Jiaqi Ding, Tingting Dan, Ziquan Wei, Hyuna Cho, Paul J. Laurienti, Won Hwa Kim, Guorong Wu
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引用次数: 0
摘要
现有的功能磁共振成像(fMRI)数据量空前巨大,这为利用数据驱动方法了解功能波动与人类认知/行为之间的关系提供了新的机会。为此,人们在机器学习方面做出了巨大努力,以便从不断变化的血氧水平依赖性(BOLD)信号容积图像中预测认知状态。然而,由于大脑功能的复杂性,对学习性能和发现的评估往往与当前的技术水平(SOTA)不一致。通过利用现有的大规模神经影像数据(来自六个公共数据库的 34,887 个数据样本),我们试图通过将方法论基础与神经科学领域的知识联系起来,为功能神经影像深度模型的设计建立一个有理有据的经验指南。具体来说,我们将重点放在:(1)目前 SOTA 在使用 fMRI 进行认知任务识别和疾病诊断方面的表现如何?(2) 目前的深度模型有哪些局限性? (3) 为新的神经成像应用选择合适的机器学习骨干的一般准则是什么?为了回答上述悬而未决的问题,我们在不同的设置下进行了全面的评估和统计分析。
Machine Learning on Dynamic Functional Connectivity: Promise, Pitfalls, and Interpretations
An unprecedented amount of existing functional Magnetic Resonance Imaging
(fMRI) data provides a new opportunity to understand the relationship between
functional fluctuation and human cognition/behavior using a data-driven
approach. To that end, tremendous efforts have been made in machine learning to
predict cognitive states from evolving volumetric images of
blood-oxygen-level-dependent (BOLD) signals. Due to the complex nature of brain
function, however, the evaluation on learning performance and discoveries are
not often consistent across current state-of-the-arts (SOTA). By capitalizing
on large-scale existing neuroimaging data (34,887 data samples from six public
databases), we seek to establish a well-founded empirical guideline for
designing deep models for functional neuroimages by linking the methodology
underpinning with knowledge from the neuroscience domain. Specifically, we put
the spotlight on (1) What is the current SOTA performance in cognitive task
recognition and disease diagnosis using fMRI? (2) What are the limitations of
current deep models? and (3) What is the general guideline for selecting the
suitable machine learning backbone for new neuroimaging applications? We have
conducted a comprehensive evaluation and statistical analysis, in various
settings, to answer the above outstanding questions.