Abstract

Biological aging results in changes in an organism that accumulate over age in a complex fashion across different regulatory systems, and their cumulative effect manifests in increased physiological dysregulation (PD) and declining robustness and resilience that increase risks of health disorders and death. Several composite measures involving multiple biomarkers that capture complex effects of aging have been proposed. We applied one such approach, the Mahalanobis distance (DM), to baseline measurements of various biomarkers (inflammation, hematological, diabetes-associated, lipids, endocrine, renal) in 3,279 participants from the Long Life Family Study (LLFS) with complete biomarker data. We used DM to estimate the level of PD by summarizing information about multiple deviations of biomarkers from specified “norms” in the reference population (here, LLFS participants younger than 60 years at baseline). An increase in DM was associated with significantly higher mortality risk (hazard ratio per standard deviation of DM: 1.42; 95% confidence interval: [1.3, 1.54]), even after adjustment for a composite measure summarizing 85 health-related deficits (disabilities, diseases, less severe symptoms), age, and other covariates. Such composite measures significantly improved mortality predictions especially in the subsample of participants from families enriched for exceptional longevity (the areas under the receiver operating characteristic curves are 0.88 vs. 0.85, in models with and without the composite measures, p = 2.9 × 10−5). Sensitivity analyses confirmed that our conclusions are not sensitive to different aspects of computational procedures. Our findings provide the first evidence of association of PD with mortality and its predictive performance in a unique sample selected for exceptional familial longevity.

Highlights

  • Traditional demographic analyses based on information from population life tables provide useful insights on historical patterns of change in mortality, survival curves, and life expectancy which can be used to predict future trends in these characteristics in the entire population or specific subpopulations

  • We confirmed that the composite measure of physiological dysregulation (DM) is associated with mortality in Long Life Family Study (LLFS), similar to other studies [2, 7, 9, 12]

  • We showed that addition of DM significantly improves mortality predictions compared to the reference model in the total LLFS sample

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Summary

Introduction

Traditional demographic analyses based on information from population life tables provide useful insights on historical patterns of change in mortality, survival curves, and life expectancy which can be used to predict future trends in these characteristics in the entire population or specific subpopulations. The statistical (Mahalanobis) distance (denoted as DM) constructed for the joint distribution of multiple biomarkers was suggested as a composite measure that can represent the level of physiological dysregulation in an organism [2] and aging-related declines in robustness and resilience [7] This measure was associated with mortality and agingrelated outcomes in numerous studies [see e.g., [2, 7,8,9,10,11,12]]. Unlike all previous studies applying DM, this paper investigates whether DM is a useful predictor of mortality in persons with much lower mortality risk compared to a general population (and who, respectively, have much higher remaining life expectancy than that estimated from population-based cohort life-tables)

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