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结构脑成像利用深度学习预测个体水平的任务激活图。

Structural Brain Imaging Predicts Individual-Level Task Activation Maps Using Deep Learning.

作者信息

Ellis David G, Aizenberg Michele R

机构信息

Department of Neurosurgery, University of Nebraska Medical Center, Omaha, NE, United States.

出版信息

Front Neuroimaging. 2022 Apr 18;1:834883. doi: 10.3389/fnimg.2022.834883. eCollection 2022.

Abstract

Accurate individual functional mapping of task activations is a potential tool for biomarker discovery and is critically important for clinical care. While structural imaging does not directly map task activation, we hypothesized that structural imaging contains information that can accurately predict variations in task activation between individuals. To this end, we trained a convolutional neural network to use structural imaging (T1-weighted, T2-weighted, and diffusion tensor imaging) to predict 47 different functional MRI task activation volumes across seven task domains. The U-Net model was trained on 591 subjects and then subsequently tested on 122 unrelated subjects. The predicted activation maps correlated more strongly with their actual maps than with the maps of the other test subjects. An ablation study revealed that a model using the shape of the cortex alone or the shape of the subcortical matter alone was sufficient to predict individual-level differences in task activation maps, but a model using the shape of the whole brain resulted in markedly decreased performance. The ablation study also showed that the additional information provided by the T2-weighted and diffusion tensor imaging strengthened the predictions as compared to using the T1-weighted imaging alone. These results indicate that structural imaging contains information that is predictive of inter-subject variability in task activation mapping and that cortical folding patterns, as well as microstructural features, could be a key component to linking brain structure to brain function.

摘要

准确的任务激活个体功能映射是发现生物标志物的潜在工具,对临床护理至关重要。虽然结构成像不能直接映射任务激活,但我们假设结构成像包含能够准确预测个体间任务激活差异的信息。为此,我们训练了一个卷积神经网络,利用结构成像(T1加权、T2加权和扩散张量成像)来预测七个任务领域的47种不同的功能磁共振成像任务激活体积。U-Net模型在591名受试者上进行训练,随后在122名不相关的受试者上进行测试。预测的激活图与其实际图的相关性比与其他测试受试者的图的相关性更强。一项消融研究表明,仅使用皮质形状或仅使用皮质下物质形状的模型足以预测任务激活图中的个体水平差异,但使用全脑形状的模型性能明显下降。消融研究还表明,与仅使用T1加权成像相比,T2加权和扩散张量成像提供的额外信息增强了预测能力。这些结果表明,结构成像包含可预测任务激活映射中受试者间变异性的信息,并且皮质折叠模式以及微观结构特征可能是将脑结构与脑功能联系起来的关键组成部分。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bf73/10406267/79a1f9f5ae86/fnimg-01-834883-g0001.jpg

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