基于数据膨胀和分类模型可解释性的任务相关动态脑连通性估计。

IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Peter Rogelj
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引用次数: 0

摘要

大脑功能的研究通常涉及分析连接大脑各个区域的内在大脑网络之间的任务相关转换。脑功能连接分析方法旨在估计这些网络,但受限于窗口函数的统计约束,这降低了时间分辨率,阻碍了高动态过程的可解释性。在这项工作中,我们提出了一种通过脑电分类的可解释性来分析功能连接的新方法。与将原始数据压缩为提取特征的传统方法不同,我们的方法通过将原始EEG数据分解为解释应用领域过程的有意义的组件来扩展原始EEG数据。为了揭示影响分类决策的大脑连通性,我们引入了一种新的动态影响数据膨胀(DIDI)方法,该方法提取代表电极区域之间相互作用的信号。然后使用端到端的神经网络分类器架构对这些膨胀的数据进行分类,这些分类器架构是为原始EEG信号设计的。来自训练分类器的显著性图估计揭示了影响分类决策的连通性动态,可以将其可视化为动态连通性支持图,以提高可解释性。该方法在两个公开可用的数据集上进行了演示:一个用于想象的运动分类,另一个用于情绪分类。结果突出了我们的方法的双重好处:除了提供对连接动态的可解释的见解之外,它还提高了分类准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Task-Related Dynamic Brain Connectivity via Data Inflation and Classification Model Explainability.

Study of brain function often involves analyzing task-related switching between intrinsic brain networks, which connect various brain regions. Functional brain connectivity analysis methods aim to estimate these networks but are limited by the statistical constraints of windowing functions, which reduce temporal resolution and hinder explainability of highly dynamic processes. In this work, we propose a novel approach to functional connectivity analysis through the explainability of EEG classification. Unlike conventional methods that condense raw data into extracted features, our approach inflates raw EEG data by decomposition into meaningful components that explain processes in the application domain. To uncover the brain connectivity that affects classification decisions, we introduce a new method of dynamic influence data inflation (DIDI), which extracts signals representing interactions between electrode regions. These inflated data are then classified using an end-to-end neural network classifier architecture designed for raw EEG signals. Saliency map estimation from trained classifiers reveals the connectivity dynamics affecting classification decisions, which can be visualized as dynamic connectivity support maps for improved interpretability. The methodology is demonstrated on two publicly available datasets: one for imagined motor movement classification and the other for emotion classification. The results highlight the dual benefits of our approach: in addition to providing interpretable insights into connectivity dynamics it increases classification accuracy.

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来源期刊
Neuroinformatics
Neuroinformatics 医学-计算机:跨学科应用
CiteScore
6.00
自引率
6.70%
发文量
54
审稿时长
3 months
期刊介绍: Neuroinformatics publishes original articles and reviews with an emphasis on data structure and software tools related to analysis, modeling, integration, and sharing in all areas of neuroscience research. The editors particularly invite contributions on: (1) Theory and methodology, including discussions on ontologies, modeling approaches, database design, and meta-analyses; (2) Descriptions of developed databases and software tools, and of the methods for their distribution; (3) Relevant experimental results, such as reports accompanie by the release of massive data sets; (4) Computational simulations of models integrating and organizing complex data; and (5) Neuroengineering approaches, including hardware, robotics, and information theory studies.
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