Hellqvist Henrik, Karlsson Mikael, Hoffman Johan, Kahan Thomas, Spaak Jonas
Division of Cardiovascular Medicine, Department of Clinical Sciences, Danderyd Hospital, Karolinska Institutet, Stockholm, Sweden.
Marcus Wallenberg Laboratory for Sound and Vibration Research, Department of Engineering Mechanics, KTH Royal Institute of Technology, Stockholm, Sweden.
Front Cardiovasc Med. 2024 Mar 11;11:1350726. doi: 10.3389/fcvm.2024.1350726. eCollection 2024.
Aortic stiffness plays a critical role in the evolution of cardiovascular diseases, but the assessment requires specialized equipment. Photoplethysmography (PPG) and single-lead electrocardiogram (ECG) are readily available in healthcare and wearable devices. We studied whether a brief PPG registration, alone or in combination with single-lead ECG, could be used to reliably estimate aortic stiffness.
A proof-of-concept study with simultaneous high-resolution index finger recordings of infrared PPG, single-lead ECG, and finger blood pressure (Finapres) was performed in 33 participants [median age 44 (range 21-66) years, 19 men] and repeated within 2 weeks. Carotid-femoral pulse wave velocity (cfPWV; two-site tonometry with SphygmoCor) was used as a reference. A brachial single-cuff oscillometric device assessed aortic pulse wave velocity (aoPWV; Arteriograph) for further comparisons. We extracted 136 established PPG waveform features and engineered 13 new with improved coupling to the finger blood pressure curve. Height-normalized pulse arrival time (NPAT) was derived using ECG. Machine learning methods were used to develop prediction models.
The best PPG-based models predicted cfPWV and aoPWV well (root-mean-square errors of 0.70 and 0.52 m/s, respectively), with minor improvements by adding NPAT. Repeatability and agreement were on par with the reference equipment. A new PPG feature, an amplitude ratio from the early phase of the waveform, was most important in modelling, showing strong correlations with cfPWV and aoPWV ( = -0.81 and -0.75, respectively, both < 0.001).
Using new features and machine learning methods, a brief finger PPG registration can estimate aortic stiffness without requiring additional information on age, anthropometry, or blood pressure. Repeatability and agreement were comparable to those obtained using non-invasive reference equipment. Provided further validation, this readily available simple method could improve cardiovascular risk evaluation, treatment, and prognosis.
主动脉僵硬度在心血管疾病的发展过程中起着关键作用,但评估需要专门的设备。光电容积脉搏波描记法(PPG)和单导联心电图(ECG)在医疗保健和可穿戴设备中很容易获得。我们研究了单独的简短PPG记录或与单导联ECG联合使用是否可用于可靠地估计主动脉僵硬度。
在33名参与者[中位年龄44(范围21 - 66)岁,19名男性]中进行了一项概念验证研究,同时对红外PPG、单导联ECG和手指血压(Finapres)进行高分辨率食指记录,并在2周内重复进行。以颈股脉搏波速度(cfPWV;使用SphygmoCor进行两点血压测量)作为参考。使用臂式单袖带示波装置评估主动脉脉搏波速度(aoPWV;动脉脉搏波速度测量仪)以进行进一步比较。我们提取了136个已确立的PPG波形特征,并设计了13个与手指血压曲线耦合性更好的新特征。使用ECG得出身高标准化脉搏到达时间(NPAT)。使用机器学习方法开发预测模型。
基于PPG的最佳模型对cfPWV和aoPWV的预测效果良好(均方根误差分别为0.70和0.52 m/s),添加NPAT后有轻微改善。重复性和一致性与参考设备相当。一个新的PPG特征,即波形早期阶段的振幅比,在建模中最为重要,与cfPWV和aoPWV显示出强相关性(分别为 - 0.81和 - 0.75,均<0.001)。
使用新特征和机器学习方法,简短的手指PPG记录可以估计主动脉僵硬度,而无需年龄、人体测量学或血压的额外信息。重复性和一致性与使用非侵入性参考设备获得的结果相当。经过进一步验证,这种易于获得的简单方法可以改善心血管风险评估、治疗和预后。