Frailty predicts referral for elder abuse evaluation in a nationwide healthcare system-Results from a case-control study.

TitleFrailty predicts referral for elder abuse evaluation in a nationwide healthcare system-Results from a case-control study.
Publication TypeJournal Article
Year of Publication2023
AuthorsMakaroun LK, Rosland A-M, Mor MK, Zhang H, Lovelace E, Rosen T, Dichter ME, Thorpe CT
JournalJ Am Geriatr Soc
Volume71
Issue6
Pagination1724-1734
Date Published2023 Jun
ISSN1532-5415
KeywordsAged, Case-Control Studies, Delivery of Health Care, Elder Abuse, Frail Elderly, Frailty, Humans, Medicare, United States
Abstract

BACKGROUND: Elder abuse (EA) is common and has devastating health impacts. Frailty may increase susceptibility to and consequences of EA for older adults, making healthcare system detection more likely, but this relationship has been difficult to study. We examined the association between a recently validated frailty index and referral to social work (SW) for EA evaluation in the Veterans Administration (VA) healthcare system.

METHODS: We conducted a case-control study of veterans aged ≥60 years evaluated by SW for suspected EA between 2010 and 2018 (n = 14,723) and controls receiving VA primary care services in the same 60-day window (n = 58,369). We used VA and Medicare claims data to measure frailty (VA Frailty Index) and comorbidity burden (the Elixhauser Comorbidity Index) in the 2 years prior to the index. We used adjusted logistic regression models to examine the association of frailty or comorbidity burden with referral to SW for EA evaluation. We used Akaike Information Criterion (AIC) values to evaluate model fit and likelihood ratio (LR) tests to assess the statistical significance of including frailty and comorbidity in the same model.

RESULTS: The sample (n = 73,092) had a mean age 72 years; 14% were Black, and 6% were Hispanic. More cases (67%) than controls (36%) were frail. LR tests comparing the nested models were highly significant (p < 0.001), and AIC values indicated superior model fit when including both frailty and comorbidity in the same model. In a model adjusting for comorbidity and all covariates, pre-frailty (aOR vs. robust 1.7; 95% CI 1.5-1.8) and frailty (aOR vs. robust 3.6; 95% CI 3.3-3.9) were independently associated with referral for EA evaluation.

CONCLUSIONS: A claims-based measure of frailty predicted referral to SW for EA evaluation in a national healthcare system, independent of comorbidity burden. Electronic health record measures of frailty may facilitate EA risk assessment and detection for this important but under-recognized phenomenon.

DOI10.1111/jgs.18245
Alternate JournalJ Am Geriatr Soc
PubMed ID36695515
PubMed Central IDPMC10258119
Grant ListIK2 HX003330 / HX / HSRD VA / United States
K76 AG054866 / AG / NIA NIH HHS / United States
P30 AG024827 / AG / NIA NIH HHS / United States

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