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Hierarchical Neural Network with Layer-wise Relevance Propagation for Interpretable Multiclass Neural State Classification

机译:具有层面相关性传播的分层神经网络,可解释的多磅神经状态分类

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Multiclass machine learning classification has many potential applications for both clinical neuroscience and data-driven biomarker discovery. However, to be applicable in these contexts, the machine learning methods must provide a degree of insight into their decision-making processes during training and deployment phases. We propose the use of a hierarchical architecture with layer-wise relevance propagation (LRP) for explainable multiclass classification of neural states. This approach provides both local and global explainability and is suitable for identifying neurophysiological biomarkers, for assessing models based on established domain knowledge during development, and for validation during deployment. We develop a hierarchical classifier composed of multilayer perceptrons (MLP) for sleep stage classification using rodent electroencephalogram (EEG) data and compare this implementation to a standard multiclass MLP classifier with LRP. The hierarchical classifier obtained explainability results that better aligned with domain knowledge than the standard multiclass classifier. It identified $lpha$ (10–12 Hz), 0 (5–9 Hz), and β (13–30 Hz) and 0 as key features for discriminating awake versus sleep and rapid eye movement (REM) versus non-REM (NREM), respectively. The standard multiclass MLP did not identify any key frequency bands for the NREM and REM classes, but did identify δ (1–4 Hz), 0, and $lpha$ as more important than β, slow-y (31–55 Hz), and fast-y (65-100Hz) oscillations. The two methods obtained comparable classification performance. These results suggest that LRP with hierarchical classifiers is a promising approach to identifying biomarkers that differentiate multiple neurophysiological states.
机译:多标配机器学习分类对临床神经科学和数据驱动生物标志物发现具有许多潜在的应用。但是,要适用于这些上下文,机器学习方法必须在培训和部署阶段期间提供对其决策过程的洞察程度。我们建议使用具有层面相关性传播(LRP)的分层体系结构,以说明神经状态的多种多组分类。这种方法提供了本地和全球可解释性,适用于识别神经生理学生物标志物,用于根据开发期间的既定领域知识评估模型,以及在部署期间验证。我们开发由使用啮齿动物脑电图(EEG)数据的睡眠阶段分类的多层Perceptrons(MLP)组成的分层分类器,并将该实现与LRP的标准多键MLP分类器进行比较。分层分类器获得了与域知识更好地对齐的可扩展性,而不是标准多字符分类器。它鉴定了 $ alpha $ (10-12Hz),0(5-9Hz)和β(13-30 Hz)和0作为用于区分唤醒的关键特征,分别与睡眠和快速的眼睛运动(REM)与非REM(NREM)相比。标准多键MLP未识别NREM和REM类的任何键频段,但确实识别δ(1-4 Hz),0和 $ alpha $ 与β,慢-y(31-55Hz)和Fast-Y(65-100Hz)振荡一样重要。这两种方法获得了可比的分类性能。这些结果表明,具有等级分类器的LRP是识别区分多种神经生理状态的生物标志物的有希望的方法。

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