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默认模式网络与视觉处理区域的功能连接性降低作为延迟神经认知恢复的潜在生物标志物:一项静息态功能磁共振成像研究及机器学习分析

Decreased default mode network functional connectivity with visual processing regions as potential biomarkers for delayed neurocognitive recovery: A resting-state fMRI study and machine-learning analysis.

作者信息

Jiang Zhaoshun, Cai Yuxi, Liu Songbin, Ye Pei, Yang Yifeng, Lin Guangwu, Li Shihong, Xu Yan, Zheng Yangjing, Bao Zhijun, Nie Shengdong, Gu Weidong

机构信息

Department of Anesthesiology, Huadong Hospital Affiliated to Fudan University, Shanghai, China.

Shanghai Key Laboratory of Clinical Geriatric Medicine, Huadong Hospital Affiliated to Fudan University, Shanghai, China.

出版信息

Front Aging Neurosci. 2023 Jan 6;14:1109485. doi: 10.3389/fnagi.2022.1109485. eCollection 2022.

Abstract

OBJECTIVES

The abnormal functional connectivity (FC) pattern of default mode network (DMN) may be key markers for early identification of various cognitive disorders. However, the whole-brain FC changes of DMN in delayed neurocognitive recovery (DNR) are still unclear. Our study was aimed at exploring the whole-brain FC patterns of all regions in DMN and the potential features as biomarkers for the prediction of DNR using machine-learning algorithms.

METHODS

Resting-state functional magnetic resonance imaging (fMRI) was conducted before surgery on 74 patients undergoing non-cardiac surgery. Seed-based whole-brain FC with 18 core regions located in the DMN was performed, and FC features that were statistically different between the DNR and non-DNR patients after false discovery correction were extracted. Afterward, based on the extracted FC features, machine-learning algorithms such as support vector machine, logistic regression, decision tree, and random forest were established to recognize DNR. The machine learning experiment procedure mainly included three following steps: feature standardization, parameter adjustment, and performance comparison. Finally, independent testing was conducted to validate the established prediction model. The algorithm performance was evaluated by a permutation test.

RESULTS

We found significantly decreased DMN connectivity with the brain regions involved in visual processing in DNR patients than in non-DNR patients. The best result was obtained from the random forest algorithm based on the 20 decision trees (estimators). The random forest model achieved the accuracy, sensitivity, and specificity of 84.0, 63.1, and 89.5%, respectively. The area under the receiver operating characteristic curve of the classifier reached 86.4%. The feature that contributed the most to the random forest model was the FC between the left retrosplenial cortex/posterior cingulate cortex and left precuneus.

CONCLUSION

The decreased FC of DMN with regions involved in visual processing might be effective markers for the prediction of DNR and could provide new insights into the neural mechanisms of DNR.

CLINICAL TRIAL REGISTRATION

: Chinese Clinical Trial Registry, ChiCTR-DCD-15006096.

摘要

目的

默认模式网络(DMN)异常的功能连接(FC)模式可能是早期识别各种认知障碍的关键标志物。然而,延迟神经认知恢复(DNR)中DMN的全脑FC变化仍不清楚。我们的研究旨在探索DMN中所有区域的全脑FC模式以及作为预测DNR生物标志物的潜在特征,采用机器学习算法进行研究。

方法

对74例接受非心脏手术的患者在术前进行静息态功能磁共振成像(fMRI)。对位于DMN的18个核心区域进行基于种子点的全脑FC分析,提取在错误发现校正后DNR患者和非DNR患者之间存在统计学差异的FC特征。随后,基于提取的FC特征,建立支持向量机、逻辑回归、决策树和随机森林等机器学习算法来识别DNR。机器学习实验过程主要包括以下三个步骤:特征标准化、参数调整和性能比较。最后,进行独立测试以验证所建立的预测模型。通过置换检验评估算法性能。

结果

我们发现,与非DNR患者相比,DNR患者中DMN与参与视觉处理的脑区之间的连接显著减少。基于20个决策树(估计器)的随机森林算法取得了最佳结果。随机森林模型的准确率、灵敏度和特异性分别达到84.0%、63.1%和89.5%。分类器的受试者工作特征曲线下面积达到86.4%。对随机森林模型贡献最大的特征是左后扣带回皮质/后扣带回皮质与左楔前叶之间的FC。

结论

DMN与参与视觉处理区域的FC降低可能是预测DNR的有效标志物,并可为DNR的神经机制提供新的见解。

临床试验注册

中国临床试验注册中心,ChiCTR-DCD-15006096。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3538/9853194/46ee7fc76245/fnagi-14-1109485-g001.jpg

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