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利用儿童局灶性癫痫术前 DWI 连接组数据进行深度关系推理,预测语言障碍和术后癫痫发作结果。

Deep Relational Reasoning for the Prediction of Language Impairment and Postoperative Seizure Outcome Using Preoperative DWI Connectome Data of Children With Focal Epilepsy.

出版信息

IEEE Trans Med Imaging. 2021 Mar;40(3):793-804. doi: 10.1109/TMI.2020.3036933. Epub 2021 Mar 2.

Abstract

Prolonged seizures in children with focal epilepsy (FE) may impair language functions and often reoccur after surgical intervention. This study is aimed at developing a novel deep relational reasoning network to investigate whether conventional diffusion-weighted imaging connectome analysis can be improved when predicting expressive and receptive scores of preoperative language impairments and classifying postoperative seizure outcomes (seizure freedom or recurrence) in individual FE children. To deeply reason the dependencies of axonal connections that are sparsely distributed in the whole brain, this study proposes the "dilated CNN + RN", a dilated convolutional neural network (CNN) combined with a relation network (RN). The performance of the dilated CNN + RN was evaluated using whole brain connectome data from 51 FE children. It was found that when compared with other state-of-the-art algorithms, the dilated CNN + RN led to an average improvement of 90.2% and 97.3% in predicting expressive and receptive language scores, and 2.2% and 4% improvement in classifying seizure freedom and seizure recurrence, respectively. These improvements were independent of the prefixed connectome densities. Also, the dilated CNN + RN could provide an explainable artificial intelligence (AI) model by computing gradient-based regression/classification activation maps. This mapping analysis revealed left superior-medial frontal cortex, bilateral hippocampi, and cerebellum as crucial hubs, facilitating important connections that were most predictive of language function and seizure refractoriness after surgery.

摘要

局灶性癫痫(FE)儿童的癫痫持续发作可能会损害语言功能,且常发生于手术后。本研究旨在开发一种新的深度关系推理网络,以研究在预测个体 FE 儿童术前语言障碍的表达和接受评分以及分类术后发作结局(无发作或复发)时,常规弥散加权成像连接组分析是否可以得到改善。为了深入推理稀疏分布在整个大脑中的轴突连接的依赖性,本研究提出了“扩张 CNN + RN”,即扩张卷积神经网络(CNN)与关系网络(RN)的结合。使用 51 名 FE 儿童的全脑连接组数据评估了扩张 CNN + RN 的性能。与其他最先进的算法相比,扩张 CNN + RN 分别平均提高了 90.2%和 97.3%来预测表达和接受语言评分,分别提高了 2.2%和 4%来分类无发作和发作复发。这些改善与预设连接组密度无关。此外,扩张 CNN + RN 可以通过计算基于梯度的回归/分类激活图提供可解释的人工智能(AI)模型。该映射分析揭示了左额上内侧回、双侧海马体和小脑作为关键枢纽,促进了对语言功能和手术后癫痫耐药性最具预测性的重要连接。

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