Saran Khalid Muhammad, Shahid Quraishi Ikramah, Wasim Nawaz Muhammad, Sajjad Hadia, Yaseen Hira, Mehmood Ahsan, Mahboob Ur Rahman M, Abbasi Qammer H
Electrical engineering department, Information Technology University, Lahore, Pakistan.
Computer engineering department, University of Lahore, Lahore, Pakistan.
Physiol Meas. 2025 Feb 7;13(2). doi: 10.1088/1361-6579/ada246.
. We study the changes in morphology of the photoplethysmography (PPG) signals-acquired from a select group of South Asian origin-through a low-cost PPG sensor, and correlate it with healthy aging which allows us to reliably estimate the vascular age and chronological age of a healthy person as well as the age group he/she belongs to.. Raw infrared PPG data is collected from the finger-tip of 173 apparently healthy subjects, aged 3-61 years, via a non-invasive low-cost MAX30102 PPG sensor. In addition, the following metadata is recorded for each subject: age, gender, height, weight, family history of cardiac disease, smoking history, vitals (heart rate and SpO2). The raw PPG data is conditioned and 62 features are then extracted based upon the first four PPG derivatives. Then, correlation-based feature-ranking is performed which retains 26 most important features. Finally, the feature set is fed to three machine learning classifiers, i.e. logistic regression, random forest, eXtreme Gradient Boosting (XGBoost), and two shallow neural networks: a feedforward neural network and a convolutional neural network.. For the age group classification problem, the ensemble method XGboost stands out with an accuracy of 99% for both binary classification (3-20 years vs. 20+ years) and three-class classification (3-18 years, 18-23 years, 23+ years). For the vascular/chronological age prediction problem, the ensemble random forest method stands out with a mean absolute error of 6.97 years.. The results demonstrate that PPG is indeed a promising (i.e. low-cost, non-invasive) biomarker to study the healthy aging phenomenon.
我们通过一个低成本的光电容积脉搏波描记术(PPG)传感器,研究从一组特定的南亚裔人群中采集的PPG信号的形态变化,并将其与健康衰老相关联,这使我们能够可靠地估计健康人的血管年龄和实际年龄以及他/她所属的年龄组。通过一个非侵入性的低成本MAX30102 PPG传感器,从173名年龄在3至61岁之间、表面健康的受试者的指尖采集原始红外PPG数据。此外,还为每个受试者记录了以下元数据:年龄、性别、身高、体重、心脏病家族史、吸烟史、生命体征(心率和血氧饱和度)。对原始PPG数据进行预处理,然后基于PPG的前四个导数提取62个特征。接着进行基于相关性的特征排序,保留26个最重要的特征。最后,将特征集输入到三个机器学习分类器中,即逻辑回归、随机森林、极端梯度提升(XGBoost),以及两个浅层神经网络:前馈神经网络和卷积神经网络。对于年龄组分类问题,集成方法XGBoost在二分类(3至20岁与20岁以上)和三分类(3至18岁、18至23岁、23岁以上)中均表现出色,准确率达到99%。对于血管/实际年龄预测问题,集成随机森林方法表现突出,平均绝对误差为6.97岁。结果表明,PPG确实是一种有前景的(即低成本、非侵入性的)生物标志物,可用于研究健康衰老现象。