拉普拉斯特征映射可以用于区分健康人与法洛四联症患者吗?

B. Jacobs, Amalia Villa Gómez, Jonathan Moeyersons, S. Huffel, R. Willems, C. Varon
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引用次数: 1

摘要

法洛四联症(ToF)是一种先天性结构性心脏病。虽然早期诊断和矫正手术使大多数患者能够过上正常的生活,但有些患者的病情会慢慢恶化。目前无法量化恶化和预测这些事件,因此需要采用数据驱动的方法。拉普拉斯特征映射(LEs)是一种降维技术,可用于将多导联心电图投影到较低维空间。本初步研究旨在评估LEs表征ToF患者恶化的能力。基于20例健康对照的12导联心电图记录,构建了一个通用的LE模型。开发了一组距离度量来量化该LE模型中不同ECG记录之间的总体变化。在大多数距离指标上,对照组和ToF受试者之间存在统计学上的显著差异。对ToF患者随时间变化的分析表明,所有指标的距离随时间增加的总体趋势,这可能与病情恶化有关。这表明LEs在多导联心电图处理中的相关性,特别是在恶化分析中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can Laplacian Eigenmaps Be Used for Differentiation Between Healthy Subjects and Patients With Corrected Tetralogy of Fallot?
Tetralogy of Fallot (ToF) is a congenital structural heart disease. While early diagnosis and corrective surgery allow most patients to live normal lives, some patients slowly deteriorate. The current inability to quantify the deterioration and predict these events prompts a data driven approach. Laplacian Eigenmaps (LEs) are a dimensionality reduction technique that can be used to project multi-lead ECGs onto a lower dimensional space. This pilot study aims to evaluate the ability of LEs to characterize deterioration of ToF patients. A general LE model is constructed, based on the 12-lead ECG recordings of 20 healthy controls. A set of distance metrics are developed to quantify the overall changes between different ECG recordings within this LE model. Statistically significant differences between control and ToF subjects were observed for most of the distance metrics. The analysis of changes over time in ToF patients indicates a general trend of increased distance over time in all the metrics, which can be related to a worsening condition. This indicates the relevance of LEs in multi-lead ECG processing, particularly for deterioration analysis.
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