Point-of-care screening for heart failure with reduced ejection fraction using artificial intelligence during ECG-enabled stethoscope examination in London, UK: a prospective, observational, multicentre study

Jan 9, 2022The Lancet. Digital health

Using AI with ECG stethoscopes to detect heart failure with reduced pumping ability during check-ups in London

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Abstract

Among 1050 patients, AI-ECG demonstrated an AUROC of 0.91 for detecting left ventricular ejection fraction of 40% or lower.

  • AI-ECG was retrained to interpret single-lead ECGs and tested for its ability to classify reduced ejection fraction.
  • The best performance was observed at the pulmonary valve position, with an AUROC of 0.85, sensitivity of 84.8%, and specificity of 69.5%.
  • Combining AI-ECG outputs from two positions (pulmonary and handheld) improved performance to an AUROC of 0.85, sensitivity of 82.7%, and specificity of 79.9%.
  • A weighted logistic regression model using these outputs achieved an AUROC of 0.91, sensitivity of 91.9%, and specificity of 80.2%.
  • Quality of ECG recordings was highest at the pulmonary position (93.3%) and lowest at the aortic position (80.6%).

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