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Predictive models of minimal hepatic encephalopathy for cirrhotic patients based on large-scale brain intrinsic connectivity networks

机译:基于大规模脑内在连接网络的肝硬化患者最小型肝性脑病的预测模型

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摘要

We aimed to find the most representative connectivity patterns for minimal hepatic encephalopathy (MHE) using large-scale intrinsic connectivity networks (ICNs) and machine learning methods. Resting-state fMRI was administered to 33 cirrhotic patients with MHE and 43 cirrhotic patients without MHE (NMHE). The connectivity maps of 20 ICNs for each participant were obtained by dual regression. A Bayesian machine learning technique, called Graphical Model-based Multivariate Analysis, was applied to determine ICN regions that characterized group differences. The most representative ICNs were evaluated by the performance of three machine learning methods (support vector machines (SVMs), multilayer perceptrons (MLP), and C4.5). The clinical significance of these potential biomarkers was further tested. The temporal lobe network (TLN), and subcortical network (SCN), and sensorimotor network (SMN) were selected as representative ICNs. The distinct functional integration patterns of the representative ICNs were significantly correlated with behavior criteria and Child-Pugh scores. Our findings suggest the representative ICNs based on GAMMA can distinguish MHE from NMHE and provide supplementary information to current MHE diagnostic criteria.
机译:我们旨在使用大规模内在连接网络(ICN)和机器学习方法,为最小型肝性脑病(MHE)找到最具代表性的连接模式。对33例有MHE的肝硬化患者和43例无MHE(NMHE)的肝硬化患者进行了静息状态功能磁共振成像。通过双重回归获得每个参与者的20个ICN的连通性图。贝叶斯机器学习技术,称为基于图形模型的多元分析,被用于确定表征群体差异的ICN区域。通过三种机器学习方法(支持向量机(SVM),多层感知器(MLP)和C4.5)的性能评估了最具代表性的ICN。这些潜在的生物标志物的临床意义进行了进一步测试。颞叶网络(TLN),皮质下网络(SCN)和感觉运动网络(SMN)被选为代表性的ICN。代表性ICN的独特功能整合模式与行为标准和Child-Pugh评分显着相关。我们的发现表明,基于GAMMA的代表性ICN可以区分MHE和NMHE,并为当前的MHE诊断标准提供补充信息。

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