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解释基于深度学习的静息态功能连接数据表征:聚焦于解读自闭症谱系障碍中的非线性模式。

Explaining deep learning-based representations of resting state functional connectivity data: focusing on interpreting nonlinear patterns in autism spectrum disorder.

作者信息

Kim Young-Geun, Ravid Orren, Zheng Xinyuan, Kim Yoojean, Neria Yuval, Lee Seonjoo, He Xiaofu, Zhu Xi

机构信息

Department of Psychiatry, Columbia University Irving Medical Center, New York, NY, United States.

Department of Biostatistics, Columbia University Irving Medical Center, New York, NY, United States.

出版信息

Front Psychiatry. 2024 May 20;15:1397093. doi: 10.3389/fpsyt.2024.1397093. eCollection 2024.

Abstract

BACKGROUND

Resting state Functional Magnetic Resonance Imaging fMRI (rs-fMRI) has been used extensively to study brain function in psychiatric disorders, yielding insights into brain organization. However, the high dimensionality of the rs-fMRI data presents significant challenges for data analysis. Variational autoencoders (VAEs), a type of neural network, have been instrumental in extracting low-dimensional latent representations of resting state functional connectivity (rsFC) patterns, thereby addressing the complex nonlinear structure of rs-fMRI data. Despite these advances, interpreting these latent representations remains a challenge. This paper aims to address this gap by developing explainable VAE models and testing their utility using rs-fMRI data in autism spectrum disorder (ASD).

METHODS

One-thousand one hundred and fifty participants (601 healthy controls [HC] and 549 patients with ASD) were included in the analysis. RsFC correlation matrices were extracted from the preprocessed rs-fMRI data using the Power atlas, which includes 264 regions of interest (ROIs). Then VAEs were trained in an unsupervised manner. Lastly, we introduce our latent contribution scores to explain the relationship between estimated representations and the original rs-fMRI brain measures.

RESULTS

We quantified the latent contribution scores for both the ASD and HC groups at the network level. We found that both ASD and HC groups share the top network connectivitives contributing to all estimated latent components. For example, latent 0 was driven by rsFC within ventral attention network (VAN) in both the ASD and HC. However, we found significant differences in the latent contribution scores between the ASD and HC groups within the VAN for latent 0 and the sensory/somatomotor network for latent 2.

CONCLUSION

This study introduced latent contribution scores to interpret nonlinear patterns identified by VAEs. These scores effectively capture changes in each observed rsFC feature as the estimated latent representation changes, enabling an explainable deep learning model that better understands the underlying neural mechanisms of ASD.

摘要

背景

静息态功能磁共振成像(rs-fMRI)已被广泛用于研究精神疾病中的脑功能,从而深入了解大脑组织。然而,rs-fMRI数据的高维度给数据分析带来了重大挑战。变分自编码器(VAE)作为一种神经网络,在提取静息态功能连接(rsFC)模式的低维潜在表示方面发挥了重要作用,从而解决了rs-fMRI数据的复杂非线性结构问题。尽管取得了这些进展,但解释这些潜在表示仍然是一个挑战。本文旨在通过开发可解释的VAE模型并使用自闭症谱系障碍(ASD)的rs-fMRI数据测试其效用,来填补这一空白。

方法

1150名参与者(601名健康对照[HC]和549名ASD患者)纳入分析。使用包含264个感兴趣区域(ROI)的Power图谱从预处理的rs-fMRI数据中提取rsFC相关矩阵。然后以无监督方式训练VAE。最后,我们引入潜在贡献分数来解释估计表示与原始rs-fMRI脑测量之间的关系。

结果

我们在网络层面量化了ASD组和HC组的潜在贡献分数。我们发现,ASD组和HC组在对所有估计潜在成分有贡献的顶级网络连接性方面具有共性。例如,潜在成分0在ASD组和HC组中均由腹侧注意网络(VAN)内的rsFC驱动。然而,我们发现,在潜在成分0的VAN内以及潜在成分2的感觉/躯体运动网络中,ASD组和HC组的潜在贡献分数存在显著差异。

结论

本研究引入潜在贡献分数来解释VAE识别的非线性模式。这些分数有效地捕捉了随着估计的潜在表示变化,每个观察到的rsFC特征的变化,从而实现了一个能够更好地理解ASD潜在神经机制的可解释深度学习模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2216/11145064/8d35d0f7c8ed/fpsyt-15-1397093-g001.jpg

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