Artificial Intelligence and Computational Approaches for Epilepsy.

Journal of epilepsy research Pub Date : 2020-06-30 eCollection Date: 2020-06-01 DOI:10.14581/jer.20003
Sora An, Chaewon Kang, Hyang Woon Lee
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引用次数: 25

Abstract

Studies on treatment of epilepsy have been actively conducted in multiple avenues, but there are limitations in improving its efficacy due to between-subject variability in which treatment outcomes vary from patient to patient. Accordingly, there is a growing interest in precision medicine that provides accurate diagnosis for seizure types and optimal treatment for an individual epilepsy patient. Among these approaches, computational studies making this feasible are rapidly progressing in particular and have been widely applied in epilepsy. These computational studies are being conducted in two main streams: 1) artificial intelligence-based studies implementing computational machines with specific functions, such as automatic diagnosis and prognosis prediction for an individual patient, using machine learning techniques based on large amounts of data obtained from multiple patients and 2) patient-specific modeling-based studies implementing biophysical in-silico platforms to understand pathological mechanisms and derive the optimal treatment for each patient by reproducing the brain network dynamics of the particular patient per se based on individual patient's data. These computational approaches are important as it can integrate multiple types of data acquired from patients and analysis results into a single platform. If these kinds of methods are efficiently operated, it would suggest a novel paradigm for precision medicine.

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癫痫的人工智能和计算方法。
治疗癫痫的研究已经从多种途径积极开展,但由于受试者之间的差异,治疗结果因患者而异,在提高疗效方面存在局限性。因此,人们对精确医学越来越感兴趣,这种医学可以为癫痫患者提供准确的癫痫类型诊断和最佳治疗。在这些方法中,使其可行的计算研究正在迅速发展,并已广泛应用于癫痫。这些计算研究主要分为两大类:1)基于人工智能的研究,实现具有特定功能的计算机器,如对个体患者的自动诊断和预后预测;使用基于从多个患者获得的大量数据的机器学习技术和2)基于患者特定建模的研究,实现生物物理芯片平台,以了解病理机制,并通过基于个体患者数据复制特定患者本身的大脑网络动态,为每位患者获得最佳治疗。这些计算方法很重要,因为它可以将从患者获得的多种类型的数据和分析结果集成到单个平台中。如果这些方法有效地运作,它将为精准医疗提供一个新的范例。
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