利用时间依赖性血浆代谢物对急性心肌梗死进行计算机辅助诊断

A. Naglah, A. DeFilippis, F. Khalifa, N. Singam, B. Aladili, Mohammadi Ghazal, G. Giridharan, A. Khalil, Adel Said Elmaghraby, A. El-Baz
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引用次数: 1

摘要

急性心肌梗死(MI)是一种复杂的疾病,多种病因可导致急性心肌梗死。指南承认两种类型的心肌梗死:血栓性(1型)和非血栓性(2型),它们的患病率相当相同,但需要不同的治疗。不幸的是,区分1型和2型的诊断标准需要侵入性手术。这导致了对疑似心肌梗死患者的低效率和次优护理。本文提出了一种新的机器学习系统,该系统通过分析心肌梗死患者队列中多个时间点血浆代谢物与血栓形成之间的关系来检测血栓形成的生物标志物。研究数据是通过一种新引入的非靶向技术收集的,该技术可评估血液样本中已知和未知代谢物的数量。我们的系统使用递归特征消除(RFE)和多层感知器(MLP)神经网络在每个时间点检测相关代谢物,然后使用集成学习的加权投票算法。我们的实验实现了91%的准确性,89%的敏感性和94%的特异性对心肌梗塞的诊断。
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Computer-Aided Diagnosis of Acute Myocardial Infarction using Time-Dependent Plasma Metabolites
Acute myocardial infarction (MI) is complicated, and multiple etiologies can result in this clinical condition. Guidelines recognize two categories of MI: Thrombotic (Type 1) and non-thrombotic (Type 2), that have quite same prevalence but require unlike treatment. Unfortunately, diagnostic criteria to differentiate between Type 1 and Type 2 require invasive procedures. This results in inefficient and sub-optimal care of patients suspected of MI. This paper presents a novel machine-learning system that detects biomarkers of thrombus formation by analyzing the association between plasma metabolites with the formation of thrombosis in cohort of MI patients at multiple time-points. Study data are collected by a newly introduced non-targeted technique that evaluates the quantities of both known and unknown metabolites from blood samples. Our system uses recursive feature elimination (RFE) and multi-layer perceptron (MLP) neural network to detect associated metabolites at each time-point followed by weighted-voting algorithm using ensemble learning. Our experiment achieves an accuracy of 91%, sensitivity of 89%, and specificity of 94% for MI diagnosis.
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