0319 Age Estimation from Sleep using Deep Learning Predicts Life Expectancy. (25th May 2022)
- Record Type:
- Journal Article
- Title:
- 0319 Age Estimation from Sleep using Deep Learning Predicts Life Expectancy. (25th May 2022)
- Main Title:
- 0319 Age Estimation from Sleep using Deep Learning Predicts Life Expectancy
- Authors:
- Brink-Kjaer, Andreas
Leary, Eileen
Sun, Haoqi
Westover, M Brandon
Stone, Katie
Peppard, Paul
Lane, Nancy
Cawthon, Peggy
Redline, Susan
Jennum, Poul
Mignot, Emmanuel
Sorensen, Helge - Abstract:
- Abstract: Introduction: Sleep disturbances increase with age and are predictors of mortality. However, summary metrics typically derived in sleep clinics from gold standard clinical analysis of polysomnograms (PSGs) only represent a very small fraction of data collected. In this study, we designed deep neural networks that estimate age as a proxy for overall health using full PSG signals. Age estimation was next used to evaluate association to mortality risk. Methods: Aging was modeled using 2, 500 PSGs and tested in 10, 808 PSGs from men and women in 7 different cohorts aged between 20 and 90. The deep neural network was trained using as a regression model of age in the 2, 500 PSGs roughly uniformly distributed across 6 to 90 years. The estimates of the network were interpreted using Gradient SHAP, which attributes relevance scores to the input in terms of the age estimate. The association between age estimate error (AEE), which is the residual of the estimate, and mortality risk was investigated with Cox proportional hazards models that adjusted for demographics, sleep, and health covariates. Results: Ages were estimated with a mean absolute error of 5.81 ± 1.18 years, while a linear regression model using basic sleep scoring measures had an error of 15.10 ± 6.48 years. Interpretation of the network revealed that patterns such as arousal, sleep apnea, and sleep stage transitions contribute to the age estimate. Each 10-year increment in AEE was associated with increasedAbstract: Introduction: Sleep disturbances increase with age and are predictors of mortality. However, summary metrics typically derived in sleep clinics from gold standard clinical analysis of polysomnograms (PSGs) only represent a very small fraction of data collected. In this study, we designed deep neural networks that estimate age as a proxy for overall health using full PSG signals. Age estimation was next used to evaluate association to mortality risk. Methods: Aging was modeled using 2, 500 PSGs and tested in 10, 808 PSGs from men and women in 7 different cohorts aged between 20 and 90. The deep neural network was trained using as a regression model of age in the 2, 500 PSGs roughly uniformly distributed across 6 to 90 years. The estimates of the network were interpreted using Gradient SHAP, which attributes relevance scores to the input in terms of the age estimate. The association between age estimate error (AEE), which is the residual of the estimate, and mortality risk was investigated with Cox proportional hazards models that adjusted for demographics, sleep, and health covariates. Results: Ages were estimated with a mean absolute error of 5.81 ± 1.18 years, while a linear regression model using basic sleep scoring measures had an error of 15.10 ± 6.48 years. Interpretation of the network revealed that patterns such as arousal, sleep apnea, and sleep stage transitions contribute to the age estimate. Each 10-year increment in AEE was associated with increased all-cause mortality rate of 28 % (95% confidence interval: 19–38 %) and cardiovascular mortality rate of 38 % (95% confidence interval: 19 – 59 %). An increase from -10 to +10 years in AEE translates to an estimated decreased life expectancy of 6.21 years (95% confidence interval: 4.31–8.21 years). Conclusion: Greater AEE was mostly reflected in increased sleep fragmentation, suggesting this is an important biomarker of future health independent of sleep apnea. Support (If Any): The Klarman Family Foundation and grants HL46380, M01 RR00080-39, T32-HL07567, RO1-46380, U01HL53916, U01HL53931, U01HL53934, U01HL53937, U01HL64360, U01HL53938, U01HL53940, U01HL53941, U01HL63463, 38-PM-07, R01HL62252, R01AG036838, R01AG058680, 1UL1RR025011, U01AG027810, U01AG042124, U01AG042139, U01AG042140, U01AG042143, U01AG042145, U01AG042168, U01AR066160, UL1TR000128, R01HL071194, R01HL070848, R01HL070847, R01HL070842, R01HL070841, R01HL070837, R01HL070838, R01HL070839, R24HL114473, and 75N92019R002. … (more)
- Is Part Of:
- Sleep. Volume 45(2022)Supplement 1
- Journal:
- Sleep
- Issue:
- Volume 45(2022)Supplement 1
- Issue Display:
- Volume 45, Issue 1 (2022)
- Year:
- 2022
- Volume:
- 45
- Issue:
- 1
- Issue Sort Value:
- 2022-0045-0001-0000
- Page Start:
- A143
- Page End:
- A144
- Publication Date:
- 2022-05-25
- Subjects:
- Sleep -- Physiological aspects -- Periodicals
Sleep disorders -- Periodicals
Sommeil -- Aspect physiologique -- Périodiques
Sommeil, Troubles du -- Périodiques
Sleep disorders
Sleep -- Physiological aspects
Sleep -- physiological aspects
Sleep Wake Disorders
Psychophysiology
Electronic journals
Periodicals
616.8498 - Journal URLs:
- http://bibpurl.oclc.org/web/21399 ↗
http://www.journalsleep.org/ ↗
https://academic.oup.com/sleep ↗
http://www.oxfordjournals.org/ ↗
http://www.pubmedcentral.nih.gov/tocrender.fcgi?journal=369&action=archive ↗ - DOI:
- 10.1093/sleep/zsac079.317 ↗
- Languages:
- English
- ISSNs:
- 0161-8105
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - BLDSS-3PM
British Library HMNTS - ELD Digital store - Ingest File:
- 22015.xml