Machine Learned Cellular Phenotypes in Cardiomyopathy Predict Sudden Death

  • Albert J Rogers
  • Anojan Selvalingam
  • Mahmood I Alhusseini
  • David E Krummen
  • Cesare Corrado
  • Firas Abuzaid
  • Tina Baykaner
  • Christian Meyer
  • Paul Clopton
  • Wayne Giles
  • Peter Bailis
  • Steven Niederer
  • Paul J Wang
  • Wouter-Jan Rappel
  • Matei Zaharia
  • Sanjiv M Narayan

Beteiligte Einrichtungen

Abstract

RATIONALE: Susceptibility to VT/VF (ventricular tachycardia/fibrillation) is difficult to predict in patients with ischemic cardiomyopathy either by clinical tools or by attempting to translate cellular mechanisms to the bedside.

OBJECTIVE: To develop computational phenotypes of patients with ischemic cardiomyopathy, by training then interpreting machine learning of ventricular monophasic action potentials (MAPs) to reveal phenotypes that predict long-term outcomes.

METHODS AND RESULTS: We recorded 5706 ventricular MAPs in 42 patients with coronary artery disease and left ventricular ejection fraction ≤40% during steady-state pacing. Patients were randomly allocated to independent training and testing cohorts in a 70:30 ratio, repeated K=10-fold. Support vector machines and convolutional neural networks were trained to 2 end points: (1) sustained VT/VF or (2) mortality at 3 years. Support vector machines provided superior classification. For patient-level predictions, we computed personalized MAP scores as the proportion of MAP beats predicting each end point. Patient-level predictions in independent test cohorts yielded c-statistics of 0.90 for sustained VT/VF (95% CI, 0.76-1.00) and 0.91 for mortality (95% CI, 0.83-1.00) and were the most significant multivariate predictors. Interpreting trained support vector machine revealed MAP morphologies that, using in silico modeling, revealed higher L-type calcium current or sodium-calcium exchanger as predominant phenotypes for VT/VF.

CONCLUSIONS: Machine learning of action potential recordings in patients revealed novel phenotypes for long-term outcomes in ischemic cardiomyopathy. Such computational phenotypes provide an approach which may reveal cellular mechanisms for clinical outcomes and could be applied to other conditions.

Bibliografische Daten

OriginalspracheEnglisch
ISSN0009-7330
DOIs
StatusVeröffentlicht - 22.01.2021
PubMed 33167779