Comprehensive review of Transformer-based models in neuroscience, neurology, and psychiatry

Brain-X Pub Date : 2024-04-26 DOI:10.1002/brx2.57
Shan Cong, Hang Wang, Yang Zhou, Zheng Wang, Xiaohui Yao, Chunsheng Yang
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Abstract

This comprehensive review aims to clarify the growing impact of Transformer-based models in the fields of neuroscience, neurology, and psychiatry. Originally developed as a solution for analyzing sequential data, the Transformer architecture has evolved to effectively capture complex spatiotemporal relationships and long-range dependencies that are common in biomedical data. Its adaptability and effectiveness in deciphering intricate patterns within medical studies have established it as a key tool in advancing our understanding of neural functions and disorders, representing a significant departure from traditional computational methods. The review begins by introducing the structure and principles of Transformer architectures. It then explores their applicability, ranging from disease diagnosis and prognosis to the evaluation of cognitive processes and neural decoding. The specific design modifications tailored for these applications and their subsequent impact on performance are also discussed. We conclude by providing a comprehensive assessment of recent advancements, prevailing challenges, and future directions, highlighting the shift in neuroscientific research and clinical practice towards an artificial intelligence-centric paradigm, particularly given the prominence of Transformer architecture in the most successful large pre-trained models. This review serves as an informative reference for researchers, clinicians, and professionals who are interested in understanding and harnessing the transformative potential of Transformer-based models in neuroscience, neurology, and psychiatry.

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全面回顾神经科学、神经学和精神病学中基于变压器的模型
这篇综合评论旨在阐明基于 Transformer 的模型在神经科学、神经学和精神病学领域日益增长的影响。Transformer 架构最初是作为分析顺序数据的解决方案而开发的,如今已发展到能有效捕捉生物医学数据中常见的复杂时空关系和长程依赖关系。它在破译医学研究中错综复杂的模式方面的适应性和有效性使其成为促进我们对神经功能和失调的理解的重要工具,与传统的计算方法大相径庭。综述首先介绍了变压器架构的结构和原理。然后探讨其适用范围,从疾病诊断和预后到认知过程评估和神经解码。此外,还讨论了为这些应用量身定制的具体设计修改及其对性能的后续影响。最后,我们对最新进展、当前挑战和未来方向进行了全面评估,强调了神经科学研究和临床实践向以人工智能为中心的范式转变,特别是考虑到 Transformer 架构在最成功的大型预训练模型中的突出地位。这篇综述为有志于了解和利用基于 Transformer 的模型在神经科学、神经学和精神病学领域的变革潜力的研究人员、临床医生和专业人士提供了翔实的参考资料。
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