CVMay 16, 2016

Heart Beat Characterization from Ballistocardiogram Signals using Extended Functions of Multiple Instances

arXiv:1605.04634v117 citations
Originality Incremental advance
AI Analysis

This work addresses heartbeat characterization for individuals using bed sensors, but it is incremental as it builds on prior multiple instance learning techniques.

The paper tackles the problem of learning personalized heartbeat patterns from ballistocardiogram (BCG) signals using an extended multiple instance learning method (eFUMI), which models signal uncertainty and achieves more representative and discriminative prototypes compared to existing methods.

A multiple instance learning (MIL) method, extended Function of Multiple Instances ($e$FUMI), is applied to ballistocardiogram (BCG) signals produced by a hydraulic bed sensor. The goal of this approach is to learn a personalized heartbeat "concept" for an individual. This heartbeat concept is a prototype (or "signature") that characterizes the heartbeat pattern for an individual in ballistocardiogram data. The $e$FUMI method models the problem of learning a heartbeat concept from a BCG signal as a MIL problem. This approach elegantly addresses the uncertainty inherent in a BCG signal e. g., misalignment between training data and ground truth, mis-collection of heartbeat by some transducers, etc. Given a BCG training signal coupled with a ground truth signal (e.g., a pulse finger sensor), training "bags" labeled with only binary labels denoting if a training bag contains a heartbeat signal or not can be generated. Then, using these bags, $e$FUMI learns a personalized concept of heartbeat for a subject as well as several non-heartbeat background concepts. After learning the heartbeat concept, heartbeat detection and heart rate estimation can be applied to test data. Experimental results show that the estimated heartbeat concept found by $e$FUMI is more representative and a more discriminative prototype of the heartbeat signals than those found by comparison MIL methods in the literature.

Foundations

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