Moving towards the detection of frailty with biomarkers: A population health study

Author:

Sargent Lana123ORCID,Nalls Mike34,Singleton Andrew3,Palta Priya5,Kucharska‐Newton Anna56,Pankow Jim7,Young Hunter8,Tang Weihong9,Lutsey Pamela10,Olex Amy11ORCID,Wendte Jered M.1,Li Danni12,Alonso Alvaro13,Griswold Michael7,Windham B. Gwen7,Baninelli Stefania14,Ferrucci Luigi1415ORCID

Affiliation:

1. Virginia Commonwealth University School of Nursing Richmond Virginia USA

2. Department of Pharmacotherapy and Outcomes Science, Geriatric Pharmacotherapy Program, School of Pharmacy Virginia Commonwealth University Richmond Virginia USA

3. National Institutes of Health, Center for Alzheimer's and Related Dementias National Institute of Aging Bethesda Maryland USA

4. Data Tecnica International Glen Echo Maryland USA

5. Department of Neurology University of North Carolina at Chapel Hill School of Medicine Chapel Hill NC USA

6. Department of Epidemiology, College of Public Health University of Kentucky Lexington Kentucky USA

7. Memory Impairment and Neurodegenerative Dementia Center University of Mississippi Medical Center Jackson Mississippi USA

8. Welch Center for Epidemiology, Prevention, and Clinical Research Johns Hopkins University Bloomberg School of Public Health Baltimore Maryland USA

9. Division of Epidemiology and Community Health, School of Public Health University of Minnesota Minneapolis Minnesota USA

10. Division of Epidemiology and Community Health School of Public Health Minneapolis Minnesota USA

11. C. Kenneth and Dianne Wright Center for Clinical and Translational Research Virginia Commonwealth Univerity Richmond Virginia USA

12. Department of Lab Medicine and Pathology University of Minnesota Minneapolis Minnesota USA

13. Department of Epidemiology, Rollins School of Public Health Emory University Atlanta Georgia USA

14. Laboratory of Clinical Epidemiology, InCHIANTI Study Group Local Health Unit Tuscany Center Florence Italy

15. Longitudinal Studies Section, Translational Gerontology Branch National Institute on Aging Baltimore Maryland USA

Abstract

AbstractAging adults experience increased health vulnerability and compromised abilities to cope with stressors, which are the clinical manifestations of frailty. Frailty is complex, and efforts to identify biomarkers to detect frailty and pre‐frailty in the clinical setting are rarely reproduced across cohorts. We developed a predictive model incorporating biological and clinical frailty measures to identify robust biomarkers across data sets. Data were from two large cohorts of older adults: “Invecchiare in Chianti (Aging in Chianti, InCHIANTI Study”) (n = 1453) from two small towns in Tuscany, Italy, and replicated in the Atherosclerosis Risk in Communities Study (ARIC) (n = 6508) from four U.S. communities. A complex systems approach to biomarker selection with a tree‐boosting machine learning (ML) technique for supervised learning analysis was used to examine biomarker population differences across both datasets. Our approach compared predictors with robust, pre‐frail, and frail participants and examined the ability to detect frailty status by race. Unique biomarker features identified in the InCHIANTI study allowed us to predict frailty with a model accuracy of 0.72 (95% confidence interval (CI) 0.66–0.80). Replication models in ARIC maintained a model accuracy of 0.64 (95% CI 0.66–0.72). Frail and pre‐frail Black participant models maintained a lower model accuracy. The predictive panel of biomarkers identified in this study may improve the ability to detect frailty as a complex aging syndrome in the clinical setting. We propose several concrete next steps to keep research moving toward detecting frailty with biomarker‐based detection methods.

Funder

National Center for Advancing Translational Sciences

Publisher

Wiley

Subject

Cell Biology,Aging

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