成人抗癫痫药物治疗选择的演变:人工智能辅助的抗癫痫药物选择准备好了吗?

IF 2.6 Q2 CLINICAL NEUROLOGY
Journal of Central Nervous System Disease Pub Date : 2023-10-18 eCollection Date: 2023-01-01 DOI:10.1177/11795735231209209
Charlene L Gunasekera, Joseph I Sirven, Anteneh M Feyissa
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引用次数: 0

摘要

抗癫痫药物(ASM)是症状性癫痫治疗的主要药物。ASM药物治疗癫痫的主要目标是实现癫痫的完全缓解,同时最大限度地减少与治疗相关的不良事件。多年来,越来越多的ASM被引入,目前约有30种在日常使用中。由于种类繁多,在选择ASM进行初始治疗、随后的替代单药治疗或辅助治疗时需要大量指导。特定ASM通常根据患者的相关因素进行定制,包括癫痫综合征、年龄、性别、合并症和ASM特征,包括疗效、药代动力学特性、安全性和耐受性。权衡这些关键的临床变量需要有限的经验和专业知识。此外,在找到最合适的ASM之前,采用这种方法,患者可能会经历多次无效治疗的试验。需要一种更可靠的方法来预测对不同ASM的反应,以便选择最有效和最耐受的ASM。很快,替代方法,如深度机器学习(ML),可以帮助个性化选择第一个和随后的ASM。将癫痫识别为一种网络障碍,并在未来的ML平台中集成个性化癫痫网络,也可以促进ASM反应的预测。用人工智能(AI)增强传统方法为癫痫的个性化药物治疗打开了大门。然而,在这些模型为黄金时段的临床实践做好准备之前,还需要做更多的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

The evolution of antiseizure medication therapy selection in adults: Is artificial intelligence -assisted antiseizure medication selection ready for prime time?

The evolution of antiseizure medication therapy selection in adults: Is artificial intelligence -assisted antiseizure medication selection ready for prime time?

The evolution of antiseizure medication therapy selection in adults: Is artificial intelligence -assisted antiseizure medication selection ready for prime time?

The evolution of antiseizure medication therapy selection in adults: Is artificial intelligence -assisted antiseizure medication selection ready for prime time?

Antiseizure medications (ASMs) are the mainstay of symptomatic epilepsy treatment. The primary goal of pharmacotherapy with ASMs in epilepsy is to achieve complete seizure remission while minimizing therapy-related adverse events. Over the years, more ASMs have been introduced, with approximately 30 now in everyday use. With such a wide variety, much guidance is needed in choosing ASMs for initial therapy, subsequent replacement monotherapy, or adjunctive therapy. The specific ASMs are typically tailored by the patient's related factors, including epilepsy syndrome, age, sex, comorbidities, and ASM characteristics, including the spectrum of efficacy, pharmacokinetic properties, safety, and tolerability. Weighing these key clinical variables requires experience and expertise that may be limited. Furthermore, with this approach, patients may endure multiple trials of ineffective treatments before the most appropriate ASM is found. A more reliable way to predict response to different ASMs is needed so that the most effective and tolerated ASM can be selected. Soon, alternative approaches, such as deep machine learning (ML), could aid the individualized selection of the first and subsequent ASMs. The recognition of epilepsy as a network disorder and the integration of personalized epilepsy networks in future ML platforms can also facilitate the prediction of ASM response. Augmenting the conventional approach with artificial intelligence (AI) opens the door to personalized pharmacotherapy in epilepsy. However, more work is needed before these models are ready for primetime clinical practice.

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来源期刊
CiteScore
6.90
自引率
0.00%
发文量
39
审稿时长
8 weeks
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