple biomarkers into a set of linearly uncorrelated variables, known as principal components.
    • Hochschild’s Method differs from MLR and PCA by making chronological age an independent variable. It aims to estimate biological age by adjusting chronological age based on specific biomarkers.
    • Klemera and Doubal’s Method (KDM) shares a similar concept with Hochschild’s method but uses a more complex statistical approach. It treats chronological age as an independent variable and incorporates multiple biomarkers to estimate biological age.
    • Deep Learning-based approaches represent an emerging and powerful method for biological age estimation. Leveraging complex neural network architectures, these methods can analyze large datasets of biomarkers, integrating diverse types of biological data. Deep learning models can uncover intricate patterns in the data that may be missed by traditional statistical techniques, offering potentially more accurate and personalized biological age estimations. However, they require large, well-curated datasets to be effective.

    Role of Chronological Age

    The role of chronological age in the estimation of biological age varies significantly between different methods. In MLR and PCA, chronological age is used as a criterion for selecting biomarkers. This means that the biomarkers are chosen based on how well they correlate with chronological age. In this context, chronological age is not an independent variable in the statistical model but rather a reference point against which the predictive power of biomarkers is measured.

    In contrast, Hochschild’s method and KDM treat chronological age as an independent variable. This means chronological age is directly incorporated into the model as one of the variables that predict biological age.

    Comparison

    Comparisons of various biological age estimation methods

    Method Proposed Core concept Advantage Disadvantage
    MLR 1965, Hollingsworth[3] Aging biomarkers are determined by the correlation with chronological age using MLR model
    • MLR is the preliminary method and is easy to operate
    • The standards of aging biomarkers lead to the paradox of chronological age
    • MLR also distorts the biological age at the regression edge and ignores discontinuity in the aging rate[4][5][6]
    PCA 1988, Nakamura[7] PCA uses fewer uncorrelated variables to explain the main variance
    • Biomarkers are uncorrelated variables[8]
    • PCA avoids the influence of regression edge in MLR[5]
    • PCA cannot avoid the paradox of chronological age and some statistical deficiencies of MLR[8]
    Hochschild’s method 1989, Hochschild[9] Hochschild’s method aims to select aging biomarkers according to their effects on life expectancy[9]
    • Hochschild’s method solves the paradox of chronological age
    • Hochschild’s method avoids statistical problems of MLR
    • Hochschild’s method is nonstandard and relatively complicated
    • Hochschild’s method is not based on the definition of biological age
    • A large number of subjects are required when this approach is adopted for another system[10]
    KDM 2006, Klemera and Doubal[8] KDM is based on minimizing the distance between m regression lines and m biomarker points in an m-dimensional space of all biomarkers[8]
    • KDM performed better than chronological age[11]
    • KDM is precise when compared with other methods[11][10][12]
    • KDM solves the paradox of chronological age[11][10]
    • The calculation of KDM is complicated[10]
    Deep learning 2015[13] Deep learning is a subfield of machine learning, where good features can be learned automatically using a general-purpose learning procedure[13]. Deep neural networks (DNNs)[14][15][16][17], convolutional neural networks (CNNs)[18][19], and recurrent neural networks (RNNs)[20] have been employed to build BA models in recent years.
    • Good at handling high-dimensional dataset[13]
    • The machine extracts features autonomously by learning[13]
    • Difficulty in building large data[14]
    • The existence of a “black box” and uncontrollable results
    • Excellent programming skills and computer hardware and software support required

    Biomarkers for Biological Age Estimation

    Organ system PCA MLR Hochschild’s KDM
    Cardiovascular system Pulse pressure[21][22][23]
    Systolic blood pressure[7][24][25][26][27][28][29][12] Systolic blood pressure[11][30][3][6][12] Systolic blood pressure[12]
    Heart rate[7][24]
    Intima-media thickness[21][31][22]
    Maximum internal diameter of carotid artery[31][22]
    End diastolic velocity[21]
    Mitral valve annulus ventricular septum of the peak velocity of early filling[31]
    Mitral valve annulus lateral wall of peak velocity of early filling[21]
    Mitral annulus peak E anterior wall[22]
    Ratio of peak velocity of early filling to atrial filling[21]
    Respiratory system VO2 max[32][26]
    Forced expiratory volume in 1 second[32][25][26][27][28] Forced expiratory volume in 1 second[11][30][12] Forced expiratory volume in 1 second[33] Forced expiratory volume in 1 second[12]
    Forced vital capacity[7][24][29] Forced vital capacity[10] Forced vital capacity[33]
    Maximal mid expiratory flow rate 75/25[31] Vital capacity[3]
    Nervous system Trail making test[31][23]
    Digital symbol test[10][22] Digital symbol test[10]
    Memory test linking names with faces[10] Memory test linking names with faces[10]
    Memory test: which picture is at what place[10] Memory test: which picture is at what place[10]
    Speed test: pointing icons from 1 to 15 sequentially, mixed in random positions[10]
    Visual reaction time[10][32] Visual reaction time[33]
    Sequence of lamps[33]
    Alternate button tapping time with/without decision[33]
    Movement time with/without decision[33]
    Renal system Blood urea nitrogen[7][24][25][26][34][28][29] Blood urea nitrogen[11][30][12] Blood urea nitrogen[12]
    Serum creatinine[12] Serum creatinine[12]
    Cystatin C[21][31][22][23]
    Liver Serum albumin[25][26][34][28] Serum albumin[6]
    Glutamic oxaloacetic transaminase[7][24] Glutamic oxaloacetic transaminase[12] Glutamic oxaloacetic transaminase[12]
    Glutamic pyruvic transaminase[29]
    Ratio of albumin to globulin[27]
    Lactate dehydrogenase[7][24][29]
    Serum globulin[6]
    Alkaline phosphatase[6]
    Hematologic system Erythrocyte sedimentation rate[26] Erythrocyte sedimentation rate[6]
    Mean corpuscular hemoglobin[27]
    Red blood cell count[28]
    Hematocrit[25]
    Hemoglobin concentration[7][24]
    Fibrinogen[21]
    Ferratin[12] Ferratin[12]
    Metabolism Glycosylated hemoglobin[26]
    Glucose[27][29] Glucose[6]
    Low-density cholesterol[26]
    Atherogenic index[7][24]
    Triglyceride[24] Triglycerides[30]
    Total cholesterol[29] Total cholesterol[11][30][3][12] Total cholesterol[12]
    Muscle and fat Grip strength[10][32] Grip strength[10][3]
    Soft lean mass[32]
    Waist circumference[32][26] Waist circumference[12] Waist circumference[12]
    Percent body fat[26]
    Sensory system Hearing threshold[26]
    Highest audible pitch[10] Highest audible pitch[10] Highest audible pitch[33]
    Light extinction test[3]
    Visual acuity[3]
    Auditory function[3]
    Vibrotactile sensitivity[3] Vibrotactile sensitivity[33]
    Auditory reaction time[10] Auditory reaction time[33]
    Focal range test using a Landolt ring[10] Visual accommodation[33]
    Genetic index Telomere restriction fragment[22]

    Biomarkers 2

    The common aging biomarkers of four methods in different systems.

    System MLR PCA KDM Deep learning
    Cardiovascular system Systolic Blood Pressure (SBP) 23213031 5841151 3226152 950448 6667707 17889950 23642770 28110151 30899733 23213031 3226152 2737197 2282902 8803500 12634284 12672981 17921421 18840798 18597867 22433233 28110151 30899733 23213031 26150497 28110151 28958059 28977464 30999227 30899733 31566204 32946548 34038024
    Cardiovascular system Diastolic Blood Pressure (DBP) 17889950 23642770 31179487 31179487 27216811 31179487
    Cardiovascular system Pulse Pressure 23642770 29188884 24522464 19940465
    Cardiovascular system Mean Arterial Pressure 28203066
    Cardiovascular system Pulse 3226152 3226152 2737197
    Cardiovascular system Pulse Wave Velocity 6667707
    Cardiovascular system Heart Rate 2282902
    Cardiovascular system Intima-Media Thickness 24659482 19940465
    Cardiovascular system Minimum Intima-Media Thickness 29188884 24522464
    Cardiovascular system End Diastolic Velocity 19940465
    Cardiovascular system Mitral Valve E/A Peak 29188884 19940465
    Cardiovascular system MVEL, MVES, MVEA MVEL 19940465 , MVES 24522464 , MVEA 24659482
    Cardiovascular system Atherosclerosis Index 2737197 2282902
    Cardiovascular system NT-proBNP 34453631
    Cardiovascular system Cardiac Troponin I 34453631
    Cardiovascular system Creatine Phosphokinase 23642770
    Cardiovascular system Homocysteine 23642770
    Respiratory system Forced Vital Capacity (FVC) 3226152 17889950 23642770 20005245 3226152 2737197 2282902 8803500 12634284 20005245
    Respiratory system Forced Expiratory Volume in 1 Second (FEV1) 23213031 950448 7162237 17889950 23642770 28110151 30899733 31179487 23213031 12634284 12672981 17921421 18840798 18597867 22433233 28110151 30899733 31179487 23213031 26150497 28110151 28958059 28977464 30899733 31179487
    Respiratory system Vital Capacity 5841151 6667707
    Respiratory system Maximal Midexpiratory Flow Rate 75/25 24522464
    Respiratory system VO2 Max 18597867 22433233
    Respiratory system Chest Radiography 33744131
    Nervous system Mini-Mental State Examination (MMSE) 31179487 31179487 31179487
    Nervous system Digital Symbol Test 6667707 24659482
    Nervous system Numeric Memory 20005245 20005245
    Nervous system Associated Memory 20005245 20005245
    Nervous system Topological Memory 20005245 20005245
    Nervous system Short-Time Memory 6610563
    Nervous system Concentration 20005245 20005245
    Nervous system Intellectuality - Mental Defect 6667707
    Nervous system Trail Making Test 29188884 24522464
    Endocrine metabolic system Glucose 17889950 23642770 8803500 12672981 28203066 28977464 27191382 29340580 30644411 34453631
    Endocrine metabolic system HBA1C 23213031 23642770 23213031 18597867 23213031 26150497 28958059 30999227 31566204 32946548 31693736 34038024 30644411
    Endocrine metabolic system C-peptide 34453631
    Endocrine metabolic system Insulin 34453631
    Endocrine metabolic system Triglyceride 950448 17889950 23642770 2282902 28203066 32946548 29340580 34453631
    Endocrine metabolic system Total Cholesterol (TC) 23213031 5841151 3226152 950448 7162237 17889950 23642770 28110151 23213031 3226152 8803500 28110151 23213031 26150497 28110151 28958059 28977464 31566204 32946548 34038024 27191382 29340580
    Endocrine metabolic system High-Density Lipoprotein (HDL) 17889950 , 28203066 29340580 34453631
    Endocrine metabolic system Low-Density Lipoprotein (LDL) 23642770 18597867 29340580 34453631
    Endocrine metabolic system Apolipoprotein A1 and B 34453631
    Endocrine metabolic system Thyroid-Stimulating Hormone (TSH) 17889950 27216811
    Endocrine metabolic system Testosterone 17889950 Testosterone 34453631
    Endocrine metabolic system Vitamin D 30899733 30899733 30899733 34453631
    Endocrine metabolic system Calcium 27216811 29340580
    Endocrine metabolic system Potassium 29340580
    Endocrine metabolic system Sodium 29340580
    Endocrine metabolic system Inorganic Phosphorus 27216811
    Endocrine metabolic system Urea 23213031 3226152 950448 23642770 28110151 23213031 3226152 2737197 2282902 8803500 12634284 17921421 18840798 18597867 28110151 23213031 26150497 27216811 28110151 30999227 31566204 32946548 31693736 27191382 29340580 30644411
    Endocrine metabolic system Creatinine 23213031 17889950 23642770 28110151 30899733 28110151 30899733 23213031 26150497 27216811 28958059 30999227 31566204 32946548 31693736 34038024 29340580 34453631
    Endocrine metabolic system Estimated Glomerular Filtration Rate (eGFR) 31179487 31179487 31179487
    Endocrine metabolic system Uric Acid 30999227 31693736 34453631
    Endocrine metabolic system Cystatin C 29188884 24659482 24522464 19940465 34453631
    Endocrine metabolic system Creatinine Clearance 23642770
    Endocrine metabolic system Urine Specific Gravity 23642770
    Endocrine metabolic system Urine pH 23642770
    Digestive system Alanine Aminotransferase (ALT) 23642770 8803500 34453631
    Digestive system Aspartate Aminotransferase (AST) 3226152 23642770 28110151 3226152 2737197 2282902 28110151 28110151 34453631
    Digestive system Alkaline Phosphatase (ALP) 23213031 950448 23642770 23213031 ALP 23213031 26150497 27216811 28958059 30999227 31693736 34038024 ALP 27191382
    Digestive system Total Protein Total protein 23642770 Total protein 27216811 Total protein 29340580
    Digestive system Albumin Albumin 23213031 3226152 23642770 Albumin 23213031 3226152 12634284 17921421 18840798 18597867 Albumin 23213031 26150497 27216811 28958059 30999227 31566204 32946548 31693736 34038024 Albumin 27191382 29340580 34453631
    Digestive system Albumin/Globulin Ratio (A/G) A/G 3226152 23642770 A/G 3226152 12634284 12672981
    Digestive system Total Bilirubin Total bilirubin 23642770 Total bilirubin 29340580
    Digestive system Direct Bilirubin Direct bilirubin 23642770
    Digestive system Amylase Amylase 23642770
    Digestive system Lactate Dehydrogenase Lactate dehydrogenase 7162237 23642770 Lactate dehydrogenase 2282902 8803500
    Digestive system Alpha 2 Globulin Alpha 2 globulin 27191382
    Digestive system Gamma Glutamyl Transpeptidase Gamma glutamyl

    transpeptidase 23642770

    Hematologic System Red Blood Cell Red blood cell 30899733 Red blood cell 12634284 18840798 30899733 Red blood cell 30899733 32946548 Red blood cell 27191382 29340580 34453631
    Hematologic System Red Blood Cell Volume Distribution Width Red blood cell volume

    distribution width 30999227

    Red blood cell volume

    distribution width 27191382 34453631

    Hematologic System Hematocrit Hematocrit 12634284 17921421 Hematocrit 27191382 29340580
    Hematologic System Mean Corpuscular Volume Mean corpuscular

    volume 30999227 31566204 31693736

    Mean corpuscular

    volume 29340580 34453631

    Hematologic System Mean Corpuscular Hemoglobin Mean corpuscular

    hemoglobin 12672981

    Hematologic System Mean Corpuscular Hemoglobin Concentration Mean corpuscular hemoglobin concentration 29340580 34453631
    Hematologic System Hemoglobin Hemoglobin 3226152 31179487 Hemoglobin 3226152 2737197 2282902 8803500 12634284 31179487 Hemoglobin 27216811 31179487 Hemoglobin 29340580 34453631
    Hematologic System White Blood Cell White blood cell 30999227 31566204 31693736 White blood cell 34453631
    Hematologic System Granulocytes Granulocytes 34453631
    Hematologic System Neutrophils Neutrophils 34453631
    Hematologic System Basophils, Eosinophils Basophils 34453631 , Eosinophils 34453631
    Hematologic System Lymphocytes Lymphocytes 30999227 31566204 31693736 Lymphocytes 27191382 34453631
    Hematologic System Monocytes Monocytes 31179487 Monocytes 31179487 Monocytes 31179487 Monocytes 34453631
    Hematologic System Platelet Platelet 32946548 Platelet 29340580 34453631
    Hematologic System Mean Platelet Volume Mean platelet volume 34453631
    Hematologic System Platelet Distribution Width Platelet distribution width 34453631
    Hematologic System Erythrocyte Sedimentation Rate 950448 17889950 18597867
    Hematologic System D-dimer, Fibrinogen D-dimer 24659482

    Fibrinogen 19940465

    D-dimer 34453631
    Hematologic System Ferritin Ferritin 28110151 Ferritin 28110151 Ferritin 28110151 32946548 Ferritin 30644411
    Hematologic System Transferrin Fransferrin 32946548
    Sensory system Visual Accommodation Visual accommodation 6667707 20005245 Visual accommodation 20005245
    Sensory system Visual Reaction Time Visual reaction time 20005245 Visual reaction time 20005245
    Sensory system Visual Acuity Visual acuity 5841151 3226152 Visual acuity 3226152
    Sensory system Hearing Hearing 5841151 7162237 6667707 20005245 Hearing 18597867 Hearing 20005245
    Sensory system Vibrotactile Vibrotactile 5841151 6610563 20005245 Vibrotactile 20005245
    Sensory system Retinal Photos Retinal photos
    Inflammatory index C-Reactive Protein (CRP) CRP 23213031 CRP 23213031 CRP 23213031 26150497 28958059 28977464 30999227 31566204 32946548 31693736 34038024 CRP 34453631
    Inflammatory index Cytomegalovirus Optical Density Cytomegalovirus optical density 23213031 Cytomegalovirus

    optical density 23213031

    Cytomegalovirus

    optical density 23213031 26150497 31566204

    Inflammatory index Interleukin-6 Interleukin-6 28977464
    Inflammatory index P-selectin P-selectin 28977464
    Motion index Grip Strength Grip strength 5841151 6610563 31179487 20005245 Grip strength 22433233 31179487 Grip strength 31179487 20005245
    Motion index Vertical Jump Vertical jump 22433233
    Motion index Timed Up and Go Test Timed up and go test 31179487 Timed up and go test 31179487 Timed up and go test 31179487
    Motion index Chair Rise Time Chair rise time 31179487 Chair rise time 31179487 Chair rise time 31179487
    Motion index 1-Week Physical Activity 1-week physical activity 29581467 31388024
    Body morphology index Waist Circumference (WC) WC 23642770 28110151 WC 18597867 22433233 28110151 28203066 WC 28110151
    Body morphology index Waist-to-Hip Ratio Waist-to-hip ratio 17889950 23642770
    Body morphology index Waist-to-Height Ratio Waist-to-height ratio 30899733 Waist-to-height ratio 30899733 Waist-to-height ratio 30899733
    Body morphology index Body Mass Index (BMI) Body mass index 17889950 23642770
    Body morphology index Weight Weight 6667707
    Body morphology index Height Height 31179487 Height 31179487 Height 31179487
    Body morphology index Body Fat Body fat 17889950 23642770 Body fat 18597867
    Body morphology index Lean Body Mass Lean body mass 17889950 23642770
    Body morphology index Soft Lean Mass Soft lean mass 22433233
    Genetic index Terminal Telomere Restriction Fragment Terminal telomere restriction

    fragment 24659482

    SBP, systolic blood pressure; DBP, diastolic blood pressure; NT-proBNP, N-terminal pro brain natriuretic peptide; MVEA, mitral annulus peak E anterior wall; MVEL, mitral valve annulus lateral wall of peak velocity of early filling; MVES, mitral valve annulus ventricular septum of the peak velocity of early filling; FEV1, forced expiratory volume in 1.0 s; FVC, forced vital capacity; MMSE, mini-mental state examination; eGFR, estimated glomerular filtration rat; HBA1C, glycosylated hemoglobin; HDL, high density lipoprotein; LDL, low density lipoprotein; TSH, thyroid stimulating hormone; ALT, Alanine aminotransferase; AST, Aspartate aminotransferase; ALP, alkaline phosphatase; A/G, ratio of albumin to globulin; CRP, c-reactive protein; WC, waist circumference.

    Further Reading

    • 2017, Common methods of biological age estimation [2]
    • 2023, Progress in biological age research [35]

    Todo

    • 2017, Biological Age Predictors [36]
    • 2022, Biological Age Predictors: The Status Quo and Future Trends [37]
    • 2021, Predictors of Biological Age: The Implications for Wellness and Aging Research [38]
    • 2023, Biological age estimation using circulating blood biomarkers [1]
    • 2021, Deep learning for biological age estimation [39]

    See Also

    References

    1. Jump up to: 1.0 1.1 Bortz J et al.: Biological age estimation using circulating blood biomarkers. Commun Biol 2023. (PMID 37884697) [PubMed] [DOI] [Full text]
    2. Jump up to: 2.0 2.1 Jia L et al.: Common methods of biological age estimation. Clin Interv Aging 2017. (PMID 28546743) [PubMed] [DOI] [Full text]
    3. Jump up to: 3.0 3.1 3.2 3.3 3.4 3.5 3.6 3.7 3.8 Hollingsworth JW et al.: Correlations between tests of aging in Hiroshima subjects--an attempt to define "physiologic age". Yale J Biol Med 1965. (PMID 5841151) [PubMed] [Full text]
    4. Dubina TL et al.: Biological age and its estimation. II. Assessment of biological age of albino rats by multiple regression analysis. Exp Gerontol 1983. (PMID 6873212) [PubMed] [DOI]
    5. Jump up to: 5.0 5.1 Nakamura E et al.: Assessment of biological age by principal component analysis. Mech Ageing Dev 1988. (PMID 3226152) [PubMed] [DOI]
    6. Jump up to: 6.0 6.1 6.2 6.3 6.4 6.5 6.6 Webster IW & Logie AR: A relationship between functional age and health status in female subjects. J Gerontol 1976. (PMID 950448) [PubMed] [DOI]
    7. Jump up to: 7.0 7.1 7.2 7.3 7.4 7.5 7.6 7.7 7.8 Nakamura E et al.: Biological age versus physical fitness age. Eur J Appl Physiol Occup Physiol 1989. (PMID 2737197) [PubMed] [DOI]
    8. Jump up to: 8.0 8.1 8.2 8.3 Klemera P & Doubal S: A new approach to the concept and computation of biological age. Mech Ageing Dev 2006. (PMID 16318865) [PubMed] [DOI]
    9. Jump up to: 9.0 9.1 Hochschild R: Improving the precision of biological age determinations. Part 1: A new approach to calculating biological age. Exp Gerontol 1989. (PMID 2684676) [PubMed] [DOI]
    10. Jump up to: 10.00 10.01 10.02 10.03 10.04 10.05 10.06 10.07 10.08 10.09 10.10 10.11 10.12 10.13 10.14 10.15 10.16 10.17 10.18 Cho IH et al.: An empirical comparative study on biological age estimation algorithms with an application of Work Ability Index (WAI). Mech Ageing Dev 2010. (PMID 20005245) [PubMed] [DOI]
    11. Jump up to: 11.0 11.1 11.2 11.3 11.4 11.5 11.6 Levine ME: Modeling the rate of senescence: can estimated biological age predict mortality more accurately than chronological age?. J Gerontol A Biol Sci Med Sci 2013. (PMID 23213031) [PubMed] [DOI] [Full text]
    12. Jump up to: 12.00 12.01 12.02 12.03 12.04 12.05 12.06 12.07 12.08 12.09 12.10 12.11 12.12 12.13 12.14 12.15 12.16 12.17 Jee H & Park J: Selection of an optimal set of biomarkers and comparative analyses of biological age estimation models in Korean females. Arch Gerontol Geriatr 2017. (PMID 28110151) [PubMed] [DOI]
    13. Jump up to: 13.0 13.1 13.2 13.3 LeCun Y et al.: Deep learning. Nature 2015. (PMID 26017442) [PubMed] [DOI]
    14. Jump up to: 14.0 14.1 Putin E et al.: Deep biomarkers of human aging: Application of deep neural networks to biomarker development. Aging (Albany NY) 2016. (PMID 27191382) [PubMed] [DOI] [Full text]
    15. Mamoshina P et al.: Population Specific Biomarkers of Human Aging: A Big Data Study Using South Korean, Canadian, and Eastern European Patient Populations. J Gerontol A Biol Sci Med Sci 2018. (PMID 29340580) [PubMed] [DOI] [Full text]
    16. Mamoshina P et al.: Blood Biochemistry Analysis to Detect Smoking Status and Quantify Accelerated Aging in Smokers. Sci Rep 2019. (PMID 30644411) [PubMed] [DOI] [Full text]
    17. Gialluisi A et al.: Exploring domains, clinical implications and environmental associations of a deep learning marker of biological ageing. Eur J Epidemiol 2022. (PMID 34453631) [PubMed] [DOI]
    18. Pyrkov TV et al.: Extracting biological age from biomedical data via deep learning: too much of a good thing?. Sci Rep 2018. (PMID 29581467) [PubMed] [DOI] [Full text]
    19. Raghu VK et al.: Deep Learning to Estimate Biological Age From Chest Radiographs. JACC Cardiovasc Imaging 2021. (PMID 33744131) [PubMed] [DOI]
    20. Rahman SA & Adjeroh DA: Deep Learning using Convolutional LSTM estimates Biological Age from Physical Activity. Sci Rep 2019. (PMID 31388024) [PubMed] [DOI] [Full text]
    21. Jump up to: 21.0 21.1 21.2 21.3 21.4 21.5 21.6 Bai X et al.: Evaluation of biological aging process - a population-based study of healthy people in China. Gerontology 2010. (PMID 19940465) [PubMed] [DOI]
    22. Jump up to: 22.0 22.1 22.2 22.3 22.4 22.5 22.6 Zhang WG et al.: Select aging biomarkers based on telomere length and chronological age to build a biological age equation. Age (Dordr) 2014. (PMID 24659482) [PubMed] [DOI] [Full text]
    23. Jump up to: 23.0 23.1 23.2 Zhang W et al.: Model Construction for Biological Age Based on a Cross-Sectional Study of a Healthy Chinese Han population. J Nutr Health Aging 2017. (PMID 29188884) [PubMed] [DOI]
    24. Jump up to: 24.0 24.1 24.2 24.3 24.4 24.5 24.6 24.7 24.8 Nakamura E et al.: Biological age versus physical fitness age in women. Eur J Appl Physiol Occup Physiol 1990. (PMID 2282902) [PubMed] [DOI]
    25. Jump up to: 25.0 25.1 25.2 25.3 25.4 Nakamura E & Miyao K: A method for identifying biomarkers of aging and constructing an index of biological age in humans. J Gerontol A Biol Sci Med Sci 2007. (PMID 17921421) [PubMed] [DOI]
    26. Jump up to: 26.00 26.01 26.02 26.03 26.04 26.05 26.06 26.07 26.08 26.09 26.10 Park J et al.: Developing a biological age assessment equation using principal component analysis and clinical biomarkers of aging in Korean men. Arch Gerontol Geriatr 2009. (PMID 18597867) [PubMed] [DOI]
    27. Jump up to: 27.0 27.1 27.2 27.3 27.4 Ueno LM et al.: Biomarkers of aging in women and the rate of longitudinal changes. J Physiol Anthropol Appl Human Sci 2003. (PMID 12672981) [PubMed] [DOI]
    28. Jump up to: 28.0 28.1 28.2 28.3 28.4 Nakamura E & Miyao K: Sex differences in human biological aging. J Gerontol A Biol Sci Med Sci 2008. (PMID 18840798) [PubMed] [DOI]
    29. Jump up to: 29.0 29.1 29.2 29.3 29.4 29.5 29.6 Nakamura E et al.: Effects of habitual physical exercise on physiological age in men aged 20-85 years as estimated using principal component analysis. Eur J Appl Physiol Occup Physiol 1996. (PMID 8803500) [PubMed] [DOI]
    30. Jump up to: 30.0 30.1 30.2 30.3 30.4 Borkan GA & Norris AH: Assessment of biological age using a profile of physical parameters. J Gerontol 1980. (PMID 6967883) [PubMed] [DOI]
    31. Jump up to: 31.0 31.1 31.2 31.3 31.4 31.5 Zhang WG et al.: Construction of an integral formula of biological age for a healthy Chinese population using principle component analysis. J Nutr Health Aging 2014. (PMID 24522464) [PubMed] [DOI]
    32. Jump up to: 32.0 32.1 32.2 32.3 32.4 32.5 Jee H et al.: Development and application of biological age prediction models with physical fitness and physiological components in Korean adults. Gerontology 2012. (PMID 22433233) [PubMed] [DOI]
    33. Jump up to: 33.0 33.1 33.2 33.3 33.4 33.5 33.6 33.7 33.8 33.9 Hochschild R: Improving the precision of biological age determinations. Part 2: Automatic human tests, age norms and variability. Exp Gerontol 1989. (PMID 2583248) [PubMed] [DOI]
    34. Jump up to: 34.0 34.1 Zhang WG et al.: Peripheral Blood Leukocyte Telomere Length Is Associated with Age but Not Renal Function: A Cross-Sectional Follow-Up Study. J Nutr Health Aging 2018. (PMID 29380856) [PubMed] [DOI]
    35. Li Z et al.: Progress in biological age research. Front Public Health 2023. (PMID 37124811) [PubMed] [DOI] [Full text]
    36. Jylhävä J et al.: Biological Age Predictors. EBioMedicine 2017. (PMID 28396265) [PubMed] [DOI] [Full text]
    37. Erema VV et al.: Biological Age Predictors: The Status Quo and Future Trends. Int J Mol Sci 2022. (PMID 36499430) [PubMed] [DOI] [Full text]
    38. Lohman T et al.: Predictors of Biological Age: The Implications for Wellness and Aging Research. Gerontol Geriatr Med 2021. (PMID 34595331) [PubMed] [DOI] [Full text]
    39. Ashiqur Rahman S et al.: Deep learning for biological age estimation. Brief Bioinform 2021. (PMID 32363395) [PubMed] [DOI] [Full text]