Detecting elevated left ventricular end diastolic pressure from simultaneously measured femoral pressure waveform and electrocardiogram.

IF 2.3 4区 医学 Q3 BIOPHYSICS
Niema M Pahlevan, Rashid Alavi, Jing Liu, Melissa Ramos, Antreas Hindoyan, Ray V Matthews
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引用次数: 0

Abstract

Objective.Instantaneous, non-invasive evaluation of left ventricular end-diastolic pressure (LVEDP) would have significant value in the diagnosis and treatment of heart failure. A new approach called cardiac triangle mapping (CTM) has been recently proposed, which can provide a non-invasive estimate of LVEDP. We hypothesized that a hybrid machine-learning (ML) method based on CTM can instantaneously identify an elevated LVEDP using simultaneously measured femoral pressure waveform and electrocardiogram (ECG).Approach.We studied 46 patients (Age: 39-90 (66.4 ± 9.9), BMI: 20.2-36.8 (27.6 ± 4.1), 12 females) scheduled for clinical left heart catheterizations or coronary angiograms at University of Southern California Keck Medical Center. Exclusion criteria included severe mitral/aortic valve disease; severe carotid stenosis; aortic abnormalities; ventricular paced rhythm; left bundle branch and anterior fascicular blocks; interventricular conduction delay; and atrial fibrillation. Invasive LVEDP and pressure waveforms at the iliac bifurcation were measured using transducer-tipped Millar catheters with simultaneous ECG. LVEDP range was 9.3-40.5 mmHg. LVEDP = 18 mmHg was used as cutoff. Random forest (RF) classifiers were trained using data from 36 patients and blindly tested on 10 patients.Main results.Our proposed ML classifier models accurately predict true LVEDP classes using appropriate physics-based features, where the most accurate demonstrates 100.0% (elevated) and 80.0% (normal) success in predicting true LVEDP classes on blind data.Significance.We demonstrated that physics-based ML models can instantaneously classify LVEDP using information from femoral waveforms and ECGs. Although an invasive validation, the required ML inputs can be potentially obtained non-invasively.

从同时测量到的股压力波形和心电图中检测出左心室舒张末期压力升高。
目的:对左心室舒张末期压力(LVEDP)进行瞬时、无创的评估对诊断和治疗心力衰竭具有重要价值。最近有人提出了一种称为心脏三角测绘(CTM)的新方法,它可以提供无创的左心室舒张末压估计值。我们假设,基于 CTM 的混合机器学习(ML)方法可以利用同时测量的股压力波形和心电图(ECG)即时识别出升高的 LVEDP:我们研究了 46 名预定在南加州大学凯克医学中心进行临床左心导管检查或冠状动脉造影的患者(年龄:39-90 (66.4±9.9),体重指数:20.2-36.8 (27.6±4.1),女性 12 名)。排除标准包括严重的二尖瓣/主动脉瓣疾病、严重的颈动脉狭窄、主动脉异常、心室起搏心律、左束支和前束阻滞、室间隔传导延迟和心房颤动。使用带传感器的米勒导管测量髂分叉处的有创 LVEDP 和压力波形,并同时测量心电图。LVEDP 范围为 9.3-40.5 mmHg。以 LVEDP=18 mmHg 为临界值。使用 36 名患者的数据对随机森林分类器进行了训练,并在 10 名患者身上进行了盲测:我们提出的 ML 分类器模型利用适当的物理特征准确预测了 LVEDP 的真实等级,其中最准确的模型在盲测数据中预测 LVEDP 真实等级的成功率为 100.0%(升高)和 80.0%(正常):我们证明了基于物理学的 ML 模型可以利用股骨波形和心电图信息对 LVEDP 进行即时分类。虽然这是一项侵入性验证,但所需的 ML 输入有可能以非侵入性方式获得。
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来源期刊
Physiological measurement
Physiological measurement 生物-工程:生物医学
CiteScore
5.50
自引率
9.40%
发文量
124
审稿时长
3 months
期刊介绍: Physiological Measurement publishes papers about the quantitative assessment and visualization of physiological function in clinical research and practice, with an emphasis on the development of new methods of measurement and their validation. Papers are published on topics including: applied physiology in illness and health electrical bioimpedance, optical and acoustic measurement techniques advanced methods of time series and other data analysis biomedical and clinical engineering in-patient and ambulatory monitoring point-of-care technologies novel clinical measurements of cardiovascular, neurological, and musculoskeletal systems. measurements in molecular, cellular and organ physiology and electrophysiology physiological modeling and simulation novel biomedical sensors, instruments, devices and systems measurement standards and guidelines.
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