Quantifying Healthy Aging in Older Veterans Using Computational Audio Analysis

Author:

Yin Yunting1,Hanes Douglas William2,Skiena Steven1,Clouston Sean A P2ORCID

Affiliation:

1. Department of Computer Science, Stony Brook University , Stony Brook, New York , USA

2. Program in Public Health, Department of Family, Population, and Preventive Medicine, Stony Brook University , Stony Brook, New York , USA

Abstract

Abstract Background Researchers are increasingly interested in better methods for assessing the pace of aging in older adults, including vocal analysis. The present study sought to determine whether paralinguistic vocal attributes improve estimates of the age and risk of mortality in older adults. Methods To measure vocal age, we curated interviews provided by male U.S. World War II Veterans in the Library of Congress collection. We used diarization to identify speakers and measure vocal features and matched recording data to mortality information. Veterans (N = 2 447) were randomly split into testing (n = 1 467) and validation (n = 980) subsets to generate estimations of vocal age and years of life remaining. Results were replicated to examine out-of-sample utility using Korean War Veterans (N = 352). Results World War II Veterans’ average age was 86.08 at the time of recording and 91.28 at the time of death. Overall, 7.4% were prisoners of war, 43.3% were Army Veterans, and 29.3% were drafted. Vocal age estimates (mean absolute error = 3.255) were within 5 years of chronological age, 78.5% of the time. With chronological age held constant, older vocal age estimation was correlated with shorter life expectancy (aHR = 1.10; 95% confidence interval: 1.06–1.15; p < .001), even when adjusting for age at vocal assessment. Conclusions Computational analyses reduced estimation error by 71.94% (approximately 8 years) and produced vocal age estimates that were correlated with both age and predicted time until death when age was held constant. Paralinguistic analyses augment other assessments for individuals when oral patient histories are recorded.

Funder

National Institute on Aging

NSF

Publisher

Oxford University Press (OUP)

Subject

Geriatrics and Gerontology,Aging

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