Alex Gaudio

and 4 more

The detection of Pulmonary Hypertension (PH) from the computer analysis of digitized heart sounds is a low-cost and non-invasive solution for early PH detection and screening. We present an extensive cross-domain evaluation methodology with varying animals (humans and porcine animals) and varying auscultation technologies (phonocardiography and seisomocardiography) evaluated across four methods. We introduce PH-ELM, a resource efficient PH detection model based on the extreme learning machine that is smaller (300× fewer parameters), energy efficient (532× less watts of power), faster (36× faster to train, 44× faster at inference), and more accurate on outof-distribution testing (improves median accuracy by 0.07 area under the ROC curve (auROC)) in comparison to a previously best performing deep network. We make four observations from our analysis: (a) digital auscultation is a promising technology for the detection of pulmonary hypertension; (b) seismocardiography (SCG) signals and phonocardiography (PCG) signals are interchangeable to train PH detectors; (c) porcine heart sounds in the training data can be used to evaluate PH from human heart sounds (the PH-ELM model preserves 88 to 95% of the best indistribution baseline performance); (d) predictive performance of PH detection can be mostly preserved with as few as 10 heartbeats and capturing up to approximately 200 heartbeats per subject can improve performance. The results of this work may guide future methods for data collection, predictive modeling, and model evaluation towards the practical implementation of PH detectors.

Alex Gaudio

and 1 more