Optimizing Point-of-Care Ultrasound Video Acquisition for Probabilistic Multi-Task Heart Failure Detection
Armin Saadat, Nima Hashemi, Bahar Khodabakhshian, Michael Y. Tsang, Christina Luong, Teresa S.M. Tsang, Purang Abolmaesumi

TL;DR
This paper presents a reinforcement learning-based method for optimizing point-of-care ultrasound video acquisition, enabling cost-effective and accurate heart failure assessment by selecting views adaptively.
Contribution
It introduces a personalized, cost-aware acquisition strategy using RL and multi-task inference, reducing video acquisition by 32% while maintaining diagnostic accuracy.
Findings
Achieved 77.2% mean balanced accuracy on test set
Reduced video acquisition by 32% compared to full study
Demonstrated robust multi-task performance with fewer videos
Abstract
Purpose: Echocardiography with point-of-care ultrasound (POCUS) must support clinical decision-making under tight bedside time and operator-effort constraints. We introduce a personalized data acquisition strategy in which an RL agent, given a partially observed multi-view study, selects the next view to acquire or terminates acquisition to support heart-failure (HF) assessment. Upon termination, a diagnostic model jointly predicts aortic stenosis (AS) severity and left ventricular ejection fraction (LVEF), two key HF biomarkers, and outputs uncertainty, enabling an explicit trade-off between diagnostic performance and acquisition cost. Methods: We model POCUS as a sequential acquisition problem: at each step, a video selector (RL agent) chooses the next view to acquire or terminates acquisition. Upon termination, a shared multi-view transformer performs multi-task inference with two…
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Taxonomy
TopicsUltrasound in Clinical Applications · Cardiovascular Function and Risk Factors · Phonocardiography and Auscultation Techniques
