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临床获得的多模态 MRI 的多尺度深度学习提高了耐药性癫痫儿童癫痫发作起始区的定位

Multi-Scale Deep Learning of Clinically Acquired Multi-Modal MRI Improves the Localization of Seizure Onset Zone in Children With Drug-Resistant Epilepsy.

出版信息

IEEE J Biomed Health Inform. 2022 Nov;26(11):5529-5539. doi: 10.1109/JBHI.2022.3196330. Epub 2022 Nov 10.

DOI:10.1109/JBHI.2022.3196330
PMID:35925854
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9710730/
Abstract

The present study investigates the effectiveness of a deep learning neural network for non-invasively localizing the seizure onset zone (SOZ) using multi-modal MRI data that are clinically acquired from children with drug-resistant epilepsy. A cortical parcellation was applied to localize the SOZ in cortical nodes of the epileptogenic hemisphere. At each node, the laminar surface analysis was followed to sample 1) the relative intensity of gray matter and white matter in multi-modal MRI and 2) the neighboring white matter connectivity using diffusion tractography edge strengths. A cross-validation was employed to train and test all layers of a multi-scale residual neural network (msResNet) that can classify SOZ node in an end-to-end fashion. A prediction probability of a given node belonging to the SOZ class was proposed as a non-invasive MRI marker of seizure onset likelihood. In an independent validation cohort, the proposed MRI marker provided a very large effect size of Cohen's d = 1.21 between SOZ and non-SOZ, and classified SOZ with a balanced accuracy of 0.75 in lesional and 0.67 in non-lesional MRI groups. The subsequent multi-variate logistic regression found the incorporation of the proposed MRI marker into interictal intracranial EEG (iEEG) markers further improves the differentiation between the epileptogenic focus (defined as SOZ resected during surgery) and non-epileptogenic sites (i.e., non-SOZ sites preserved during surgery) up to 15 % in non-lesional MRI group, suggesting that the proposed MRI marker could improve the localization of epileptogenic foci for successful pediatric epilepsy surgery.

摘要

本研究旨在探讨一种深度学习神经网络,利用从耐药性癫痫儿童临床获取的多模态 MRI 数据,非侵入性地定位致痫区 (SOZ)。应用皮质分割将 SOZ 定位在致痫半球的皮质节点中。在每个节点上,进行层状表面分析,以采样 1)多模态 MRI 中灰质和白质的相对强度,以及 2)使用扩散张量边缘强度的邻近白质连通性。采用交叉验证方法训练和测试多尺度残差神经网络 (msResNet) 的所有层,该网络可以以端到端的方式对 SOZ 节点进行分类。提出了给定节点属于 SOZ 类的预测概率,作为发作起始可能性的无创性 MRI 标志物。在独立验证队列中,所提出的 MRI 标志物在 SOZ 和非 SOZ 之间提供了非常大的 Cohen's d = 1.21 的效应量,在病变 MRI 组和非病变 MRI 组中,SOZ 的分类准确率分别为 0.75 和 0.67。随后的多元逻辑回归发现,将所提出的 MRI 标志物纳入发作间期颅内脑电图 (iEEG) 标志物中,可以进一步提高癫痫灶(定义为手术中切除的 SOZ)和非癫痫灶(即手术中保留的非 SOZ 部位)之间的区分度,病变 MRI 组提高了 15%,这表明所提出的 MRI 标志物可以提高小儿癫痫手术中致痫灶的定位。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/565f/9710730/ca462c591a99/nihms-1849400-f0006.jpg
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