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A Robust e-Epidemiology Tool in Phenotyping Heart Failure with Differentiation for Preserved and Reduced Ejection Fraction: the Electronic Medical Records and Genomics (eMERGE) Network.


ABSTRACT: Identifying populations of heart failure (HF) patients is paramount to research efforts aimed at developing strategies to effectively reduce the burden of this disease. The use of electronic medical record (EMR) data for this purpose is challenging given the syndromic nature of HF and the need to distinguish HF with preserved or reduced ejection fraction. Using a gold standard cohort of manually abstracted cases, an EMR-driven phenotype algorithm based on structured and unstructured data was developed to identify all the cases. The resulting algorithm was executed in two cohorts from the Electronic Medical Records and Genomics (eMERGE) Network with a positive predictive value of >95 %. The algorithm was expanded to include three hierarchical definitions of HF (i.e., definite, probable, possible) based on the degree of confidence of the classification to capture HF cases in a whole population whereby increasing the algorithm utility for use in e-Epidemiologic research.

SUBMITTER: Bielinski SJ 

PROVIDER: S-EPMC4651838 | biostudies-literature | 2015 Nov

REPOSITORIES: biostudies-literature

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A Robust e-Epidemiology Tool in Phenotyping Heart Failure with Differentiation for Preserved and Reduced Ejection Fraction: the Electronic Medical Records and Genomics (eMERGE) Network.

Bielinski Suzette J SJ   Pathak Jyotishman J   Carrell David S DS   Takahashi Paul Y PY   Olson Janet E JE   Larson Nicholas B NB   Liu Hongfang H   Sohn Sunghwan S   Wells Quinn S QS   Denny Joshua C JC   Rasmussen-Torvik Laura J LJ   Pacheco Jennifer Allen JA   Jackson Kathryn L KL   Lesnick Timothy G TG   Gullerud Rachel E RE   Decker Paul A PA   Pereira Naveen L NL   Ryu Euijung E   Dart Richard A RA   Peissig Peggy P   Linneman James G JG   Jarvik Gail P GP   Larson Eric B EB   Bock Jonathan A JA   Tromp Gerard C GC   de Andrade Mariza M   Roger Véronique L VL  

Journal of cardiovascular translational research 20150721 8


Identifying populations of heart failure (HF) patients is paramount to research efforts aimed at developing strategies to effectively reduce the burden of this disease. The use of electronic medical record (EMR) data for this purpose is challenging given the syndromic nature of HF and the need to distinguish HF with preserved or reduced ejection fraction. Using a gold standard cohort of manually abstracted cases, an EMR-driven phenotype algorithm based on structured and unstructured data was dev  ...[more]

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