| Literature DB >> 28050560 |
Linpei Jia1, Weiguang Zhang2, Rufu Jia3, Hongliang Zhang4, Xiangmei Chen5.
Abstract
The biological age (BA) equation is a prediction model that utilizes an algorithm to combine various biological markers of ageing. Different from traditional concepts, the BA equation does not emphasize the importance of a golden index but focuses on using indices of vital organs to represent the senescence of whole body. This model has been used to assess the ageing process in a more precise way and may predict possible diseases better as compared with the chronological age (CA). The principal component analysis (PCA) is applied as one of the common and frequently used methods in the construction of the BA formula. Compared with other methods, PCA has its own study procedures and features. Herein we summarize the up-to-date knowledge about the BA formula construction and discuss the influential factors, so as to give an overview of BA estimate by PCA, including composition of samples, choices of test items, and selection of ageing biomarkers. We also discussed the advantages and disadvantages of PCA with reference to the construction mechanism, accuracy, and practicability of several common methods in the construction of the BA formula.Entities:
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Year: 2016 PMID: 28050560 PMCID: PMC5168481 DOI: 10.1155/2016/4697017
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
The basic information of study population.
| Researcher | Year | Country | Sample size | Age range | Health standard |
|---|---|---|---|---|---|
| Nakamura et al. [ | 1989 | Japan | 69 males | Average 42.6 ± 9.4 years | Healthy population |
| Nakamura et al. [ | 1990 | Japan | 66 females | 20–64 years | Healthy population |
| Nakamura et al. [ | 1996 | Japan | 221 males | 20–85 years | Healthy population |
| Ueno et al. [ | 2003 | Japan | 981 females (cross-sectional study) | 20–80 years | Healthy population |
| Nakamura and Miyao [ | 2003 | Japan | 86 males | 31–77 years | Healthy population, including some volunteers with hypertension, hyperlipidemia, and diabetes |
| Nakamura and Miyao [ | 2007 | Japan | 86 males | 31–78 years | Healthy population, including some volunteers with hypertension, hyperlipidemia, and diabetes |
| Nakamura and Miyao [ | 2008 | Japan | 86 males | 31–77 years | Healthy population, including some volunteers with hypertension, hyperlipidemia, and diabetes |
| Park et al. [ | 2009 | Korea | 1588 | 30–77 years | Healthy population |
| Bai et al. [ | 2010 | China | 392 males | 30–98 years | Healthy population and some volunteers with subclinical state |
| Jee et al. [ | 2012 | Korea | 1604 males | 30–85 years | Healthy population and some volunteers with early state of diseases |
| Zhang et al. [ | 2014 | China | 669 males | 35–91 years | Healthy population |
| Zhang et al. [ | 2014 | China | 69 males | 35–91 years | Healthy population |
General description of test items.
| Test items | Researches |
|---|---|
| Basic information (age, gender, height, body fat, and blood pressure) | [ |
| Blood routine | [ |
| Blood chemistry | [ |
| Urine routine | [ |
| Pulmonary function | [ |
| Cardiovascular ultrasound | [ |
| Carotid artery ultrasound | [ |
| Sexual hormone | [ |
| Electrocardiograph | [ |
| Chest radiography | [ |
| Abdomen ultrasound | [ |
| Gastrointestinal endoscopy | [ |
| Questionnaire of living habits | [ |
| Genetics | [ |
Biomarkers of ageing.
| Organ system | Biomarker | Epidemiologic studies |
|---|---|---|
| Cardiovascular system | Pulse pressure | [ |
| Systolic blood pressure | [ | |
| Heart rate | [ | |
| Intima-media thickness | [ | |
| Maximum internal diameter of carotid artery | [ | |
| End diastolic velocity | [ | |
| Mitral valve annulus ventricular septum of the peak velocity of early filling | [ | |
| Mitral valve annulus lateral wall of peak velocity of early filling | [ | |
| Mitral annulus peak E anterior wall | [ | |
| Ratio of peak velocity of early filling to atrial filling | [ | |
| Respiratory system |
| [ |
| Forced expiratory volume in 1 s | [ | |
| Forced vital capacity | [ | |
| Maximal midexpiratory flow rate 75/25 | [ | |
| Nervous system | Trail making test | [ |
| Digital symbol test | [ | |
| Renal system | Blood urea nitrogen | [ |
| Cystatin C | [ | |
| Liver | Serum albumin | [ |
| Glutamic oxaloacetic transaminase | [ | |
| Glutamic pyruvic transaminase | [ | |
| Ratio of albumin to globulin | [ | |
| Lactate dehydrogenase | [ | |
| Hematologic system | Erythrocyte sedimentation rate | [ |
| Mean corpuscular hemoglobin | [ | |
| Red blood cell count | [ | |
| Hematocrit | [ | |
| Haemoglobin concentration | [ | |
| Fibrinogen | [ | |
| Metabolism | Glycosylated hemoglobin | [ |
| Glucose | [ | |
| Low density cholesterol | [ | |
| Atherogenic index | [ | |
| Triglyceride | [ | |
| Total cholesterol concentration | [ | |
| Muscle and fat | Grip strength | [ |
| Soft lean mass | [ | |
| Waist circumference | [ | |
| Percent body fat | [ | |
| Sensory system | Hearing threshold | [ |
| Genetic index | Telomere restriction fragment | [ |
Figure 1Flow chart of basic steps of biological age model constructions by principal component analysis.
Correlation coefficients and redundancy coefficients of each research.
| Researcher | Year | Correlation coefficient | Redundancy coefficient |
|---|---|---|---|
| Nakamura et al. [ | 1989 | 0.24 | 0.5 |
| Ueno et al. [ | 2003 | 0.25 | 0.9 |
| Nakamura and Miyao [ | 2007 | 0.6 | |
| Nakamura and Miyao [ | 2008 | 0.6 | |
| Park et al. [ | 2009 | 0.15 | |
| Bai et al. [ | 2010 | 0.25 | 0.4 |
| Jee et al. [ | 2012 | 0.12 | 0.75 |
| Zhang et al. [ | 2014 | 0.40 | 0.7 |
| Zhang et al. [ | 2014 | 0.15 | 0.7 |
Comparisons between the multiple linear regression (MLR), the principal component analysis (PCA), Hochschild's method, and the Klemera and Doubal method (KDM) in biological age (BA) estimates.
| Methods | Advantages | Disadvantages |
|---|---|---|
| MLR | As an initial method of BA estimates, MLR can detect the stabilization and multicollinearity of the empirical data [ | The distortion of BA at the regression edge is influenced by mathematical factors, and MLR also ignores the discontinuity of the ageing rate during the whole life of individuals [ |
| PCA | PCA selects and transforms the original biomarkers to a reduced and/or transformed new series of uncorrelated variables [ | The final step of the computation resembles the MLR method, and some of the statistical deficiencies of MLR cannot be totally avoided [ |
| Hochschild's method | Hochschild's method uses the regression for individual biomarkers and evaluates the biomarkers according to their impact on life expectancy [ | Hochschild's method is not based on mathematical definition of BA, and the construction mechanism is elusive. In particular, the calculation does not correspond to the optimum algorithm [ |
| KDM | KDM is a more reliable predictor of mortality and performed better than the chronological age [ | KDM requires complicated calculations [ |