网络闭塞敏感性分析识别脑年龄预测的区域贡献

IF 3.3 2区 医学 Q1 NEUROIMAGING
Lingfei He, Siyu Wang, Cheng Chen, Yaping Wang, Qingcheng Fan, Congying Chu, Lingzhong Fan, Junhai Xu
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引用次数: 0

摘要

利用卷积神经网络(cnn)的深度学习框架经常用于脑年龄预测,并取得了出色的表现。然而,深度学习仍然是一个黑盒子,因为很难解释大脑的哪些部分对预测有重要贡献。为了应对这一挑战,我们首先在一个大样本数据集(N = 3054,年龄范围=[8,80岁])上训练了一个轻量级的全CNN模型,用于大脑年龄估计,并在一个独立数据集(N = 555,年龄范围=[8,80岁])上进行了测试。然后,我们开发了一个可解释的方案,将网络闭塞敏感性分析(NOSA)与细粒度的人脑图谱相结合,以揭示模型的习得不变性。我们的研究结果表明,背外侧、背内侧额叶皮层、前扣带皮层和丘脑对整个生命周期的年龄预测贡献最大。更有趣的是,我们观察到不同的区域在对特定年龄组的预测中表现出不同的模式,而且双脑半球对预测的贡献也不同。额叶区域是发育和衰老阶段的重要预测因素,而丘脑在整个生命周期中保持相对稳定,并与其他区域的变化显著相关。在衰老阶段,外侧和内侧颞区逐渐受累。在网络水平上,从发育阶段到衰老阶段,额顶叶网络和默认模式网络的贡献呈倒u型。该框架可以确定脑年龄预测模型的区域贡献,这有助于提高模型作为衰老生物标志物时的可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Network Occlusion Sensitivity Analysis Identifies Regional Contributions to Brain Age Prediction

Network Occlusion Sensitivity Analysis Identifies Regional Contributions to Brain Age Prediction

Deep learning frameworks utilizing convolutional neural networks (CNNs) have frequently been used for brain age prediction and have achieved outstanding performance. Nevertheless, deep learning remains a black box as it is hard to interpret which brain parts contribute significantly to the predictions. To tackle this challenge, we first trained a lightweight, fully CNN model for brain age estimation on a large sample data set (N = 3054, age range = [8,80 years]) and tested it on an independent data set (N = 555, age range = [8,80 years]). We then developed an interpretable scheme combining network occlusion sensitivity analysis (NOSA) with a fine-grained human brain atlas to uncover the learned invariance of the model. Our findings show that the dorsolateral, dorsomedial frontal cortex, anterior cingulate cortex, and thalamus had the highest contributions to age prediction across the lifespan. More interestingly, we observed that different regions showed divergent patterns in their predictions for specific age groups and that the bilateral hemispheres contributed differently to the predictions. Regions in the frontal lobe were essential predictors in both the developmental and aging stages, with the thalamus remaining relatively stable and saliently correlated with other regional changes throughout the lifespan. The lateral and medial temporal brain regions gradually became involved during the aging phase. At the network level, the frontoparietal and the default mode networks show an inverted U-shape contribution from the developmental to the aging stages. The framework could identify regional contributions to the brain age prediction model, which could help increase the model interpretability when serving as an aging biomarker.

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来源期刊
Human Brain Mapping
Human Brain Mapping 医学-核医学
CiteScore
8.30
自引率
6.20%
发文量
401
审稿时长
3-6 weeks
期刊介绍: Human Brain Mapping publishes peer-reviewed basic, clinical, technical, and theoretical research in the interdisciplinary and rapidly expanding field of human brain mapping. The journal features research derived from non-invasive brain imaging modalities used to explore the spatial and temporal organization of the neural systems supporting human behavior. Imaging modalities of interest include positron emission tomography, event-related potentials, electro-and magnetoencephalography, magnetic resonance imaging, and single-photon emission tomography. Brain mapping research in both normal and clinical populations is encouraged. Article formats include Research Articles, Review Articles, Clinical Case Studies, and Technique, as well as Technological Developments, Theoretical Articles, and Synthetic Reviews. Technical advances, such as novel brain imaging methods, analyses for detecting or localizing neural activity, synergistic uses of multiple imaging modalities, and strategies for the design of behavioral paradigms and neural-systems modeling are of particular interest. The journal endorses the propagation of methodological standards and encourages database development in the field of human brain mapping.
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