Treatment response to spironolactone in patients with heart failure with preserved ejection fraction: a machine learning-based analysis of two randomized controlled trialsResearch in context
Karl-Patrik Kresoja,
Matthias Unterhuber,
Rolf Wachter,
Karl-Philipp Rommel,
Christian Besler,
Sanjiv Shah,
Holger Thiele,
Frank Edelmann,
Philipp Lurz
Affiliations
Karl-Patrik Kresoja
Department of Cardiology, Heart Center Leipzig at University of Leipzig, Leipzig, Germany; Leipzig Heart Institute at Heart Center Leipzig, Leipzig, Germany
Matthias Unterhuber
Department of Cardiology, Heart Center Leipzig at University of Leipzig, Leipzig, Germany; Leipzig Heart Institute at Heart Center Leipzig, Leipzig, Germany
Rolf Wachter
Department of Cardiology, University Hospital Leipzig and Clinic for Cardiology and Pneumology, University Medicine Göttingen, Germany; German Cardiovascular Research Center (DZHK), Partner Site Göttingen, Germany
Karl-Philipp Rommel
Department of Cardiology, Heart Center Leipzig at University of Leipzig, Leipzig, Germany; Leipzig Heart Institute at Heart Center Leipzig, Leipzig, Germany
Christian Besler
Department of Cardiology, Heart Center Leipzig at University of Leipzig, Leipzig, Germany; Leipzig Heart Institute at Heart Center Leipzig, Leipzig, Germany
Sanjiv Shah
Division of Cardiology, Department of Medicine, Northwestern University Feinberg School of Medicine, USA
Holger Thiele
Department of Cardiology, Heart Center Leipzig at University of Leipzig, Leipzig, Germany; Leipzig Heart Institute at Heart Center Leipzig, Leipzig, Germany
Frank Edelmann
Department of Internal Medicine and Cardiology, Charité – Universitätsmedizin Berlin, Campus Virchow Klinikum and German Cardiovascular Research Center (DZHK), Partner Site Berlin, Germany
Philipp Lurz
Department of Cardiology, Heart Center Leipzig at University of Leipzig, Leipzig, Germany; Leipzig Heart Institute at Heart Center Leipzig, Leipzig, Germany; Corresponding author. Department of Internal Medicine/Cardiology, Heart Center Leipzig at University of Leipzig, Strümpellstraße 39, 04289, Leipzig, Germany.
Summary: Background: Whether there is a subset of patients with heart failure with preserved ejection fraction (HFpEF) that benefit from spironolactone therapy is unclear. We applied a machine learning approach to identify responders and non-responders to spironolactone among patients with HFpEF in two large randomized clinical trials. Methods: Using a reiterative cluster allocating permutation approach, patients from the derivation cohort (Aldo-DHF) were identified according to their treatment response to spironolactone with respect to improvement in E/e’. Heterogenous features of response (‘responders’ and ‘non-responders’) were characterized by an extreme gradient boosting (XGBoost) algorithm. XGBoost was used to predict treatment response in the validation cohort (TOPCAT). The primary endpoint of the validation cohort was a combined endpoint of cardiovascular mortality, aborted cardiac arrest, or heart failure hospitalization. Patients with missing variables for the XGboost model were excluded from the validation analysis. Findings: Out of 422 patients from the derivation cohort, reiterative cluster allocating permutation identified 159 patients (38%) as spironolactone responders, in whom E/e’ significantly improved (p = 0.005). Within the validation cohort (n = 525) spironolactone treatment significantly reduced the occurrence of the primary outcome among responders (n = 185, p log rank = 0.008), but not among patients in the non-responder group (n = 340, p log rank = 0.52). Interpretation: Machine learning approaches might aid in identifying HFpEF patients who are likely to show a favorable therapeutic response to spironolactone. Funding: See Acknowledgements section at the end of the manuscript.