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Hybrid Functional Brain Network With First-Order and Second-Order Information for Computer-Aided Diagnosis of Schizophrenia

机译:具有一阶和二阶信息的混合功能脑网络,用于精神分裂症的计算机辅助诊断

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摘要

Brain functional connectivity network (BFCN) analysis has been widely used in the diagnosis of mental disorders, such as schizophrenia. In BFCN methods, brain network construction is one of the core tasks due to its great influence on the diagnosis result. Most of the existing BFCN construction methods only consider the first-order relationship existing in each pair of brain regions and ignore the useful high-order information, including multi-region correlation in the whole brain. Some early schizophrenia patients have subtle changes in brain function networks, which cannot be detected in conventional BFCN construction methods. It is well-known that the high-order method is usually more sensitive to the subtle changes in signal than the low-order method. To exploit high-order information among brain regions, we define the triplet correlation among three brain regions, and derive the second-order brain network based on the connectivity difference and ordinal information in each triplet. For making full use of the complementary information in different brain networks, we proposed a hybrid approach to fuse the first- and second-order brain networks. The proposed method is applied to identify the biomarkers of schizophrenia. The experimental results on six schizophrenia datasets (totally including 439 patients and 426 controls) show that the proposed method outperforms the existing brain network methods in the diagnosis of schizophrenia.
机译:脑功能连接网络(BFCN)分析已被广泛用于精神疾病(例如精神分裂症)的诊断。在BFCN方法中,脑网络构建是其核心任务之一,因为它对诊断结果影响很大。大多数现有的BFCN构造方法仅考虑存在于每对大脑区域中的一阶关系,而忽略了有用的高阶信息,包括整个大脑中的多区域关联。一些早期的精神分裂症患者的脑功能网络有细微的变化,这在传统的BFCN构造方法中无法检测到。众所周知,高阶方法通常比低阶方法对信号的细微变化更为敏感。为了利用大脑区域之间的高阶信息,我们定义了三个大脑区域之间的三联体相关性,并根据每个三联体中的连通性差异和顺序信息得出了二阶大脑网络。为了充分利用不同大脑网络中的补充信息,我们提出了一种混合方法来融合一阶和二阶大脑网络。该方法可用于识别精神分裂症的生物标志物。在六个精神分裂症数据集(总共包括439名患者和426个对照组)上的实验结果表明,该方法在精神分裂症的诊断方面优于现有的脑网络方法。

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