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基于可解释机器学习的不宁腿综合征患者工作记忆异常皮质活动特征分析。

Explainable Machine-Learning-Based Characterization of Abnormal Cortical Activities for Working Memory of Restless Legs Syndrome Patients.

机构信息

Department of Biomedical Engineering, College of Health Science, Yonsei University, 1, Yeonsedae-gil, Heungeop-myeon, Wonju-si 26493, Korea.

Department of Neurology, Seoul National University Hospital, Seoul National University College of Medicine, 101, Daehak-ro, Jongno-gu, Seoul 03080, Korea.

出版信息

Sensors (Basel). 2022 Oct 14;22(20):7792. doi: 10.3390/s22207792.

Abstract

Restless legs syndrome (RLS) is a sensorimotor disorder accompanied by a strong urge to move the legs and an unpleasant sensation in the legs, and is known to accompany prefrontal dysfunction. Here, we aimed to clarify the neural mechanism of working memory deficits associated with RLS using machine-learning-based analysis of single-trial neural activities. A convolutional neural network classifier was developed to discriminate the cortical activities between RLS patients and normal controls. A layer-wise relevance propagation was applied to the trained classifier in order to determine the critical nodes in the input layer for the output decision, i.e., the time/location of cortical activities discriminating RLS patients and normal controls during working memory tasks. Our method provided high classification accuracy (~94%) from single-trial event-related potentials, which are known to suffer from high inter-trial/inter-subject variation and low signal-to-noise ratio, after strict separation of training/test/validation data according to leave-one-subject-out cross-validation. The determined critical areas overlapped with the cortical substrates of working memory, and the neural activities in these areas were correlated with some significant clinical scores of RLS.

摘要

不宁腿综合征(RLS)是一种感觉运动障碍,伴有强烈的移动腿部的冲动和腿部的不适感觉,已知伴有前额叶功能障碍。在这里,我们旨在使用基于机器学习的单次神经活动分析来阐明与 RLS 相关的工作记忆缺陷的神经机制。开发了卷积神经网络分类器来区分 RLS 患者和正常对照组的皮质活动。将层相关传播应用于训练有素的分类器,以确定输入层中用于输出决策的关键节点,即在工作记忆任务期间区分 RLS 患者和正常对照组的皮质活动的时间/位置。我们的方法提供了高分类精度(约 94%),来自单次事件相关电位,已知在严格按照留一受试者交叉验证进行训练/测试/验证数据分离后,单次事件相关电位受到较高的试验间/受试者间变异性和较低的信噪比的影响。确定的关键区域与工作记忆的皮质基质重叠,这些区域的神经活动与 RLS 的一些重要临床评分相关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3d34/9608870/979c40dbecd1/sensors-22-07792-g001.jpg

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