基于病灶感知的边缘图神经网络预测脑卒中后失语症患者的语言能力

ArXiv Pub Date : 2024-09-03
Zijian Chen, Maria Varkanitsa, Prakash Ishwar, Janusz Konrad, Margrit Betke, Swathi Kiran, Archana Venkataraman
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引用次数: 0

摘要

我们提出了一种病变感知图神经网络(LEGNet),用于从静息态 fMRI(rs-fMRI)连接性预测中风后失语症患者的语言能力。我们的模型集成了三个部分:编码脑区之间功能连接的基于边缘的学习模块、病变编码模块和利用功能相似性进行预测的子图学习模块。我们使用从人类连接组项目(HCP)中提取的合成数据进行超参数调整和模型预训练。然后,我们在内部的中风后失语症神经成像数据集上使用重复 10 次交叉验证来评估其性能。我们的结果表明,LEGNet 在预测语言能力方面优于基线深度学习方法。在第二个内部数据集上进行测试时,LEGNet 也表现出了卓越的泛化能力,该数据集是在稍有不同的神经成像协议下获得的。综上所述,本研究的结果凸显了 LEGNet 在有效学习脑损伤患者队列中 rs-fMRI 连接性与语言能力之间的关系以改进卒中后失语症评估方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Lesion-aware Edge-based Graph Neural Network for Predicting Language Ability in Patients with Post-stroke Aphasia.

We propose a lesion-aware graph neural network (LEGNet) to predict language ability from resting-state fMRI (rs-fMRI) connectivity in patients with post-stroke aphasia. Our model integrates three components: an edge-based learning module that encodes functional connectivity between brain regions, a lesion encoding module, and a subgraph learning module that leverages functional similarities for prediction. We use synthetic data derived from the Human Connectome Project (HCP) for hyperparameter tuning and model pretraining. We then evaluate the performance using repeated 10-fold cross-validation on an in-house neuroimaging dataset of post-stroke aphasia. Our results demonstrate that LEGNet outperforms baseline deep learning methods in predicting language ability. LEGNet also exhibits superior generalization ability when tested on a second in-house dataset that was acquired under a slightly different neuroimaging protocol. Taken together, the results of this study highlight the potential of LEGNet in effectively learning the relationships between rs-fMRI connectivity and language ability in a patient cohort with brain lesions for improved post-stroke aphasia evaluation.

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