用于心电图分类的热对准变压器

Xiaoyu Li, Chen Li, Yuhua Wei, Yuyao Sun, Jishang Wei, Xiang Li, B. Qian
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引用次数: 8

摘要

心电图(ECG)是医疗保健中重要的诊断工具之一。除了变形金刚之外,各种深度学习模型已经被探索并应用于将ECG模式映射到心脏异常。从自然语言处理到具有高级功能的计算机视觉,变形模型已被采用。最近,即使在中等规模的数据集上,视觉转换器也表现出了出色的性能。然而,在心电图数据集上天真地应用视觉变压器会导致效果不佳。在本文中,我们提出了一种新的网络,称为拍对准变压器(BaT),一种充分利用心电周期的分层变压器。我们组织和处理输入心电图作为多个对齐的节拍,而不是单一的时间序列。在BaT中,采用基于移位窗口的转换块(SW Block)来学习每个节拍的表示,并设计聚合块来在节拍表示之间交换信息。嵌套的SW块和聚合块形成了BaT的热感知层次结构。通过这种方式,新的数据格式和BaT分层结构提高了Transformer在心电分类方面的性能。通过对公共心电数据集的实验,我们观察到BaT优于其他基于变压器的模型,并且与其他最先进的方法相比具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BaT: Beat-aligned Transformer for Electrocardiogram Classification
Electrocardiogram (ECG) is one of the critical diagnostic tools in healthcare. Various deep learning models, except Transformers, have been explored and applied to map ECG patterns to heart abnormalities. Transformer models have been adopted from natural language processing to computer vision with advanced features. Most recently, vision transformers show exceptional performances, even on moderate-scale datasets. However, naively applying vision transformers on electrocardiogram datasets leads to poor results. In this paper, we propose a novel network called Beat-aligned Transformer (BaT), a hierarchical Transformer that sufficiently exploits the cyclicity of ECG. We organize and treat an input ECG as multiple aligned beats instead of a single time series. In the BaT, shifted-window-based Transformer blocks (SW Block) are adopted to learn the representation for each beat, and aggregation blocks are designed to exchange information among the beat representations. Nested SW Blocks and aggregation blocks form a beat-aware hierarchical structure of BaT. In this way, the new data format and the BaT hierarchical structure boost Transformer performance on ECG classification. From the experiments on public ECG datasets, we observe BaT outperforms other Transformer-based models and achieves competitive performance compared with other state-of-the-art methods.
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