生物医学图像遥感预测心肌梗死的准确性评价

A. Lay-Ekuakille, G. Vendramin, A. Trotta, I. Sgura, T. Zielinski, P. Turcza
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引用次数: 5

摘要

心肌梗死(MI)可以从临床、心电图(ECG)、生化和病理特征等多个不同的角度来定义。MI一词还具有社会和心理影响,既可作为主要健康问题的指标,也可作为人口统计和临床试验结果中疾病流行程度的衡量标准。在遥远的过去,人们普遍认为心肌梗死是一种临床症状。在世界卫生组织(WHO)的疾病流行研究中,心肌梗死的定义是三种特征中的两种:典型症状(即胸部不适)、酶升高和涉及Q波发展的典型心电图模式。用于从心脏仪器获取信号的生物医学传感器,即使是复杂的,也不能准确地揭示并帮助医生一目了然地理解导致心肌梗死的病理。本文根据Mumford-Shah模型,基于水平集进化和变分方法的结合,提出了一种集成算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accuracy assessment of sensed biomedical images for myocardial infarction prediction
Myocardial infarction (MI) can be defined from a number of different perspectives related to clinical, electrocardiographic (ECG), biochemical and pathologic characteristics. The term MI also has social and psychological implications, both as an indicator of a major health problem and as a measure of disease prevalence in population statistics and outcomes of clinical trials. In the distant past, a general consensus existed for the clinical entity designated as MI. In studies of disease prevalence by the World Health Organization (WHO), MI was defined by a combination of two of three characteristics: typical symptoms (i.e., chest discomfort), enzyme rise and a typical ECG pattern involving the development of Q waves. Biomedical sensors dedicated to acquire signals from cardiac instrumentation, even if sophisticated, cannot precisely reveal and help doctors to understand, at a glance, pathologies leading towards MI. This paper traces out an integrated algorithm based on a combination of level set evolution and variational approach according to Mumford-Shah model.
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