Department of Informatics, Bioengineering, Robotics, and Systems Engineering (DIBRIS), University of Genoa, Genoa, Italy.
Machine Learning Genoa (MaLGa) Center, University of Genoa, Genoa, Italy.
Epilepsia. 2023 Jun;64(6):1653-1662. doi: 10.1111/epi.17605. Epub 2023 Apr 16.
Sleep-related hypermotor epilepsy (SHE) is a focal epilepsy with seizures occurring mostly during sleep. SHE seizures present different motor characteristics ranging from dystonic posturing to hyperkinetic motor patterns, sometimes associated with affective symptoms and complex behaviors. Disorders of arousal (DOA) are sleep disorders with paroxysmal episodes that may present analogies with SHE seizures. Accurate interpretation of the different SHE patterns and their differentiation from DOA manifestations can be difficult and expensive, and can require highly skilled personnel not always available. Furthermore, it is operator dependent.
Common techniques for human motion analysis, such as wearable sensors (e.g., accelerometers) and motion capture systems, have been considered to overcome these problems. Unfortunately, these systems are cumbersome and they require trained personnel for marker and sensor positioning, limiting their use in the epilepsy domain. To overcome these problems, recently significant effort has been spent in studying automatic methods based on video analysis for the characterization of human motion. Systems based on computer vision and deep learning have been exploited in many fields, but epilepsy has received limited attention.
In this paper, we present a pipeline composed of a set of three-dimensional convolutional neural networks that, starting from video recordings, reached an overall accuracy of 80% in the classification of different SHE semiology patterns and DOA.
The preliminary results obtained in this study highlight that our deep learning pipeline could be used by physicians as a tool to support them in the differential diagnosis of the different patterns of SHE and DOA, and encourage further investigation.
睡眠相关运动性癫痫(SHE)是一种局灶性癫痫,其发作主要发生在睡眠期间。SHE 发作表现出不同的运动特征,从扭曲姿势到多动运动模式不等,有时伴有情感症状和复杂行为。觉醒障碍(DOA)是一种睡眠障碍,其阵发性发作可能与 SHE 发作相似。准确解释不同的 SHE 模式及其与 DOA 表现的区别可能很困难且费用高昂,并且可能需要高技能人员,而这些人员并不总是可用的。此外,这还取决于操作人员。
已经考虑了用于人体运动分析的常见技术,例如可穿戴传感器(例如加速度计)和运动捕捉系统,以克服这些问题。不幸的是,这些系统繁琐,并且需要经过培训的人员来定位标记和传感器,这限制了它们在癫痫领域的使用。为了克服这些问题,最近在研究基于视频分析的自动方法方面做出了很大努力,以用于人体运动的特征描述。基于计算机视觉和深度学习的系统已在许多领域得到了广泛应用,但在癫痫领域却受到了有限的关注。
在本文中,我们提出了一个由一组三维卷积神经网络组成的管道,该管道从视频记录开始,在对不同的 SHE 半表型和 DOA 进行分类时达到了 80%的总体准确性。
本研究中获得的初步结果表明,我们的深度学习管道可以被医生用作辅助工具,以帮助他们对不同类型的 SHE 和 DOA 进行鉴别诊断,并鼓励进一步研究。