A support vector machine classifier accurately detected cardiac arrest-associated agonal breathing from audio with an area under the curve of 0.9993, achieving 97.24% sensitivity and 99.51% specificity.
Observational (n=209)
No
Audio recordings from 162 9-1-1 calls of cardiac arrest, 12 sleep lab patients, and 35 real-world sleeping individuals used to train and validate a machine learning classifier for agonal breathing.
Support vector machine (SVM) classifier vs Ambient household noise and sleep audio
Area under the curve (AUC) for classifying agonal breathing instances — AUC 0.9993 ± 0.0003
Effect estimate: AUC 0.9993 ± 0.0003
Out-of-hospital cardiac arrest is a leading cause of death worldwide. Rapid diagnosis and initiation of cardiopulmonary resuscitation (CPR) is the cornerstone of therapy for victims of cardiac arrest. Yet a significant fraction of cardiac arrest victims have no chance of survival because they experience an unwitnessed event, often in the privacy of their own homes. An under-appreciated diagnostic element of cardiac arrest is the presence of agonal breathing, an audible biomarker and brainstem reflex that arises in the setting of severe hypoxia. Here, we demonstrate that a support vector machine (SVM) can classify agonal breathing instances in real-time within a bedroom environment. Using real-world labeled 9-1-1 audio of cardiac arrests, we train the SVM to accurately classify agonal breathing instances. We obtain an area under the curve (AUC) of 0.9993 ± 0.0003 and an operating point with an overall sensitivity and specificity of 97.24% (95% CI: 96.86-97.61%) and 99.51% (95% CI: 99.35-99.67%). We achieve a false positive rate between 0 and 0.14% over 82 h (117,985 audio segments) of polysomnographic sleep lab data that includes snoring, hypopnea, central, and obstructive sleep apnea events. We also evaluate our classifier in home sleep environments: the false positive rate was 0-0.22% over 164 h (236,666 audio segments) of sleep data collected across 35 different bedroom environments. We prototype our proof-of-concept contactless system using commodity smart devices (Amazon Echo and Apple iPhone) and demonstrate its effectiveness in identifying cardiac arrest-associated agonal breathing instances played over the air.
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Justin Chan
Carnegie Mellon University
Thomas D. Rea
Public Health – Seattle & King County
Shyamnath Gollakota
University of Washington
npj Digital Medicine
University of Washington
Public Health – Seattle & King County
King County Medical Examiner's Office
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Chan et al. (Wed,) conducted a observational in Out-of-hospital cardiac arrest (agonal breathing) (n=209). Support vector machine (SVM) classifier vs. Ambient household noise and sleep audio was evaluated on Area under the curve (AUC) for classifying agonal breathing instances (AUC 0.9993 ± 0.0003). A support vector machine classifier accurately detected cardiac arrest-associated agonal breathing from audio with an area under the curve of 0.9993, achieving 97.24% sensitivity and 99.51% specificity.
synapsesocial.com/papers/6a205bdb77803e985598fc1f — DOI: https://doi.org/10.1038/s41746-019-0128-7