Academic Unit of Computing, Master Program in Applied Sciences, Universidad Politecnica de Sinaloa, Mazatlan, Mexico.
Faculty of Information Technology, Universidad de la Salle Bajío, Leon, Mexico.
JMIR Mhealth Uhealth. 2020 Jul 20;8(7):e18012. doi: 10.2196/18012.
Smartphone-based blood pressure (BP) monitoring using photoplethysmography (PPG) technology has emerged as a promising approach to empower users with self-monitoring for effective diagnosis and control of hypertension.
This study aimed to develop a mobile personal health care system for noninvasive, pervasive, and continuous estimation of BP level and variability, which is user friendly for elderly people.
The proposed approach was integrated by a self-designed cuffless, calibration-free, wireless, and wearable PPG-only sensor and a native purposely designed smartphone app using multilayer perceptron machine learning techniques from raw signals. We performed a development and usability study with three older adults (mean age 61.3 years, SD 1.5 years; 66% women) to test the usability and accuracy of the smartphone-based BP monitor.
The employed artificial neural network model had good average accuracy (>90%) and very strong correlation (>0.90) (P<.001) for predicting the reference BP values of our validation sample (n=150). Bland-Altman plots showed that most of the errors for BP prediction were less than 10 mmHg. However, according to the Association for the Advancement of Medical Instrumentation and British Hypertension Society standards, only diastolic blood pressure prediction met the clinically accepted accuracy thresholds.
With further development and validation, the proposed system could provide a cost-effective strategy to improve the quality and coverage of health care, particularly in rural zones, areas lacking physicians, and areas with solitary elderly populations.
基于智能手机的光电容积脉搏波(PPG)技术的血压(BP)监测已成为一种有前途的方法,可以使用户通过自我监测来有效诊断和控制高血压。
本研究旨在开发一种移动个人健康护理系统,用于非侵入性、普及性和连续估计血压水平和变异性,对老年人友好。
该方法由我们自行设计的无袖带、免校准、无线和可穿戴式仅 PPG 传感器和专门设计的原生智能手机应用程序集成而成,使用多层感知机机器学习技术从原始信号进行分析。我们对 3 名老年人(平均年龄 61.3 岁,标准差 1.5 岁;66%为女性)进行了开发和可用性研究,以测试基于智能手机的 BP 监测仪的可用性和准确性。
所采用的人工神经网络模型对我们验证样本(n=150)的参考血压值具有良好的平均准确性(>90%)和非常强的相关性(>0.90)(P<.001)。Bland-Altman 图显示,大多数 BP 预测误差小于 10mmHg。然而,根据医疗器械协会和英国高血压学会的标准,只有舒张压预测符合临床可接受的准确性阈值。
随着进一步的开发和验证,该系统可以提供一种具有成本效益的策略,以提高医疗保健的质量和覆盖范围,特别是在农村地区、缺乏医生的地区和老年人独居的地区。