Application of an electronic Frailty Index in Australian primary care: data quality and feasibility assessment

Male 111717 Primary Health Care Frail Elderly 2717 Geriatrics and Gerontology FOS: Health sciences 1302 Ageing 310 03 medical and health sciences 0302 clinical medicine 80 and over Prevalence Electronic health records Electronic Health Records Humans 111702 Aged Health Care Geriatric Assessment Primary health care Aged Aged, 80 and over Frailty Primary Health Care Australia Geriatric assessment 3. Good health Ageing 111709 Health Care Administration Feasibility Studies Female Geriatrics and Gerontology
DOI: 10.1007/s40520-018-1023-9 Publication Date: 2018-08-20T23:53:24Z
ABSTRACT
BackgroundThe primary care setting is the ideal location for identifying the condition of frailty in older adults.AimsThe aim of this pragmatic study was twofold: (1) to identify data items to extract the data required for an electronic Frailty Index (eFI) from electronic health records (EHRs); and (2) test the ability of an eFI to accurately and feasibly identify frailty in older adults.MethodsIn a rural South Australian primary care clinic, we derived an eFI from routinely collected EHRs using methodology described by Clegg et al. We assessed feasibility and accuracy of the eFI, including complexities in data extraction. The reference standard for comparison was Fried’s frailty phenotype.ResultsThe mean (SD) age of participants was 80.2 (4.8) years, with 36 (60.0%) female (n = 60). Frailty prevalence was 21.7% by Fried’s frailty phenotype, and 35.0% by eFI (scores > 0.21). When deriving the eFI, 85% of EHRs were perceived as easy or neutral difficulty to extract the required data from. Complexities in data extraction were present in EHRs of patients with multiple health problems and/or where the majority of data items were located other than on the patient’s summary problem list.DiscussionThis study demonstrated that it is entirely feasible to extract an eFI from routinely collected Australian primary care data. We have outlined a process for extracting an eFI from EHRs without needing to modify existing infrastructure. Results from this study can inform the development of automated eFIs, including which data items to best access data from.
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