Parsing Wireless Electrocardiogram Signals with Context Free Grammar Conditional Random Fields

Thai Nguyen1, Roy Adams1, Annamalai Natarajan1, Benjamin Marlin1

  • 1University of Massachusetts, Amherst

Details

11:30 - 11:45 | Thu 27 Oct | Main Auditorium | ThAT1.4

Session: Technical Session 4: Heart Health in Wireless

Abstract

Recent advances in wearable sensor technology have made it possible to simultaneously collect multiple streams of physiological and context data from individuals as they go about their daily activities in natural environments. However, extracting reliable higher-level inferences from these raw data streams remains a key data analysis challenge. In this paper, we focus on the specific case of the analysis of data from wireless electrocardiogram (ECG) sensors. We present a new robust probabilistic approach to ECG morphology extraction using conditional random field context free grammar models, which have traditionally been applied to parsing problems in natural language processing. We focus on ECG morphology extraction because it is a key first step in high-level tasks like the detection of drug use and arrhythmia. We introduce a robust context free grammar for parsing noisy ECG data, and show significantly improved performance on the ECG morphological labeling task.