Do machine learning methods improve prognostication and identify clinically distinct phenotypes with heterogeneous responses to therapy in heart failure patients?
Large cohort of heart failure (HF) patients
Machine learning algorithms and cluster analysis
Predicted outcomes and identification of distinct phenotypes
Machine learning and cluster analysis can identify distinct heart failure phenotypes with differing outcomes and therapeutic responses, potentially transforming future clinical trials.
Background: Whereas heart failure ( HF ) is a complex clinical syndrome, conventional approaches to its management have treated it as a singular disease, leading to inadequate patient care and inefficient clinical trials. We hypothesized that applying advanced analytics to a large cohort of HF patients would improve prognostication of outcomes, identify distinct patient phenotypes, and detect heterogeneity in treatment response. Methods and Results: The Swedish Heart Failure Registry is a nationwide registry collecting detailed demographic, clinical, laboratory, and medication data and linked to databases with outcome information. We applied random forest modeling to identify predictors of 1‐year survival. Cluster analysis was performed and validated using serial bootstrapping. Association between clusters and survival was assessed with Cox proportional hazards modeling and interaction testing was performed to assess for heterogeneity in response to HF pharmacotherapy across propensity‐matched clusters. Our study included 44 886 HF patients enrolled in the Swedish Heart Failure Registry between 2000 and 2012. Random forest modeling demonstrated excellent calibration and discrimination for survival (C‐statistic=0.83) whereas left ventricular ejection fraction did not (C‐statistic=0.52): there were no meaningful differences per strata of left ventricular ejection fraction (1‐year survival: 80%, 81%, 83%, and 84%). Cluster analysis using the 8 highest predictive variables identified 4 clinically relevant subgroups of HF with marked differences in 1‐year survival. There were significant interactions between propensity‐matched clusters (across age, sex, and left ventricular ejection fraction and the following medications: diuretics, angiotensin‐converting enzyme inhibitors, β‐blockers, and nitrates, P <0.001, all). Conclusions: Machine learning algorithms accurately predicted outcomes in a large data set of HF patients. Cluster analysis identified 4 distinct phenotypes that differed significantly in outcomes and in response to therapeutics. Use of these novel analytic approaches has the potential to enhance effectiveness of current therapies and transform future HF clinical trials.
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Tariq Ahmad
General Cardiology
Lars H. Lund
Heart Failure & Transplant
Pooja Rao
German Center for Neurodegenerative Diseases
SHILAP Revista de lepidopterología
Journal of the American Heart Association
Yale University
Duke University
Karolinska Institutet
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Ahmad et al. (Thu,) studied this question.
synapsesocial.com/papers/69a7093c29072a375df32c20 — DOI: https://doi.org/10.1161/jaha.117.008081
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