用于语言成绩认知分数预测的跨域纤维聚类形状分析。

ArXiv Pub Date : 2024-09-18
Yui Lo, Yuqian Chen, Dongnan Liu, Wan Liu, Leo Zekelman, Fan Zhang, Yogesh Rathi, Nikos Makris, Alexandra J Golby, Weidong Cai, Lauren J O'Donnell
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引用次数: 0

摘要

形状在计算机图形学中扮演着重要角色,它提供了传达物体形态和功能的信息特征。大脑成像中的形状分析有助于解释人脑结构和功能的相关性。在这项工作中,我们研究了大脑三维白质连接的形状及其与人类认知功能的潜在预测关系。我们利用扩散磁共振成像(dMRI)束成像技术将大脑连接重建为三维点序列。为了描述每个连接,除了传统的 dMRI 连接和组织微结构特征外,我们还提取了 12 个形状描述符。我们引入了一个新颖的框架--形状融合纤维簇变换器(SFFormer),该框架利用多头交叉注意特征融合模块,根据 dMRI 牵引成像预测特定主题的语言表达能力。我们在一个包括 1065 名健康年轻人的大型数据集上评估了该方法的性能。结果表明,基于变压器的 SFFormer 模型及其与形状、微观结构和连接性的内部/外部特征融合都具有信息量大的特点,它们共同提高了对特定受试者语言表达能力分数的预测。总之,我们的研究结果表明,大脑连接的形状可以预测人类的语言功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-domain Fiber Cluster Shape Analysis for Language Performance Cognitive Score Prediction.

Shape plays an important role in computer graphics, offering informative features to convey an object's morphology and functionality. Shape analysis in brain imaging can help interpret structural and functionality correlations of the human brain. In this work, we investigate the shape of the brain's 3D white matter connections and its potential predictive relationship to human cognitive function. We reconstruct brain connections as sequences of 3D points using diffusion magnetic resonance imaging (dMRI) tractography. To describe each connection, we extract 12 shape descriptors in addition to traditional dMRI connectivity and tissue microstructure features. We introduce a novel framework, Shape--fused Fiber Cluster Transformer (SFFormer), that leverages a multi-head cross-attention feature fusion module to predict subject-specific language performance based on dMRI tractography. We assess the performance of the method on a large dataset including 1065 healthy young adults. The results demonstrate that both the transformer-based SFFormer model and its inter/intra feature fusion with shape, microstructure, and connectivity are informative, and together, they improve the prediction of subject-specific language performance scores. Overall, our results indicate that the shape of the brain's connections is predictive of human language function.

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