Smartphone-based health monitoring in India: Data collection and evaluation for pulse rate estimation.

IF 1 Q4 PRIMARY HEALTH CARE Journal of Family Medicine and Primary Care Pub Date : 2025-01-01 Epub Date: 2025-01-13 DOI:10.4103/jfmpc.jfmpc_1257_24
Achal Shetty, Sanjana S Narasimhamurthy, K S Nataraj, Srilakshmi M Prabhu, Neha Jagadeesh, Kunal Katre, Sumit Kumar, Neelesh Kapoor, Sudhir P Haladi, Sankalp Gulati
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Abstract

Introduction: Over the past decade, monitoring of body vitals has gained significant popularity, specifically during and post the recent COVID pandemic. Advancements in smartphones and wearables have been pivotal, providing accessible and cost-effective solutions for at-home health monitoring. Their development often requires a large corpus of labeled datasets, but such large and diverse datasets for developing smartphone-based vital estimation systems, particularly adapted to Indian context, are scarce.

Aims and objectives: This observational study focuses on development of such a dataset in a diverse Indian context and evaluation of smartphone-based pulse rate estimation based on this dataset.

Methods: Data collection considered Indian patients with various medical conditions, body mass index profiles, blood pressure levels, ages, and smoking habits, reflecting a broad demographic spectrum. As part of this study, an algorithm was implemented to estimate the photoplethysmogram (PPG) signal from video recordings of fingers placed on the smartphone camera and subsequently to estimate pulse rate using the acquired PPG data. Smartphone-based pulse rate estimates were compared with readings from pulse oximeters to assess accuracy and feasibility.

Results: The smartphone-based PPG algorithm provides reasonably accurate estimations of pulse rate when compared to traditional pulse oximeters under varied healthcare settings (mean absolute error < 5, intraclass correlation coefficient > 0.90).

Conclusion: Results indicate that the smartphone-based PPG signal captures sufficient information of the cardiac cycle to reliably estimate the pulse rate. Furthermore, system accuracy is consistent across varied subjects and settings, highlighting the importance of tailored data collection for development and evaluation of vital estimation algorithms.

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印度基于智能手机的健康监测:脉搏率估计的数据收集和评估。
导言:在过去十年中,身体生命体征监测得到了极大的普及,特别是在最近的COVID大流行期间和之后。智能手机和可穿戴设备的进步至关重要,为家庭健康监测提供了方便且具有成本效益的解决方案。它们的开发通常需要大量的标记数据集,但是用于开发基于智能手机的生命估计系统的如此庞大和多样化的数据集,特别是适合印度环境的数据集,是稀缺的。目的和目标:本观察性研究的重点是在印度不同背景下开发这样一个数据集,并评估基于该数据集的基于智能手机的脉搏率估计。方法:数据收集考虑了具有各种医疗条件、体重指数、血压水平、年龄和吸烟习惯的印度患者,反映了广泛的人口统计光谱。作为本研究的一部分,研究人员实施了一种算法,从放置在智能手机摄像头上的手指视频记录中估计光体积脉搏图(PPG)信号,随后利用获取的PPG数据估计脉搏率。将基于智能手机的脉搏率估计值与脉搏血氧仪的读数进行比较,以评估准确性和可行性。结果:与传统脉搏血氧仪相比,基于智能手机的PPG算法在不同的医疗环境下提供了相当准确的脉搏率估计(平均绝对误差< 5,类内相关系数> 0.90)。结论:基于智能手机的PPG信号捕获了足够的心周期信息,可以可靠地估计脉搏率。此外,系统准确性在不同的主题和设置中是一致的,突出了定制数据收集对于重要估计算法的开发和评估的重要性。
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