SmartPrognosis: Automatic ensemble classification for quantitative EEG analysis in patients resuscitated from cardiac arrest
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摘要
Understanding a patient’s current status, anticipated clinical course, and likely outcomes can be critical to the practice of medicine. Among patients who are comatose after resuscitation from cardiac arrest, identifying those with potential for awakening and favorable recovery is challenging. Currently, this task is accomplished through the acquisition of one or more diagnostic modalities that aim to assess brain function, with expert interpretation of the test results. This approach is subjective, imprecise, and not scalable. We propose an automatic ensemble classification framework, named SmartPrognosis, to identify comatose post-arrest patients with no recovery potential. SmartPrognosis automatically generates and assembles candidate machine learning pipelines with high sensitivity predicting poor outcomes at a fixed near-zero error rate of misclassifying patients with good outcomes. We demonstrate the effectiveness of SmartPrognosis on real patient data, showing that it over-performs commonly used alternative approaches on all evaluation metrics.
论文关键词:Automatic machine learning,Ensemble learning,Cardiac arrest
论文评审过程:Received 11 August 2020, Revised 27 October 2020, Accepted 29 October 2020, Available online 21 November 2020, Version of Record 25 November 2020.
论文官网地址:https://doi.org/10.1016/j.knosys.2020.106579