机器学习和人工智能在癫痫中的应用:对癫痫执业医师的回顾。

IF 4.8 2区 医学 Q1 CLINICAL NEUROLOGY Current Neurology and Neuroscience Reports Pub Date : 2023-12-01 Epub Date: 2023-12-07 DOI:10.1007/s11910-023-01318-7
Wesley T Kerr, Katherine N McFarlane
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引用次数: 0

摘要

回顾目的:机器学习(ML)和人工智能(AI)是数据驱动技术,将原始数据转化为可应用和可解释的见解,有助于临床决策。其中一些工具有非常有希望的初步结果,赢得了极大的兴奋和炒作。这篇非技术文章回顾了癫痫中ML/AI的最新发展,以帮助当前执业的癫痫学家了解将ML/AI工具整合到临床实践中的好处和局限性。最近的发现:ML/AI工具已经开发出来,以协助临床医生几乎所有的临床决策,包括(1)预测高危人群未来的癫痫,(2)检测和监测癫痫发作,(3)区分癫痫和模仿,(4)使用数据来改善神经解剖定位和侧化,以及(5)跟踪和预测对医疗和手术治疗的反应。我们还讨论了ML/AI工具(包括基于大型语言模型(例如ChatGPT)的聊天机器人)的开发和应用中的实践,道德和公平考虑因素。ML/AI工具将改变临床医学的实践方式,但除了极少数例外,这些方法的可转移性、有效性和安全性尚未严格建立。未来,ML/AI不会取代癫痫病医生,但有ML/AI的癫痫病医生会取代没有ML/AI的癫痫病医生。
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Machine Learning and Artificial Intelligence Applications to Epilepsy: a Review for the Practicing Epileptologist.

Purpose of review: Machine Learning (ML) and Artificial Intelligence (AI) are data-driven techniques to translate raw data into applicable and interpretable insights that can assist in clinical decision making. Some of these tools have extremely promising initial results, earning both great excitement and creating hype. This non-technical article reviews recent developments in ML/AI in epilepsy to assist the current practicing epileptologist in understanding both the benefits and limitations of integrating ML/AI tools into their clinical practice.

Recent findings: ML/AI tools have been developed to assist clinicians in almost every clinical decision including (1) predicting future epilepsy in people at risk, (2) detecting and monitoring for seizures, (3) differentiating epilepsy from mimics, (4) using data to improve neuroanatomic localization and lateralization, and (5) tracking and predicting response to medical and surgical treatments. We also discuss practical, ethical, and equity considerations in the development and application of ML/AI tools including chatbots based on Large Language Models (e.g., ChatGPT). ML/AI tools will change how clinical medicine is practiced, but, with rare exceptions, the transferability to other centers, effectiveness, and safety of these approaches have not yet been established rigorously. In the future, ML/AI will not replace epileptologists, but epileptologists with ML/AI will replace epileptologists without ML/AI.

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来源期刊
CiteScore
9.20
自引率
0.00%
发文量
73
审稿时长
6-12 weeks
期刊介绍: Current Neurology and Neuroscience Reports provides in-depth review articles contributed by international experts on the most significant developments in the field. By presenting clear, insightful, balanced reviews that emphasize recently published papers of major importance, the journal elucidates current and emerging approaches to the diagnosis, treatment, management, and prevention of neurological disease and disorders. Presents the views of experts on current advances in neurology and neuroscience Gathers and synthesizes important recent papers on the topic Includes reviews of recently published clinical trials, valuable web sites, and commentaries from well-known figures in the field.
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