大鼠颈动脉压力波形对急性心肌梗死和缺血的即时检测。

European heart journal open Pub Date : 2023-10-03 eCollection Date: 2023-09-01 DOI:10.1093/ehjopen/oead099
Rashid Alavi, Wangde Dai, Ray V Matthews, Robert A Kloner, Niema M Pahlevan
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摘要

目的:心肌梗死(MI)是世界范围内死亡的主要原因之一。早期诊断后早期再灌注治疗可显著提高MI的存活率,这是公认的。急性心肌梗死的诊断传统上是基于胸痛和心电图(ECG)标准。然而,大约50%的MI没有胸痛,心电图既不是完全特异性的,也不是决定性的。因此,存在对允许在不使用ECG的情况下检测急性MI或缺血的方法的未满足的需求。我们的假设是,基于物理的混合机器学习(ML)方法可以从单个颈动脉压力波形中检测急性心肌梗死或缺血的发生。方法和结果:采用标准的大鼠闭塞/再灌注模型。使用从颈动脉压力波形中提取的固有频率参数开发了基于物理的ML分类器。使用来自32只大鼠的数据对ML模型进行训练、验证和推广。在来自另外13只大鼠的外部分层盲数据集上测试最终的ML模型。当对盲数据进行测试时,最佳ML模型检测急性心肌梗死的特异性为0.92,敏感性为0.92。最佳模型检测缺血的特异性和敏感性分别为0.85和0.92。结论:我们证明了基于混合物理的ML方法可以从大鼠颈动脉压力波形中检测急性心肌梗死和缺血的发生。由于颈动脉压力波形可以非侵入性测量,这种概念验证的临床前研究可能会在未来的研究中扩展,用于MI或心肌缺血的非侵入性检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Instantaneous detection of acute myocardial infarction and ischaemia from a single carotid pressure waveform in rats.

Aims: Myocardial infarction (MI) is one of the leading causes of death worldwide. It is well accepted that early diagnosis followed by early reperfusion therapy significantly increases the MI survival. Diagnosis of acute MI is traditionally based on the presence of chest pain and electrocardiogram (ECG) criteria. However, around 50% of the MIs are without chest pain, and ECG is neither completely specific nor definitive. Therefore, there is an unmet need for methods that allow detection of acute MI or ischaemia without using ECG. Our hypothesis is that a hybrid physics-based machine learning (ML) method can detect the occurrence of acute MI or ischaemia from a single carotid pressure waveform.

Methods and results: We used a standard occlusion/reperfusion rat model. Physics-based ML classifiers were developed using intrinsic frequency parameters extracted from carotid pressure waveforms. ML models were trained, validated, and generalized using data from 32 rats. The final ML models were tested on an external stratified blind dataset from additional 13 rats. When tested on blind data, the best ML model showed specificity = 0.92 and sensitivity = 0.92 for detecting acute MI. The best model's specificity and sensitivity for ischaemia detection were 0.85 and 0.92, respectively.

Conclusion: We demonstrated that a hybrid physics-based ML approach can detect the occurrence of acute MI and ischaemia from carotid pressure waveform in rats. Since carotid pressure waveforms can be measured non-invasively, this proof-of-concept pre-clinical study can potentially be expanded in future studies for non-invasive detection of MI or myocardial ischaemia.

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