The Lock Generative Adversarial Network for Medical Waveform Anomaly Detection
Journal:
arXiv
Published Date:
Jan 23, 2025
Abstract
Waveform signal analysis is a complex and important task in medical care. For
example, mechanical ventilators are critical life-support machines, but they
can cause serious injury to patients if they are out of synchronization with
the patients' own breathing reflex. This asynchrony is revealed by the
waveforms showing flow and pressure histories. Likewise, electrocardiograms
record the electrical activity of a patients' heart as a set of waveforms, and
anomalous waveforms can reveal important disease states. In both cases, subtle
variations in a complex waveform are important information for patient care;
signals which may be missed or mis-interpreted by human caregivers.
We report on the design of a novel Lock Generative Adversarial Network
architecture for anomaly detection in raw or summarized medical waveform data.
The proposed architecture uses alternating optimization of the generator and
discriminator networks to solve the convergence dilemma. Furthermore, the
fidelity of the generator networks' outputs to the actual distribution of
anomalous data is improved via synthetic minority oversampling. We evaluate
this new architecture on one ventilator asynchrony dataset, and two
electrocardiogram datasets, finding that the performance was either equal or
superior to the state-of-the art on all three.