计算机科学
癫痫
机器学习
人工智能
列线图
医学
精神科
内科学
作者
Shehryar Sheikh,Lara Jehi
标识
DOI:10.1097/wco.0000000000001241
摘要
Purpose of review Multiple complex medical decisions are necessary in the course of a chronic disease like epilepsy. Predictive tools to assist physicians and patients in navigating this complexity have emerged as a necessity and are summarized in this review. Recent findings Nomograms and online risk calculators are user-friendly and offer individualized predictions for outcomes ranging from safety of antiseizure medication withdrawal (accuracy 65–73%) to seizure-freedom, naming, mood, and language outcomes of resective epilepsy surgery (accuracy 72–81%). Improving their predictive performance is limited by the nomograms’ inability to ingest complex data inputs. Conversely, machine learning offers the potential of multimodal and expansive model inputs achieving human-expert level accuracy in automated scalp electroencephalogram (EEG) interpretation but lagging in predictive performance or requiring validation for other applications. Summary Good to excellent predictive models are now available to guide medical and surgical epilepsy decision-making with nomograms offering individualized predictions and user-friendly tools, and machine learning approaches offering the potential of improved performance. Future research is necessary to bridge the two approaches for optimal translation to clinical care.
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