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基于静息态 fMRI 的个体化机器学习研究:紊乱的网络通讯可预测终末期肾病患者的轻度认知障碍

Disrupted network communication predicts mild cognitive impairment in end-stage renal disease: an individualized machine learning study based on resting-state fMRI.

机构信息

Department of Radiology, First Affiliated Hospital of China Medical University, Shenyang, Liaoning Province, China.

School of Medicine, Xiamen University, Xiamen, Fujian Province, China.

出版信息

Cereb Cortex. 2023 Sep 9;33(18):10098-10107. doi: 10.1093/cercor/bhad269.

DOI:10.1093/cercor/bhad269
PMID:37492012
Abstract

End-Stage Renal Disease (ESRD) is known to be associated with a range of brain injuries, including cognitive decline. The purpose of this study is to investigate the functional connectivity (FC) of the resting-state networks (RSNs) through resting state functional magnetic resonance imaging (MRI), in order to gain insight into the neuropathological mechanism of ESRD. A total of 48 ESRD patients and 49 healthy controls underwent resting-state functional MRI and neuropsychological tests, for which Independent Components Analysis and graph-theory (GT) analysis were utilized. With the machine learning results, we examined the connections between RSNs abnormalities and neuropsychological test scores. Combining intra/inter network FC differences and GT results, ESRD was optimally distinguished in the testing dataset, with a balanced accuracy of 0.917 and area under curve (AUC) of 0.942. Shapley additive explanations results revealed that the increased functional network connectivity between DMN and left frontoparietal network (LFPN) was the most critical predictor for ESRD associated mild cognitive impairment diagnosis. Moreover, hypoSN (salience network) was positively correlated with Attention scores, while hyperLFPN was negatively correlated with Execution scores, indicating correlations between functional disruption and cognitive impairment measurements in ESRD patients. This study demonstrated that both the loss of FC within the SN and compensatory FC within the lateral frontoparietal network coexist in ESRD. This provides a network basis for understanding the individual brain circuits and offers additional noninvasive evidence to comprehend the brain networks in ESRD.

摘要

终末期肾病(ESRD)已知与一系列脑损伤有关,包括认知能力下降。本研究旨在通过静息态功能磁共振成像(rs-fMRI)研究静息态网络(RSN)的功能连接(FC),以深入了解 ESRD 的神经病理学机制。共 48 例 ESRD 患者和 49 例健康对照者接受了静息态功能磁共振成像和神经心理学测试,采用独立成分分析和图论(GT)分析。通过机器学习结果,我们检查了 RSN 异常与神经心理学测试评分之间的关系。结合内/间网络 FC 差异和 GT 结果,在测试数据集最优区分 ESRD,平衡准确率为 0.917,曲线下面积(AUC)为 0.942。Shapley 加性解释结果表明,DMN 与左额顶网络(LFPN)之间功能网络连接的增加是 ESRD 相关轻度认知障碍诊断的最关键预测因素。此外,hypoSN(突显网络)与注意力评分呈正相关,而 hyperLFPN 与执行评分呈负相关,表明 ESRD 患者功能障碍与认知障碍测量之间存在相关性。本研究表明,ESRD 中既存在 SN 内 FC 的丧失,也存在外侧额顶网络内的代偿性 FC。这为理解个体脑回路提供了网络基础,并提供了额外的无创证据来理解 ESRD 中的脑网络。

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