Abstract 162: Heart Failure Phenotyping: A Set Theory Based Approach to Identify Patients With Heart Failure

Circulation-cardiovascular Quality and Outcomes(2016)

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摘要
Background: Electronic Health Records (EHRs) and other databases are increasingly used to identify patients with clinical conditions such as heart failure (HF). This process, called phenotyping, has a number of uses including in quality improvement measurement, observational studies, and targeted disease management interventions. To date, patients with HF have largely been identified through diagnosis codes; however, this approach has limitations in sensitivity and positive predictive value (PPV). We hypothesized that we could improve phenotyping of hospitalized patients with HF through use of three readily accessible EHR variables.Methods: We conducted a cohort study of all hospitalizations at NYU Medical Center for patients age≥18 in 2012-2014. Hospitalizations were categorized into eight mutually exclusive groups based on the presence or absence of three characteristics: discharge diagnosis of HF, an echocardiogram performed, and loop diuretic administered. To maintain simplicity, we did not use echocardiogram results which are in free text. We randomly sampled a minimum number of charts from each group and performed physician chart review for diagnosis of HF based on the Atherosclerosis Risk in Communities (ARIC) Study criteria. We used a set theory approach to calculate performance characteristics for pre-specified combinations of groups. We calculated variances using the delta method and compared algorithms using Z tests.Results: We included 41,349 hospitalizations in the study. Of 315 that were sampled for chart review, 47% (148 of 315) were adjudicated as having acute or chronic HF. Using this gold standard, we found that a discharge diagnosis of HF had a sensitivity of 71.4% and PPV of 92.2% (Table). The presence of at least one of the three characteristics was associated with a sensitivity of 95.9% but PPV of 37.4% (pu003c0.001 for both when compared to discharge diagnosis only).Conclusions: We found a discharge diagnosis code for HF was associated with moderate sensitivity and high PPV. Related algorithms improved sensitivity but had lower PPV. These findings suggest that more complex algorithms are needed to improve EHR-based HF phenotyping. ![][1] [1]: /embed/graphic-1.gif
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