光敏血压计和心内压:试点研究的初步启示

Niels T B Scholte, Annemiek E van Ravensberg, Roos Edgar, A. J. van den Enden, Nicolas van Mieghem, Jasper J Brugts, J. Bonnes, N. Bruining, R. M. van der Boon
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引用次数: 0

摘要

对心力衰竭(HF)进行有创血液动力学监测可及早发现病情恶化,从而避免住院治疗。然而,这种侵入性方法成本高昂,而且目前缺乏普及性。因此,迫切需要找到一种可靠且更容易获得的替代性无创方法。在这项试验性研究中,我们研究了腕部光电血压计(PPG)信号与有创测量的肺毛细血管楔压(PCWP)之间的关系。 14 名主动脉瓣狭窄患者接受了经导管主动脉瓣置换术,并同时接受了右心导管检查和 PPG 测量。提取了 PPG 信号的六个独特特征(心率、心率变异性、收缩振幅 (SA)、舒张振幅、波峰时间 (CT) 和大动脉僵硬度指数 (LASI))。这些特征用于估计连续 PCWP 值和分类 PCWP(低 <12mmHg 与高≥12mmHg)。所有 PPG 特征都能生成与有创 PCWP 测量值相关性较低的回归模型。分类模型的性能更高:基于 SA 的模型和基于 LASI 的模型的曲线下面积(AUC)均为 0.86,而基于 CT 的模型的曲线下面积(AUC)为 0.72。 这些结果表明,利用腕戴式可穿戴设备发出的 PPG 信号,可以无创地将患者分为具有临床意义的 PCWP 类别。为了加强和充分挖掘其潜力,应在更大的高血压患者群体中进一步研究 PPG 和 PCWP 之间的关系。
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Photoplethysmography and Intracardiac Pressures: early insights from a pilot study
Invasive hemodynamic monitoring of heart failure (HF) is used to detect deterioration in an early phase thereby preventing hospitalizations. However, this invasive approach is costly and presently lacks widespread accessibility. Hence, there is a pressing need to identify an alternative non-invasive method that is reliable and more readily available. In this pilot study we investigated the relation between wrist-derived Photoplethysmography (PPG) signals and the invasively measured pulmonary capillary wedge pressure (PCWP). Fourteen patients with aortic valve stenosis who underwent Transcatheter Aortic Valve Replacement with concomitant right heart catheterization and PPG measurements were included. Six unique features of the PPG signals (heart rate, heart rate variability, systolic amplitude (SA), diastolic amplitude, crest time (CT), and large artery stiffness index (LASI) were extracted. These features were used to estimate the continuous PCWP values and the categorized PCWP (low <12mmHg vs. high ≥12mmHg). All PPG features resulted in regression models that showed low correlations with the invasively measured PCWP. Classification models resulted in higher performances: the model based on the SA and the model based on the LASI both resulted in an Area Under the Curve(AUC) of 0.86 and the model based on the CT resulted in an AUC of 0.72. These results demonstrate the capability to non-invasively classify patients into clinically meaningful categories of PCWP using PPG signals from a wrist-worn wearable device. To enhance and fully explore its potential, the relationship between PPG and PCWP should be further investigated in a larger cohort of HF patients.
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