Prediction of Left Ventricle Pressure Indices Via a Machine Learning Approach Combining ECG, Pulse Oximetry, and Cardiac Sounds: a Preclinical Feasibility Study.

IF 2.4 3区 医学 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS Journal of Cardiovascular Translational Research Pub Date : 2024-12-01 Epub Date: 2024-07-17 DOI:10.1007/s12265-024-10546-2
Lorenzo Fassina, Francesco Paolo Lo Muzio, Leonhard Berboth, Jens Ötvös, Alessandro Faragli, Alessio Alogna
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Abstract

Heart failure (HF) is defined as the inability of the heart to meet body oxygen demand requiring an elevation in left ventricular filling pressures (LVP) to compensate. LVP increase can be assessed in the cardiac catheterization laboratory, but this procedure is invasive and time-consuming to the extent that physicians rather rely on non-invasive diagnostic tools. In this work, we assess the feasibility to develop a novel machine-learning (ML) approach to predict clinically relevant LVP indices. Synchronized invasive (pressure-volume tracings) and non-invasive signals (ECG, pulse oximetry, and cardiac sounds) were collected from anesthetized, closed-chest Göttingen minipigs. Animals were either healthy or had HF with reduced ejection fraction and circa 500 heartbeats were included in the analysis for each animal. The ML algorithm showed excellent prediction of LVP indices estimating, for instance, the end-diastolic pressure with a R2 of 0.955. This novel ML algorithm could assist clinicians in the care of HF patients.

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通过结合心电图、脉搏氧饱和度和心音的机器学习方法预测左心室压力指数:临床前可行性研究。
心力衰竭(HF)被定义为心脏无法满足身体的氧气需求,需要左心室充盈压(LVP)升高来补偿。左心室充盈压升高可在心导管实验室进行评估,但这一过程具有创伤性且耗时,因此医生更倾向于使用无创诊断工具。在这项工作中,我们评估了开发一种新型机器学习(ML)方法来预测临床相关 LVP 指数的可行性。我们从麻醉、闭胸的哥廷根小型猪身上收集了同步的有创信号(压力-容积描记)和无创信号(心电图、脉搏血氧饱和度和心音)。动物要么健康,要么患有射血分数降低的房颤,每只动物约有 500 次心跳被纳入分析。ML 算法对 LVP 指数的预测效果极佳,例如对舒张末压的估计 R2 为 0.955。这种新颖的 ML 算法可帮助临床医生护理高血压患者。
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来源期刊
Journal of Cardiovascular Translational Research
Journal of Cardiovascular Translational Research CARDIAC & CARDIOVASCULAR SYSTEMS-MEDICINE, RESEARCH & EXPERIMENTAL
CiteScore
6.10
自引率
2.90%
发文量
148
审稿时长
6-12 weeks
期刊介绍: Journal of Cardiovascular Translational Research (JCTR) is a premier journal in cardiovascular translational research. JCTR is the journal of choice for authors seeking the broadest audience for emerging technologies, therapies and diagnostics, pre-clinical research, and first-in-man clinical trials. JCTR''s intent is to provide a forum for critical evaluation of the novel cardiovascular science, to showcase important and clinically relevant aspects of the new research, as well as to discuss the impediments that may need to be overcome during the translation to patient care.
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