Identifying dementia cases with routinely collected health data: A systematic review 论文

2018Alzheimer s & Dementia引用 273
Dementia and Cognitive Impairment ResearchMachine Learning in HealthcareMedical Coding and Health Information

详细信息

发表期刊/会议
Alzheimer s & Dementia
发表日期
2018-04-02
发表年份
2018

关键词

Dementia and Cognitive Impairment ResearchMachine Learning in HealthcareMedical Coding and Health Information

摘要

INTRODUCTION: Prospective, population-based studies can be rich resources for dementia research. Follow-up in many such studies is through linkage to routinely collected, coded health-care data sets. We evaluated the accuracy of these data sets for dementia case identification. METHODS: We systematically reviewed the literature for studies comparing dementia coding in routinely collected data sets to any expert-led reference standard. We recorded study characteristics and two accuracy measures-positive predictive value (PPV) and sensitivity. RESULTS: We identified 27 eligible studies with 25 estimating PPV and eight estimating sensitivity. Study settings and methods varied widely. For all-cause dementia, PPVs ranged from 33%-100%, but 16/27 were >75%. Sensitivities ranged from 21% to 86%. PPVs for Alzheimer's disease (range 57%-100%) were generally higher than those for vascular dementia (range 19%-91%). DISCUSSION: Linkage to routine health-care data can achieve a high PPV and reasonable sensitivity in certain settings. Given the heterogeneity in accuracy estimates, cohorts should ideally conduct their own setting-specific validation.