Table 1.
Biomarkers used in this study and number of observations for each data set.
Fig 1.
Mean biomarker values for NHANES in relation to reported reference ranges.
Mean values for each biomarker were normalized according to the reported minimal and maximal normal values, represented by the vertical lines. For biomarker with only one specified normal value, the other vertical line represents minimal or maximal value for the data set (see S1 Table for details). Graphs for other data sets can be found in S1–S3 Figs.
Fig 2.
Mean correlation between pairwise DM values as a function of biomarker number.
Grey vertical bars indicate 2.5 to 97.5 percentiles of observed correlation coefficients calculated between ~5,000 random mutually exclusive pairs generated from a pool of 44 markers.
Fig 3.
Mean variance of predicted DM values with age as a function of biomarker number.
Grey vertical bars indicate 2.5 to 97.5 percentiles of observed variances in age explained by DM calculated from ~5,000 random combinations generated from a pool of 44 markers.
Fig 4.
Contribution of selected individual biomarkers to pairwise DM correlations, as a function of biomarker number.
The X-axis represents the number of biomarkers per group (Nbm) and the Y-axis reports the coefficient (β) from a linear regression of the DM pairwise correlations on Nbm. βs represent the deviation from the average correlation when a given biomarker is included in the calculation of DM; positive values thus indicate improved performance of DM, and negative values decreased performance. Colors indicate the magnitude of p-values, with darker red being more significant and white not significant. Graphs for all biomarkers can be found in S8–S11 Figs.
Fig 5.
Contribution of selected individual biomarkers to change in variance in age explained by DM.
The X-axis represents the number of biomarkers per group (Nbm), while the Y-axis reports the change in how much variance in age is predicted by DM with the inclusion of the given biomarker, based on a meta-regression of all the R-squareds calculated for individual quadratic regressions of age and DM. Colors indicate the magnitude of p-values, with darker red being more significant and white not significant. Graphs for all biomarkers can be found in S12–S15 Figs.
Fig 6.
Effects of RP age intervals on prediction of age and health outcomes.
The study population represented here is the full InCHIANTI data set with InCHIANTI RPs covering different age intervals. The width of the rectangle represents the average effect size among significant analyses, relative to the effect size of the rectangle in the leftmost column (entire study population as its own RP). The percentage of significant p-values is represented by the height of shading within the rectangle, the shading colour represents the direction of the effect (blue is a positive effect), and the hue represents the average p-value among the significant p-values, with darker hues indicating lower p-values.
Fig 7.
Effects of RPs’ survival and health status on prediction of age and health outcomes.
The study population represented here is the full InCHIANTI data set with InCHIANTI RPs defined according to survival and health status. The width of the rectangle represents the average effect size among significant analyses, relative to the effect size of the rectangle in the leftmost column (entire study population as its own RP). The percentage of significant p-values is represented by the height of shading within the rectangle, the shading colour represents the direction of the effect (blue is a positive effect), and the hue represents the average p-value among the significant p-values, with darker hues indicating lower p-values.
Fig 8.
Effects of RP sample size on prediction of age and health outcomes.
The study population represented here are individuals aged 20–70 from the InCHIANTI data set with RPs of various sample sizes drawn randomly from the study population. The width of the rectangle represents the average effect size among significant analyses, relative to the effect size of the rectangle in the leftmost column (entire study population as its own RP). The percentage of significant p-values is represented by the height of shading within the rectangle, the shading colour represents the direction of the effect (blue is a positive effect), and the hue represents the average p-value among the significant p-values, with darker hues indicating lower p-values.
Fig 9.
Effects of RP drawn from external young populations on prediction of age and health outcomes.
The study population represented here is the full WHAS data set with young RPs from each of the three data sets as indicated. The width of the rectangle represents the average effect size among significant analyses, relative to the effect size of the rectangle in the leftmost column (entire study population as its own RP). The percentage of significant p-values is represented by the height of shading within the rectangle, the shading colour represents the direction of the effect (blue is a positive effect), and the hue represents the average p-value among the significant p-values, with darker hues indicating lower p-values.