fMRI- s4:学习短期和长期动态fMRI依赖使用1D卷积和状态空间模型

A. E. Gazzar, R. Thomas, G. Wingen
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引用次数: 2

摘要

静息状态脑功能活动到非成像表型的单受试者映射是神经成像的主要目标。目前应用的绝大多数学习方法要么依赖于静态表示,要么依赖于短期时间相关性。这与大脑活动的本质是不一致的,大脑活动是动态的,表现出短期和长期的依赖性。此外,新的复杂的深度学习方法已经开发出来,并在单个任务/数据集上得到了验证。将这些模型应用于不同目标的研究通常需要穷尽的超参数搜索、模型工程和试错,以获得与更简单的线性模型竞争的结果。这反过来又限制了它们的采用,并阻碍了在一个快速发展的研究领域进行公平的基准测试。为此,我们提出了fMRI-S4;一个多功能的深度学习模型,用于从静息状态功能磁共振成像扫描的时间历程中分类表型和精神疾病。fMRI-S4使用1D卷积和最近引入的状态空间模型S4捕捉信号中的短期和长期时间依赖性。所提出的体系结构是轻量级的、样本效率高的、跨任务/数据集健壮的。我们在三个多位点rs-fMRI数据集上验证了fMRI-S4在诊断重度抑郁症(MDD)、自闭症谱系障碍(ASD)和性别分类方面的任务。我们表明,fMRI-S4可以在所有三个任务上优于现有的方法,并且可以作为一个即插即用模型进行训练,而无需对每个设置进行特殊的超参数调整
本文章由计算机程序翻译,如有差异,请以英文原文为准。
fMRI-S4: learning short- and long-range dynamic fMRI dependencies using 1D Convolutions and State Space Models
Single-subject mapping of resting-state brain functional activity to non-imaging phenotypes is a major goal of neuroimaging. The large majority of learning approaches applied today rely either on static representations or on short-term temporal correlations. This is at odds with the nature of brain activity which is dynamic and exhibit both short- and long-range dependencies. Further, new sophisticated deep learning approaches have been developed and validated on single tasks/datasets. The application of these models for the study of a different targets typically require exhaustive hyperparameter search, model engineering and trial and error to obtain competitive results with simpler linear models. This in turn limit their adoption and hinder fair benchmarking in a rapidly developing area of research. To this end, we propose fMRI-S4; a versatile deep learning model for the classification of phenotypes and psychiatric disorders from the timecourses of resting-state functional magnetic resonance imaging scans. fMRI-S4 capture short- and long- range temporal dependencies in the signal using 1D convolutions and the recently introduced state-space models S4. The proposed architecture is lightweight, sample-efficient and robust across tasks/datasets. We validate fMRI-S4 on the tasks of diagnosing major depressive disorder (MDD), autism spectrum disorder (ASD) and sex classifcation on three multi-site rs-fMRI datasets. We show that fMRI-S4 can outperform existing methods on all three tasks and can be trained as a plug&play model without special hyperpararameter tuning for each setting
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