Jiang Zhaoshun, Cai Yuxi, Zhang Xixue, Lv Yating, Zhang Mengting, Li Shihong, Lin Guangwu, Bao Zhijun, Liu Songbin, Gu Weidong
Department of Anesthesiology, Huadong Hospital Affiliated to Fudan University, Shanghai, China.
Shanghai Key Laboratory of Clinical Geriatric Medicine, Shanghai, China.
Front Aging Neurosci. 2021 Nov 12;13:715517. doi: 10.3389/fnagi.2021.715517. eCollection 2021.
Delayed neurocognitive recovery (DNR) is a common subtype of postoperative neurocognitive disorders. An objective approach for identifying subjects at high risk of DNR is yet lacking. The present study aimed to predict DNR using the machine learning method based on multiple cognitive-related brain network features. A total of 74 elderly patients (≥ 60-years-old) undergoing non-cardiac surgery were subjected to resting-state functional magnetic resonance imaging (rs-fMRI) before the surgery. Seed-based whole-brain functional connectivity (FC) was analyzed with 18 regions of interest (ROIs) located in the default mode network (DMN), limbic network, salience network (SN), and central executive network (CEN). Multiple machine learning models (support vector machine, decision tree, and random forest) were constructed to recognize the DNR based on FC network features. The experiment has three parts, including performance comparison, feature screening, and parameter adjustment. Then, the model with the best predictive efficacy for DNR was identified. Finally, independent testing was conducted to validate the established predictive model. Compared to the non-DNR group, the DNR group exhibited aberrant whole-brain FC in seven ROIs, including the right posterior cingulate cortex, right medial prefrontal cortex, and left lateral parietal cortex in the DMN, the right insula in the SN, the left anterior prefrontal cortex in the CEN, and the left ventral hippocampus and left amygdala in the limbic network. The machine learning experimental results identified a random forest model combined with FC features of DMN and CEN as the best prediction model. The area under the curve was 0.958 (accuracy = 0.935, precision = 0.899, recall = 0.900, F1 = 0.890) on the test set. Thus, the current study indicated that the random forest machine learning model based on rs-FC features of DMN and CEN predicts the DNR following non-cardiac surgery, which could be beneficial to the early prevention of DNR. The study was registered at the Chinese Clinical Trial Registry (Identification number: ChiCTR-DCD-15006096).
延迟神经认知恢复(DNR)是术后神经认知障碍的一种常见亚型。目前仍缺乏一种客观的方法来识别有DNR高风险的受试者。本研究旨在基于多种与认知相关的脑网络特征,使用机器学习方法预测DNR。共有74名接受非心脏手术的老年患者(≥60岁)在手术前接受了静息态功能磁共振成像(rs-fMRI)检查。基于种子点的全脑功能连接(FC)分析采用了位于默认模式网络(DMN)、边缘系统网络、突显网络(SN)和中央执行网络(CEN)中的18个感兴趣区域(ROI)。构建了多个机器学习模型(支持向量机、决策树和随机森林),以基于FC网络特征识别DNR。该实验包括三个部分,即性能比较、特征筛选和参数调整。然后,确定对DNR预测效果最佳的模型。最后,进行独立测试以验证所建立的预测模型。与非DNR组相比,DNR组在7个ROI中表现出全脑FC异常,包括DMN中的右侧后扣带回皮质、右侧内侧前额叶皮质和左侧外侧顶叶皮质,SN中的右侧岛叶,CEN中的左侧前额叶皮质,以及边缘系统网络中的左侧腹侧海马体和左侧杏仁核。机器学习实验结果确定,结合DMN和CEN的FC特征的随机森林模型为最佳预测模型。在测试集上,曲线下面积为0.958(准确率 = 0.935,精确率 = 0.899,召回率 = 0.900,F1 = 0.890)。因此,当前研究表明,基于DMN和CEN的rs-FC特征的随机森林机器学习模型可预测非心脏手术后的DNR,这可能有助于DNR的早期预防。该研究已在中国临床试验注册中心注册(注册号:ChiCTR-DCD-15006096)。