Transformer-based approaches for neuroimaging: an in-depth review of their role in classification and regression tasks.

IF 3.4 3区 医学 Q2 NEUROSCIENCES Reviews in the Neurosciences Pub Date : 2024-09-30 DOI:10.1515/revneuro-2024-0088
Xinyu Zhu, Shen Sun, Lan Lin, Yutong Wu, Xiangge Ma
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Abstract

In the ever-evolving landscape of deep learning (DL), the transformer model emerges as a formidable neural network architecture, gaining significant traction in neuroimaging-based classification and regression tasks. This paper presents an extensive examination of transformer's application in neuroimaging, surveying recent literature to elucidate its current status and research advancement. Commencing with an exposition on the fundamental principles and structures of the transformer model and its variants, this review navigates through the methodologies and experimental findings pertaining to their utilization in neuroimage classification and regression tasks. We highlight the transformer model's prowess in neuroimaging, showcasing its exceptional performance in classification endeavors while also showcasing its burgeoning potential in regression tasks. Concluding with an assessment of prevailing challenges and future trajectories, this paper proffers insights into prospective research directions. By elucidating the current landscape and envisaging future trends, this review enhances comprehension of transformer's role in neuroimaging tasks, furnishing valuable guidance for further inquiry.

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基于变压器的神经成像方法:深入评述其在分类和回归任务中的作用。
在不断发展的深度学习(DL)领域,变压器模型成为一种强大的神经网络架构,在基于神经成像的分类和回归任务中获得了显著的应用。本文对变压器在神经成像中的应用进行了广泛的研究,并对近期的文献进行了调查,以阐明其现状和研究进展。本综述首先阐述了变压器模型及其变体的基本原理和结构,然后介绍了将其用于神经图像分类和回归任务的方法和实验结果。我们强调了变压器模型在神经成像领域的优势,展示了其在分类工作中的卓越表现,同时也展示了其在回归任务中的蓬勃潜力。最后,本文对当前的挑战和未来的发展轨迹进行了评估,并对未来的研究方向提出了见解。通过阐明当前形势和展望未来趋势,这篇综述加深了人们对变压器在神经成像任务中的作用的理解,为进一步研究提供了宝贵的指导。
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来源期刊
Reviews in the Neurosciences
Reviews in the Neurosciences 医学-神经科学
CiteScore
9.40
自引率
2.40%
发文量
54
审稿时长
6-12 weeks
期刊介绍: Reviews in the Neurosciences provides a forum for reviews, critical evaluations and theoretical treatment of selective topics in the neurosciences. The journal is meant to provide an authoritative reference work for those interested in the structure and functions of the nervous system at all levels of analysis, including the genetic, molecular, cellular, behavioral, cognitive and clinical neurosciences. Contributions should contain a critical appraisal of specific areas and not simply a compilation of published articles.
期刊最新文献
Human foot cutaneous receptors function: clinical findings and prospects of using medical devices to stimulate mechanoreceptors in neurorehabilitation. Transformer-based approaches for neuroimaging: an in-depth review of their role in classification and regression tasks. Involvement of kinases in memory consolidation of inhibitory avoidance training. Neurobiological mechanisms in the kynurenine pathway and major depressive disorder. Dissecting the immune response of CD4+ T cells in Alzheimer's disease.
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