Classification of Atrial Tachycardia Types Using Dimensional Transforms of ECG Signals and Machine Learning

S. Ruipérez-Campillo, J. Millet-Roig, F. Castells
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Abstract

Accurate non-invasive diagnoses in the context of cardiac diseases are problems that hitherto remain unresolved. We propose an unsupervised classification of atrial flutter (AFL) using dimensional transforms of ECG signals in high dimensional vector spaces. A mathematical model is used to generate synthetic signals based on clinical AFL signals, and hierarchical clustering analysis and novel machine learning (ML) methods are designed for the un-supervised classification. Metrics and accuracy parameters are created to assess the performance of the model, proving the power of this novel approach for the diagnosis of AFL from ECG using innovative AI algorithms.
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基于心电信号维数变换和机器学习的房性心动过速类型分类
在心脏疾病的背景下,准确的非侵入性诊断是迄今为止尚未解决的问题。我们提出了一种无监督心房扑动(AFL)的分类方法,该方法使用了高维向量空间中心电信号的量纲变换。基于临床AFL信号,采用数学模型生成合成信号,设计了分层聚类分析和新型机器学习方法进行无监督分类。创建了度量和精度参数来评估模型的性能,证明了这种使用创新人工智能算法从ECG诊断AFL的新方法的强大功能。
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