Predictive model for minimal hepatic encephalopathy based on cerebral functional connectivity

Y. Jiao, G. Teng, Xunheng Wang
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Abstract

Minimal hepatic encephalopathy (MHE) is a common neurocognitive complication of liver cirrhosis, which have few recognizable clinical symptoms. Previous functional magnetic resonance imaging (fMRI) studies have found that widespread cortical and subcortical functional connectivity (FC) changes were significantly in patients with MHE. The goals of this study were twofold: 1) to construct predictive models for MHE, based on brain regional functional connectivity, 2) and to test feature selection method on p-value ranker based kernel principle component analysis (kPCA). Our study included thirty-two cirrhotic patients with MHE and twenty age-, gender-, and eduction-matched healthy controls. Using 1.5T MR, we obtained resting-state fMRI for each subject. Functional connectivities between 116 pairs of brain regions in patients with MHE were compared with those in control participants. Then, p-value ranker based kPCA was applied in feature selection step to reduce the dimension of input data. The best parameters of feature selection were chose based on 10-fold cross-validation of vector machines (SVMs). Finally, We found FC-based diagnostic model was accurate in differing MHE from normal controls with 86.5% accuracy, 88% specifity and 85% sensitivity.
基于脑功能连通性的最小肝性脑病预测模型
轻度肝性脑病(MHE)是肝硬化常见的神经认知并发症,很少有可识别的临床症状。先前的功能磁共振成像(fMRI)研究发现,MHE患者广泛存在皮层和皮层下功能连通性(FC)改变。本研究的目的有两个:1)建立基于脑区域功能连接的MHE预测模型;2)测试基于p值秩的核主成分分析(kPCA)的特征选择方法。我们的研究包括32名肝硬化MHE患者和20名年龄、性别和教育程度匹配的健康对照。使用1.5T MR,我们获得了每个受试者的静息状态fMRI。研究人员将MHE患者116对大脑区域之间的功能连接与对照组进行了比较。然后,在特征选择步骤中应用基于p值秩的kPCA来降低输入数据的维数。基于向量机(svm)的10倍交叉验证选择最佳特征选择参数。最后,我们发现基于fc的诊断模型对不同于正常对照的MHE是准确的,准确率为86.5%,特异性为88%,敏感性为85%。
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