中国神经再生研究(英文版) ›› 2026, Vol. 21 ›› Issue (9): 4135-4147.doi: 10.4103/NRR.NRR-D-25-00332

• 综述:脑损伤修复保护与再生 • 上一篇    下一篇

基于深度学习的认知障碍脑影像分析:新方法、新技术及新范式

  

  • 出版日期:2026-09-15 发布日期:2026-05-19
  • 基金资助:
    中国国家重点研发计划(重点计划)项目(2024YFC3507100)、国家自然科学基金项目(82472623)、上海市东方学者顶尖人才计划、上海市经济和信息化(2023-GZL-RGZN-01012);中国教育部资助项目(2023ZY028)

Deep learning–based cognitive impairment brain imaging analysis: New methods, new technologies, and new paradigms

Qingqin Xu1, 2, #, Jianwei Lu1, 2, #, Zhongfu Zhang1, 2, Dongsheng Xu1, 2, *, Chengxiang Guo3, *   

  1. 1College of Rehabilitation Science, Shanghai University of Traditional Chinese Medicine, Shanghai, China; 
    2Engineering Research Center for Traditional Chinese Medicine Intelligent Rehabilitation, Ministry of Education, Shanghai, China; 
    3Information Technology Center, Guangxi University of Chinese Medicine, Nanning, Guangxi Zhuang Autonomous Region, China
  • Online:2026-09-15 Published:2026-05-19
  • Contact: Dongsheng Xu, MS, dxu0927@shutcm.edu.cn; Chengxiang Guo, MS, guocx2019@gxtcmu.edu.cn.
  • Supported by:
    This work was supported by the National Key R&D Program of China (Key Program), No. 2024YFC3507100; the National Natural Science Foundation of China, No. 82472623; the Shanghai Oriental Scholar Top Talent Program; the High-Quality Development Project of Shanghai Economic and Information Commission, No. 2023-GZL-RGZN-01012; a grant from Ministry of Education of China, No. 2023ZY028 (all to JL).

摘要:

由缺血性脑卒中、阿尔茨海默病和帕金森病引发的认知障碍,可呈现出独特的结构性及网络层面改变。脑部磁共振成像(MRI)作为评估这些改变的无创高分辨率手段,配合深度学习技术则可实现强大的自动化分析功能。鉴于病灶精确勾画、异常区域精准定位及可靠疾病分类对临床决策至关重要,文章重点关注深度学习技术在脑磁共振成像(MRI)分析中的应用,重点聚焦三大核心任务:病灶分割、目标检测与图像分类。近期广受认可的研究表明:缺血性脑卒中研究已实现顶尖病灶分割性能:优化后的U型卷积网络(U-Net)与混合卷积神经网络(CNN)-Transformer模型在描绘局灶性损伤时,Dice评分可达0.911。阿尔茨海默病研究通过三维卷积神经网络、Transformer模型及多模态融合技术,使分类与分期准确率较单模态基线提升逾10%,实现了对弥漫性皮层萎缩的更精准检测。帕金森病影像研究虽缺乏明显结构性病变,但通过ResNet与Vision Transformer骨干网络识别细微且空间分布的异常,显著提升早期阶段鉴别能力。当前面临的持续挑战包括:大型高质量标注数据集稀缺、跨机构变异性显著、标注成本高昂及可解释性有限,这些因素阻碍了临床应用整合。突破这些障碍需要联合学习缓解数据稀缺性并保障隐私,运用领域适应技术降低跨机构差异,采用自动化标注与低资源训练策略降低标注成本,借助可解释人工智能提升可解释性,从而确保模型稳健性、隐私性和透明度。文章综述了正在重塑认知障碍脑成像分析的新兴方法、创新技术及新范式。从机制层面看,深度学习通过整合分层多尺度空间特征、建模长程功能连接障碍、融合结构与功能影像来更精准呈现网络级病理变化,从而提升认知障碍分析能力。综上所述,将网络架构与疾病特异性影像特征及任务需求相匹配,可显著提升认知障碍MRI分析的准确性、稳健性与泛化能力。未来研究应聚焦多模态融合、结构-功能耦合、跨疾病评估,并将人工智能工具嵌入临床工作流程,以支持早期检测、个性化治疗方案制定及大规模临床应用。


https://orcid.org/0000-0002-8477-5377 (Dongsheng Xu); 

https://orcid.org/0009-0003-1265-7181 (Chengxiang Guo)

关键词: 阿尔茨海默病, 认知功能障碍, 深度学习, 图像分类, 缺血性脑卒中, 病灶分割, 磁共振成像, 神经影像学, 目标检测, 帕金森病

Abstract: Cognitive impairment arising from ischemic stroke, Alzheimer’s disease, and Parkinson’s disease presents distinct structural and network-level alterations. Brain magnetic resonance imaging offers a non-invasive and high-resolution approach to assess these changes, while deep learning provides powerful tools for automated analysis. Given that accurate lesion delineation, precise localization of abnormal regions, and reliable disease classification are fundamental to clinical decision-making. This review aims to explore the application of deep learning techniques to brain magnetic resonance imaging analysis of cognitive impairments caused by these disorders, with a focus on three core tasks: lesion segmentation, object detection, and image classification. Recent widely accepted findings indicate that ischemic stroke studies have achieved state-of-the-art lesion segmentation performance, with optimized U-shaped convolutional network (U-Net) and hybrid convolutional neural network-transformer models reaching Dice scores up to 0.911 in delineating focal damage. Alzheimer’s disease research has advanced classification and staging accuracy by more than 10% compared with unimodal baselines through three-dimensional convolutional neural network, Transformers, and multimodal fusion, enabling more precise detection of diffuse cortical atrophy. Parkinson’s disease imaging, despite lacking overt structural lesions, has leveraged ResNet and Vision Transformer backbones to identify subtle and spatially distributed abnormalities, improving early-stage differentiation. Persistent challenges include the scarcity of large, high-quality annotated datasets, substantial inter-site variability, high annotation costs, and limited interpretability, hindering clinical integration. Addressing these barriers will require advances in federated learning to mitigate data scarcity while preserving privacy, domain adaptation techniques to reduce inter-site variability, automated annotation, and low-resource training strategies to lower labeling costs, and explainable artificial intelligence to improve interpretability, thereby ensuring model robustness, privacy, and transparency. This review highlights emerging methods, innovative technologies, and novel paradigms that are redefining brain imaging analysis in cognitive impairment. Mechanistically, deep learning improves cognitive impairment analysis by integrating hierarchical and multiscale spatial features, modeling long-range functional connectivity disruptions, and fusing structural with functional imaging to better represent network-level pathology. In conclusion, aligning network architectures with disease-specific imaging characteristics and task requirements can greatly enhance the accuracy, robustness, and generalizability of magnetic resonance imaging analyses for cognitive impairment. Future work should focus on multimodal fusion, structure-function coupling, cross-disease evaluations, and embedding artificial intelligence tools into clinical workflows to support early detection, individualized treatment planning, and large-scale clinical adoption.

Key words: Alzheimer’s disease, cognitive dysfunction, deep learning, image classification, ischemic stroke, lesion segmentation, magnetic resonance imaging, neuroimaging, object detection, Parkinson’s disease