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Title: An Unsupervised Feature Learning Approach to Reduce False Alarm Rate in ICUs. Author: Ghazanfari B, Afghah F, Najarian K, Mousavi S, Gryak J, Todd J. Journal: Annu Int Conf IEEE Eng Med Biol Soc; 2019 Jul; 2019():349-353. PubMed ID: 31945913. Abstract: The high rate of false alarms in intensive care units (ICUs) is one of the top challenges of using medical technology in hospitals. These false alarms are often caused by patients' movements, detachment of monitoring sensors, or different sources of noise and interference that impact the collected signals from different monitoring devices. In this paper, we propose a novel set of high-level features based on unsupervised feature learning technique in order to effectively capture the characteristics of different arrhythmia in electrocardiogram (ECG) signal and differentiate them from irregularity in signals due to different sources of signal disturbances. This unsupervised feature learning technique, first extracts a set of low-level features from all existing heart cycles of a patient, and then clusters these segments for each individual patient to provide a set of prominent high-level features. The objective of the clustering phase is to enable the classification method to differentiate between the high-level features extracted from normal and abnormal cycles (i.e., either due to arrhythmia or different sources of distortions in signal) in order to put more attention to the features extracted from abnormal portion of the signal that contribute to the alarm.[Abstract] [Full Text] [Related] [New Search]