Prediction of Left Ventricle Pressure Indices Via a Machine Learning Approach Combining ECG, Pulse Oximetry, and Cardiac Sounds: a Preclinical Feasibility Study

J Cardiovasc Transl Res. 2024 Dec;17(6):1307-1315. doi: 10.1007/s12265-024-10546-2. Epub 2024 Jul 17.

Abstract

Heart failure (HF) is defined as the inability of the heart to meet body oxygen demand requiring an elevation in left ventricular filling pressures (LVP) to compensate. LVP increase can be assessed in the cardiac catheterization laboratory, but this procedure is invasive and time-consuming to the extent that physicians rather rely on non-invasive diagnostic tools. In this work, we assess the feasibility to develop a novel machine-learning (ML) approach to predict clinically relevant LVP indices. Synchronized invasive (pressure-volume tracings) and non-invasive signals (ECG, pulse oximetry, and cardiac sounds) were collected from anesthetized, closed-chest Göttingen minipigs. Animals were either healthy or had HF with reduced ejection fraction and circa 500 heartbeats were included in the analysis for each animal. The ML algorithm showed excellent prediction of LVP indices estimating, for instance, the end-diastolic pressure with a R2 of 0.955. This novel ML algorithm could assist clinicians in the care of HF patients.

Keywords: Electronic stethoscope; HFrEF; Heart Failure; Invasive hemodynamics; Linear regression; Machine Learning; Porcine animal model.

MeSH terms

  • Animals
  • Disease Models, Animal*
  • Electrocardiography*
  • Feasibility Studies*
  • Heart Failure* / diagnosis
  • Heart Failure* / physiopathology
  • Heart Rate
  • Heart Sounds*
  • Machine Learning*
  • Oximetry*
  • Phonocardiography
  • Predictive Value of Tests*
  • Signal Processing, Computer-Assisted
  • Stroke Volume
  • Swine
  • Swine, Miniature*
  • Ventricular Function, Left*
  • Ventricular Pressure*