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首页> 外文期刊>Epilepsia: Journal of the International League against Epilepsy >Automated analysis of seizure semiology and brain electrical activity in presurgery evaluation of epilepsy: A focused survey
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Automated analysis of seizure semiology and brain electrical activity in presurgery evaluation of epilepsy: A focused survey

机译:癫痫患者癫痫评价中癫痫发作颌面学和脑电活动的自动分析:专注调查

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Summary Epilepsy being one of the most prevalent neurological disorders, affecting approximately 50 million people worldwide, and with almost 30–40% of patients experiencing partial epilepsy being nonresponsive to medication, epilepsy surgery is widely accepted as an effective therapeutic option. Presurgical evaluation has advanced significantly using noninvasive techniques based on video monitoring, neuroimaging, and electrophysiological and neuropsychological tests; however, certain clinical settings call for invasive intracranial recordings such as stereoelectroencephalography (SEEG), aiming to accurately map the eloquent brain networks involved during a seizure. Most of the current presurgical evaluation procedures focus on semiautomatic techniques, where surgery diagnosis relies immensely on neurologists’ experience and their time‐consuming subjective interpretation of semiology or the manifestations of epilepsy and their correlation with the brain's electrical activity. Because surgery misdiagnosis reaches a rate of 30%, and more than one‐third of all epilepsies are poorly understood, there is an evident keen interest in improving diagnostic precision using computer‐based methodologies that in the past few years have shown near‐human performance. Among them, deep learning has excelled in many biological and medical applications, but has advanced insufficiently in epilepsy evaluation and automated understanding of neural bases of semiology. In this paper, we systematically review the automatic applications in epilepsy for human motion analysis, brain electrical activity, and the anatomoelectroclinical correlation to attribute anatomical localization of the epileptogenic network to distinctive epilepsy patterns. Notably, recent advances in deep learning techniques will be investigated in the contexts of epilepsy to address the challenges exhibited by traditional machine learning techniques. Finally, we discuss and propose future research on epilepsy surgery assessment that can jointly learn across visually observed semiologic patterns and recorded brain electrical activity.
机译:综述癫痫是最普遍的神经系统疾病之一,影响全世界约有5000万人,近30-40%的患者患有部分癫痫患者不符合药物,癫痫手术被广泛接受为有效的治疗选择。预设评估利用基于视频监测,神经影像学和电生理学和神经心理学测试的非侵入性技术进行了显着提高;然而,某些临床设置呼叫侵入性颅内记录,例如立体电路(SEEG),旨在准确地映射在癫痫发作期间所涉及的雄辩脑网络。目前的大多数预设评估程序专注于半自动技术,外科诊断依赖于神经泌素的经验及其耗时的主观解释嗜哪些语言或癫痫的表现及其与大脑电气活动的相关性。由于手术误诊率达到30%的速度,而且所有癫痫的三分之一都较差,因此有明显的敏锐兴趣使用基于计算机的方法改善诊断精度,在过去几年中表现出近乎人类的性能。其中,深入学习在许多生物和医学应用中表现出色,但在癫痫评估和自动理解神经基础的神经基础上具有晚期。在本文中,我们系统地审查癫痫中的自动应用,用于人类运动分析,脑电活动和解剖电路相关,与癫痫网络的属性解剖定位到独特的癫痫模式。值得注意的是,在癫痫的背景下,将在癫痫的背景下调查深度学习技术的最新进展,以解决传统机器学习技术呈现的挑战。最后,我们讨论并提出了对癫痫手术评估的未来研究,可以在视觉上观察到的脑膜模式和记录的脑电活动中共同学习。

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