Department of Electrical Engineering and Computer Science, Vanderbilt University, Nashville, TN, United States.
Department of Computer Science, Marquette University, Milwaukee, WI, United States.
JMIR Mhealth Uhealth. 2021 Apr 8;9(4):e16806. doi: 10.2196/16806.
There is worldwide demand for an affordable hemoglobin measurement solution, which is a particularly urgent need in developing countries. The smartphone, which is the most penetrated device in both rich and resource-constrained areas, would be a suitable choice to build this solution. Consideration of a smartphone-based hemoglobin measurement tool is compelling because of the possibilities for an affordable, portable, and reliable point-of-care tool by leveraging the camera capacity, computing power, and lighting sources of the smartphone. However, several smartphone-based hemoglobin measurement techniques have encountered significant challenges with respect to data collection methods, sensor selection, signal analysis processes, and machine-learning algorithms. Therefore, a comprehensive analysis of invasive, minimally invasive, and noninvasive methods is required to recommend a hemoglobin measurement process using a smartphone device.
In this study, we analyzed existing invasive, minimally invasive, and noninvasive approaches for blood hemoglobin level measurement with the goal of recommending data collection techniques, signal extraction processes, feature calculation strategies, theoretical foundation, and machine-learning algorithms for developing a noninvasive hemoglobin level estimation point-of-care tool using a smartphone.
We explored research papers related to invasive, minimally invasive, and noninvasive hemoglobin level measurement processes. We investigated the challenges and opportunities of each technique. We compared the variation in data collection sites, biosignal processing techniques, theoretical foundations, photoplethysmogram (PPG) signal and features extraction process, machine-learning algorithms, and prediction models to calculate hemoglobin levels. This analysis was then used to recommend realistic approaches to build a smartphone-based point-of-care tool for hemoglobin measurement in a noninvasive manner.
The fingertip area is one of the best data collection sites from the body, followed by the lower eye conjunctival area. Near-infrared (NIR) light-emitting diode (LED) light with wavelengths of 850 nm, 940 nm, and 1070 nm were identified as potential light sources to receive a hemoglobin response from living tissue. PPG signals from fingertip videos, captured under various light sources, can provide critical physiological clues. The features of PPG signals captured under 1070 nm and 850 nm NIR LED are considered to be the best signal combinations following a dual-wavelength theoretical foundation. For error metrics presentation, we recommend the mean absolute percentage error, mean squared error, correlation coefficient, and Bland-Altman plot.
We addressed the challenges of developing an affordable, portable, and reliable point-of-care tool for hemoglobin measurement using a smartphone. Leveraging the smartphone's camera capacity, computing power, and lighting sources, we define specific recommendations for practical point-of-care solution development. We further provide recommendations to resolve several long-standing research questions, including how to capture a signal using a smartphone camera, select the best body site for signal collection, and overcome noise issues in the smartphone-captured signal. We also describe the process of extracting a signal's features after capturing the signal based on fundamental theory. The list of machine-learning algorithms provided will be useful for processing PPG features. These recommendations should be valuable for future investigators seeking to build a reliable and affordable hemoglobin prediction model using a smartphone.
全球都需要一种价格实惠的血红蛋白测量解决方案,而发展中国家对此的需求尤为迫切。智能手机在发达国家和资源有限地区的普及率都很高,是构建这种解决方案的理想选择。考虑到智能手机具有价格低廉、便携且可靠的特点,可以利用其摄像头、计算能力和光源来实现这一目标,因此基于智能手机的血红蛋白测量工具具有很大的吸引力。然而,一些基于智能手机的血红蛋白测量技术在数据采集方法、传感器选择、信号分析过程和机器学习算法方面都遇到了重大挑战。因此,需要对有创、微创和无创方法进行全面分析,以推荐使用智能手机设备进行血红蛋白测量的过程。
本研究旨在分析现有的有创、微创和无创方法,以推荐数据采集技术、信号提取过程、特征计算策略、理论基础和机器学习算法,用于开发使用智能手机的无创血红蛋白水平即时检测工具。
我们研究了与有创、微创和无创血红蛋白水平测量过程相关的研究论文,探讨了每种技术的挑战和机遇。我们比较了不同技术的数据采集部位、生物信号处理技术、理论基础、光体积描记图(PPG)信号和特征提取过程、机器学习算法以及预测模型在计算血红蛋白水平方面的差异。然后,我们使用这些分析结果来推荐使用智能手机构建非侵入式即时血红蛋白检测工具的实际方法。
指尖区域是从身体采集数据的最佳部位之一,其次是下眼结膜区域。850nm、940nm 和 1070nm 近红外(NIR)发光二极管(LED)光源被确定为接收活体组织血红蛋白响应的潜在光源。从不同光源下拍摄的指尖视频可以提供关键的生理线索。基于双波长理论,1070nm 和 850nm NIR LED 下采集的 PPG 信号的特征被认为是最佳信号组合。对于误差度量的表示,我们建议使用平均绝对百分比误差、均方误差、相关系数和 Bland-Altman 图。
我们解决了使用智能手机开发经济实惠、便携且可靠的即时血红蛋白检测工具的挑战。利用智能手机的摄像头能力、计算能力和光源,我们为实际的即时护理解决方案开发定义了具体的建议。我们还提供了一些建议,以解决一些长期存在的研究问题,包括如何使用智能手机摄像头采集信号、选择信号采集的最佳身体部位以及克服智能手机采集信号中的噪声问题。我们还描述了根据基本理论从信号中提取特征的过程。提供的机器学习算法列表将有助于处理 PPG 特征。这些建议对于未来希望使用智能手机构建可靠且经济实惠的血红蛋白预测模型的研究人员将具有重要价值。