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一种基于多模态磁共振成像的机器学习框架,用于对脑小血管病中的认知障碍进行分类。

A multimodal MRI-based machine learning framework for classifying cognitive impairment in cerebral small vessel disease.

作者信息

Lin Guihan, Chen Weiyue, Geng Yongkang, Peng Bo, Liu Surui, Chen Minjiang, Pang Chunying, Chen Pengjun, Lu Chenying, Yan Zhihan, Xia Shuiwei, Dai Yakang, Ji Jiansong

机构信息

Zhejiang Key Laboratory of Imaging and Interventional Medicine, Zhejiang Engineering Research Csaenter of Interventional Medicine Engineering and Biotechnology, Key Laboratory of Precision Medicine of Lishui City, The Fifth Affiliated Hospital of Wenzhou Medical University, Lishui, 323000, Zhejiang, China.

School of Life Science and Technology, Changchun University of Science and Technology, Changchun, 130000, China.

出版信息

Sci Rep. 2025 Apr 16;15(1):13112. doi: 10.1038/s41598-025-97552-9.

Abstract

The heterogeneity of cerebral small vessel disease (CSVD) with mild cognitive impairment (MCI) presents a challenge for diagnosis and classification. This study aims to propose a multimodal magnetic resonance imaging (MRI)-based machine learning framework to effectively classify MCI and NCI in CSVD patients. We enrolled 165 CSVD patients, categorized into NCI (n = 81) and MCI (n = 84) groups based on neurocognitive assessments. Multimodal MRI data, including T1-weighted, resting-state functional MRI, and diffusion tensor images, were collected. Image preprocessing, feature extraction and selection were applied to obtain MRI features from three modalities. The AutoGluon platform was utilized for model development, and traditional machine learning algorithms were applied for comparison. The models were validated using a validation cohort of 83 CSVD patients, and their performance was assessed via receiver operating characteristic curve analysis. The AutoGluon model to distinguish MCI from NCI based on multimodal MRI features demonstrated high area under the curve (AUC), accuracy, sensitivity, specificity, precision, balanced accuracy, and F1-score in the training cohort (0.926, 88.48%, 88.10%, 88.89%, 89.16%, 88.50%, and 88.63%, respectively) and validation cohort (0.878, 81.93%, 86.36%, 76.92%, 80.85%, 81.64%, and 83.51%, respectively). Other traditional machine learning models had AUCs of 0.755-0.831, and their prediction accuracies were significantly lower than that of AutoGluon model (P < 0.001). Our study provides a multimodal MRI-based machine learning framework, utilizing the AutoGluon platform, that outperforms traditional algorithms in classifying MCI and NCI, offering a promising tool for the early prediction of MCI in CSVD.

摘要

伴有轻度认知障碍(MCI)的脑小血管病(CSVD)的异质性给诊断和分类带来了挑战。本研究旨在提出一种基于多模态磁共振成像(MRI)的机器学习框架,以有效区分CSVD患者中的MCI和正常认知(NCI)。我们纳入了165例CSVD患者,根据神经认知评估分为NCI组(n = 81)和MCI组(n = 84)。收集了多模态MRI数据,包括T1加权成像、静息态功能MRI和扩散张量成像。进行图像预处理、特征提取和选择,以从三种模态中获取MRI特征。利用AutoGluon平台进行模型开发,并应用传统机器学习算法进行比较。使用83例CSVD患者的验证队列对模型进行验证,并通过受试者工作特征曲线分析评估其性能。基于多模态MRI特征区分MCI和NCI的AutoGluon模型在训练队列中表现出较高的曲线下面积(AUC)、准确率、敏感性、特异性、精确率、平衡准确率和F1分数(分别为0.926、88.48%、88.10%、88.89%、89.16%、88.50%和88.63%),在验证队列中分别为(0.878、81.93%、86.36%、76.92%、80.85%、81.64%和83.51%)。其他传统机器学习模型的AUC为0.755 - 0.831,其预测准确率显著低于AutoGluon模型(P < 0.001)。我们的研究提供了一种基于多模态MRI的机器学习框架,利用AutoGluon平台,在区分MCI和NCI方面优于传统算法,为CSVD中MCI的早期预测提供了一个有前景的工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bff7/12003736/de817bdb67b5/41598_2025_97552_Fig1_HTML.jpg

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