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具有可解释性的深度学习用于表征动态脑功能连接中与年龄相关的内在差异。

Deep learning with explainability for characterizing age-related intrinsic differences in dynamic brain functional connectivity.

作者信息

Qiao Chen, Gao Bin, Liu Yuechen, Hu Xinyu, Hu Wenxing, Calhoun Vince D, Wang Yu-Ping

机构信息

School of Mathematics and Statistics, Xi'an Jiaotong University, Xi'an, 710049, PR China.

Department of Biomedical Engineering, Tulane University, New Orleans, LA, 70118, USA.

出版信息

Med Image Anal. 2023 Dec;90:102941. doi: 10.1016/j.media.2023.102941. Epub 2023 Sep 1.

DOI:10.1016/j.media.2023.102941
PMID:37683445
Abstract

Although many deep learning models-based medical applications are performance-driven, i.e., accuracy-oriented, their explainability is more critical. This is especially the case with neuroimaging, where we are often interested in identifying biomarkers underlying brain development or disorders. Herein we propose an explainable deep learning approach by elucidating the information transmission mechanism between two layers of a deep network with a joint feature selection strategy that considers several shallow-layer explainable machine learning models and sparse learning of the deep network. At the end, we apply and validate the proposed approach to the analysis of dynamic brain functional connectivity (FC) from fMRI in a brain development study. Our approach can identify the differences within and between functional brain networks over age during development. The results indicate that the brain network transits from undifferentiated structures to more specialized and organized ones, and the information processing ability becomes more efficient as age increases. In addition, we detect two developmental patterns in the brain network: the FCs in regions related to visual and sound processing and mental regulation become weakened, while those between regions corresponding to emotional processing and cognitive activities are enhanced.

摘要

尽管许多基于深度学习模型的医学应用都是性能驱动的,即以准确性为导向,但它们的可解释性更为关键。神经成像尤其如此,在神经成像中,我们通常感兴趣的是识别大脑发育或疾病背后的生物标志物。在此,我们提出一种可解释的深度学习方法,通过一种联合特征选择策略来阐明深度网络两层之间的信息传递机制,该策略考虑了几种浅层可解释机器学习模型以及深度网络的稀疏学习。最后,我们将所提出的方法应用于一项大脑发育研究中功能磁共振成像(fMRI)的动态脑功能连接(FC)分析并进行验证。我们的方法可以识别发育过程中不同年龄段大脑功能网络内部和之间的差异。结果表明,大脑网络从未分化的结构转变为更专门化和有组织的结构,并且随着年龄的增长,信息处理能力变得更高效。此外,我们在大脑网络中检测到两种发育模式:与视觉和声音处理以及心理调节相关区域的功能连接减弱,而与情绪处理和认知活动对应的区域之间的功能连接增强。

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引用本文的文献

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An Explainable Unified Framework of Spatio-Temporal Coupling Learning With Application to Dynamic Brain Functional Connectivity Analysis.一种可解释的时空耦合学习统一框架及其在动态脑功能连接分析中的应用
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Fingerprints of decreased cognitive performance on fractal connectivity dynamics in healthy aging.健康老年人认知表现下降的分形连通动力学特征。
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