AnthropoAge, a novel approach to integrate body composition into the estimation of biological age.
Carlos A Fermín-MartínezAlejandro Márquez-SalinasEnrique C GuerraLilian Zavala-RomeroNeftali Eduardo Antonio-VillaLuisa Fernández-ChirinoEduardo Sandoval-ColinDaphne Abigail Barquera-GuevaraAlejandro Campos MuñozArsenio Vargas-VázquezCésar Daniel Paz-CabreraDaniel Ramírez-GarcíaLuis Miguel Gutiérrez-RobledoOmar Yaxmehen Bello-ChavollaPublished in: Aging cell (2022)
Aging is believed to occur across multiple domains, one of which is body composition; however, attempts to integrate it into biological age (BA) have been limited. Here, we consider the sex-dependent role of anthropometry for the prediction of 10-year all-cause mortality using data from 18,794 NHANES participants to generate and validate a new BA metric. Our data-driven approach pointed to sex-specific contributors for BA estimation: WHtR, arm and thigh circumferences for men; weight, WHtR, thigh circumference, subscapular and triceps skinfolds for women. We used these measurements to generate AnthropoAge, which predicted all-cause mortality (AUROC 0.876, 95%CI 0.864-0.887) and cause-specific mortality independently of ethnicity, sex, and comorbidities; AnthropoAge was a better predictor than PhenoAge for cerebrovascular, Alzheimer, and COPD mortality. A metric of age acceleration was also derived and used to assess sexual dimorphisms linked to accelerated aging, where women had an increase in overall body mass plus an important subcutaneous to visceral fat redistribution, and men displayed a marked decrease in fat and muscle mass. Finally, we showed that consideration of multiple BA metrics may identify unique aging trajectories with increased mortality (HR for multidomain acceleration 2.43, 95%CI 2.25-2.62) and comorbidity profiles. A simplified version of AnthropoAge (S-AnthropoAge) was generated using only BMI and WHtR, all results were preserved using this metric. In conclusion, AnthropoAge is a useful proxy of BA that captures cause-specific mortality and sex dimorphisms in body composition, and it could be used for future multidomain assessments of aging to better characterize the heterogeneity of this phenomenon.
Keyphrases
- body composition
- resistance training
- bone mineral density
- cardiovascular events
- body mass index
- adipose tissue
- risk factors
- polycystic ovary syndrome
- type diabetes
- middle aged
- cardiovascular disease
- single cell
- mental health
- depressive symptoms
- physical activity
- machine learning
- insulin resistance
- cystic fibrosis
- weight loss
- skeletal muscle
- cognitive decline
- soft tissue
- cervical cancer screening
- metabolic syndrome
- current status
- electronic health record