Inter-subject Similarity Guided Brain Network Modeling for MCI Diagnosis.

Yu Zhang, Han Zhang, Xiaobo Chen, Mingxia Liu, Xiaofeng Zhu, Dinggang Shen
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引用次数: 4

Abstract

Sparse representation-based brain network modeling, although popular, often results in relatively large inter-subject variability in network structures. This inevitably makes it difficult for inter-subject comparison, thus eventually deteriorating the generalization capability of personalized disease diagnosis. Accordingly, group sparse representation has been proposed to alleviate such limitation by jointly estimating connectivity weights for all subjects. However, the constructed brain networks based on this method often fail in providing satisfactory separability between the subjects from different groups (e.g., patients vs. normal controls), which will also affect the performance of computer-aided disease diagnosis. Based on the hypothesis that subjects from the same group should have larger similarity in their functional connectivity (FC) patterns than subjects from other groups, we propose an "inter-subject FC similarity-guided" group sparse network modeling method. In this method, we explicitly include the inter-subject FC similarity as a constraint to conduct group-wise FC network modeling, while retaining sufficient between-group differences in the resultant FC networks. This improves the separability of brain functional networks between different groups, thus facilitating better personalized brain disease diagnosis. Specifically, the inter-subject FC similarity is roughly estimated by comparing the Pearson's correlation based FC patterns of each brain region to other regions for each pair of the subjects. Then, this is implemented as an additional weighting term to ensure the adequate inter-subject FC differences between the subjects from different groups. Of note, our method retains the group sparsity constraint to ensure the overall consistency of the resultant individual brain networks. Experimental results show that our method achieves a balanced trade-off by not only generating the individually consistent FC networks, but also effectively maintaining the necessary group difference, thereby significantly improving connectomics-based diagnosis for mild cognitive impairment (MCI).

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主题间相似性引导的MCI诊断脑网络建模。
基于稀疏表示的脑网络建模虽然很流行,但往往会导致网络结构中相对较大的主体间变异性。这必然造成学科间比较困难,最终降低了个性化疾病诊断的泛化能力。因此,提出了组稀疏表示,通过联合估计所有主题的连通性权重来缓解这种限制。然而,基于该方法构建的脑网络往往不能提供不同组(如患者与正常对照)受试者之间令人满意的可分离性,这也会影响计算机辅助疾病诊断的性能。基于同一群体被试的功能连接模式相似性大于其他群体被试的假设,提出了一种“主体间FC相似性引导”的群体稀疏网络建模方法。在这种方法中,我们明确地将主体间FC相似性作为约束来进行群体智能FC网络建模,同时在最终的FC网络中保留足够的组间差异。这提高了不同群体之间脑功能网络的可分离性,从而促进更好的个性化脑部疾病诊断。具体来说,通过比较每对受试者的每个脑区与其他脑区基于Pearson’s相关性的FC模式,大致估计受试者间FC相似性。然后,将其作为一个额外的加权项来实现,以确保不同组的受试者之间有足够的受试者间FC差异。值得注意的是,我们的方法保留了组稀疏性约束,以确保所得个体大脑网络的整体一致性。实验结果表明,该方法既能生成个体一致的FC网络,又能有效维持必要的组间差异,从而显著提高基于连接组学的轻度认知障碍(MCI)诊断。
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Probabilistic 3D Correspondence Prediction from Sparse Unsegmented Images. Class-Balanced Deep Learning with Adaptive Vector Scaling Loss for Dementia Stage Detection. MoViT: Memorizing Vision Transformers for Medical Image Analysis. Robust Unsupervised Super-Resolution of Infant MRI via Dual-Modal Deep Image Prior. IA-GCN: Interpretable Attention based Graph Convolutional Network for Disease Prediction.
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