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Machine Learning Methods Improve Prognostication, Identify Clinically Distinct Phenotypes, and Detect Heterogeneity in Response to Therapy in a Large Cohort of Heart Failure Patients
Journal article   Open access  Peer reviewed

Machine Learning Methods Improve Prognostication, Identify Clinically Distinct Phenotypes, and Detect Heterogeneity in Response to Therapy in a Large Cohort of Heart Failure Patients

Tariq Ahmad, Lars H Lund, Pooja Rao, Rohit Ghosh, Prashant Warier, Benjamin Vaccaro, Ulf Dahlström, Christopher M O'Connor, G Michael Felker and Nihar R Desai
Journal of the American Heart Association, Vol.7(8), p.n/a
17/04/2018
PMCID: PMC6015420
PMID: 29650709

Abstract

Adrenergic beta-Antagonists - therapeutic use Aged Aged, 80 and over Algorithms Angiotensin Receptor Antagonists - therapeutic use Angiotensin-Converting Enzyme Inhibitors - therapeutic use Cardiovascular Agents - therapeutic use Diuretics - therapeutic use Female Follow-Up Studies Heart Failure - diagnosis Heart Failure - drug therapy Heart Failure - epidemiology Humans Machine Learning Male Middle Aged Phenotype Prognosis Registries Reproducibility of Results Retrospective Studies Stroke Volume - physiology Survival Rate - trends Sweden - epidemiology Ventricular Function, Left - physiology
url
https://doi.org/10.1161/JAHA.117.008081View
Published (Version of record) Open

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