自我监督学习揭示脑功能障碍的特征:方法和应用。

Health data science Pub Date : 2025-08-05 eCollection Date: 2025-01-01 DOI:10.34133/hds.0282
Ying Li, Yanwu Yang, Yuchu Chen, Chenfei Ye, Ting Ma
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引用次数: 0

摘要

重要性:从高维功能记录中精确解码脑功能障碍对于提高我们对脑功能障碍的理解至关重要。自监督学习(SSL)模型为映射功能神经成像数据中的依赖关系提供了一种变革性的方法。利用大脑信号的内在组织进行综合特征提取,这些模型能够在临床相关框架内分析关键的神经功能特征,克服与数据异质性和标记数据稀缺性相关的挑战。亮点:本文全面概述了SSL技术在功能神经成像数据中的应用,如功能磁共振成像和脑电图,并特别关注了它们在各种神经精神疾病中的应用。我们讨论了三大类SSL学习方法:对比学习、生成学习和生成-对比学习,并概述了它们的基本原理和代表性方法。重要的是,我们强调SSL在解决数据稀缺、多模式集成和疾病检测和预测的动态网络建模方面的潜力。我们展示了这些技术在理解和分类阿尔茨海默病、帕金森病和癫痫等疾病方面的成功应用,展示了它们在下游神经心理学应用中的潜力。结论:SSL模型为大脑疾病的个体检测和预测提供了一种可扩展和有效的方法。尽管目前在可解释性和数据异质性方面存在局限性,但SSL在未来临床应用中的潜力是巨大的,特别是在跨诊断精神病亚型和解码基于任务的脑功能记录领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Self-Supervised Learning to Unveil Brain Dysfunctional Signatures in Brain Disorders: Methods and Applications.

Self-Supervised Learning to Unveil Brain Dysfunctional Signatures in Brain Disorders: Methods and Applications.

Self-Supervised Learning to Unveil Brain Dysfunctional Signatures in Brain Disorders: Methods and Applications.

Importance: Precisely decoding brain dysfunction from high-dimensional functional recordings is crucial for advancing our understanding of brain dysfunction in brain disorders. Self-supervised learning (SSL) models offer a transformative approach for mapping dependencies in functional neuroimaging data. Leveraging the intrinsic organization of brain signals for comprehensive feature extraction, these models enable the analysis of critical neurofunctional features within a clinically relevant framework, overcoming challenges related to data heterogeneity and the scarcity of labeled data. Highlight: This paper provides a comprehensive overview of SSL techniques applied to functional neuroimaging data, such as functional magnetic resonance imaging and electroencephalography, with a specific focus on their applications in various neuropsychiatric disorders. We discuss 3 main categories of SSL methods: contrastive learning, generative learning, and generative-contrastive methods, outlining their basic principles and representative methods. Critically, we highlight the potential of SSL in addressing data scarcity, multimodal integration, and dynamic network modeling for disease detection and prediction. We showcase successful applications of these techniques in understanding and classifying conditions such as Alzheimer's disease, Parkinson's disease, and epilepsy, demonstrating their potential in downstream neuropsychological applications. Conclusion: SSL models provide a scalable and effective methodology for individual detection and prediction in brain disorders. Despite current limitations in interpretability and data heterogeneity, the potential of SSL for future clinical applications, particularly in the areas of transdiagnostic psychosis subtyping and decoding task-based brain functional recordings, is substantial.

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