利用移动医疗技术进行围产期血压监测的自动图像转录。

PLOS digital health Pub Date : 2024-10-02 eCollection Date: 2024-10-01 DOI:10.1371/journal.pdig.0000588
Nasim Katebi, Whitney Bremer, Tony Nguyen, Daniel Phan, Jamila Jeff, Kirkland Armstrong, Paula Phabian-Millbrook, Marissa Platner, Kimberly Carroll, Banafsheh Shoai, Peter Rohloff, Sheree L Boulet, Cheryl G Franklin, Gari D Clifford
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引用次数: 0

摘要

本文介绍了一种新颖的方法,用于解决与传输从自测血压监测系统中使用的示波测量设备获得的血压(BP)数据相关的挑战,将这些数据整合到医疗健康记录或临床医生可访问的代理数据库中,尤其是在文化水平较低的人群中。为此,我们开发了一种自动图像转录技术,以有效地转录血压设备的读数,最终提高血压数据的可获取性和可用性,用于监测和管理孕期和产后血压,尤其是在资源匮乏的环境和低文化水平人群中。在设计的研究中,血压设备的照片是围产期移动医疗(mHealth)监测计划的一部分,在两个国家的四项研究中进行。危地马拉第一套和第二套数据集包括由 49 名非专业助产士组成的队列在危地马拉农村地区对 1697 名孕妇和 584 名怀有单胎的孕妇进行例行筛查时采集的数据。此外,我们还在佐治亚州设计了一个移动医疗系统,让产后妇女在家监测和报告血压,分别有 23 名和 49 名非洲裔美国人参加了佐治亚州 I3 和佐治亚州 IMPROVE 项目。我们开发了一个基于深度学习的模型,该模型分两步运行:使用 "只看一遍"(YOLO)对象检测模型进行 LCD 定位,并使用基于卷积神经网络、能够识别多个数字的模型进行数字识别。我们采用了色彩校正和阈值技术,以尽量减少反射和伪影的影响。我们根据用于训练数字识别模型的设备进行了三次实验。总体而言,我们的结果表明,带有迁移学习的特定设备模型和独立于设备的模型优于不带迁移学习的特定设备模型。在佐治亚 IMPROVE 和危地马拉 Set 2 数据集中,使用独立于设备的数字识别技术对保持不变的测试数据集进行图像转录的平均绝对误差(MAE)分别为 1.2 和 0.8 mmHg(收缩压和舒张压)和 0.9 和 0.5 mmHg(舒张压和收缩压)。MAE 远远低于美国食品及药物管理局建议的 5 mmHg,因此建议的自动图像转录模型在与适当的低误差血压设备一起使用时适合普遍使用。
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Automated image transcription for perinatal blood pressure monitoring using mobile health technology.

This paper introduces a novel approach to address the challenges associated with transferring blood pressure (BP) data obtained from oscillometric devices used in self-measured BP monitoring systems to integrate this data into medical health records or a proxy database accessible by clinicians, particularly in low literacy populations. To this end, we developed an automated image transcription technique to effectively transcribe readings from BP devices, ultimately enhancing the accessibility and usability of BP data for monitoring and managing BP during pregnancy and the postpartum period, particularly in low-resource settings and low-literate populations. In the designed study, the photos of the BP devices were captured as part of perinatal mobile health (mHealth) monitoring programs, conducted in four studies across two countries. The Guatemala Set 1 and Guatemala Set 2 datasets include the data captured by a cohort of 49 lay midwives from 1697 and 584 pregnant women carrying singletons in the second and third trimesters in rural Guatemala during routine screening. Additionally, we designed an mHealth system in Georgia for postpartum women to monitor and report their BP at home with 23 and 49 African American participants contributing to the Georgia I3 and Georgia IMPROVE projects, respectively. We developed a deep learning-based model which operates in two steps: LCD localization using the You Only Look Once (YOLO) object detection model and digit recognition using a convolutional neural network-based model capable of recognizing multiple digits. We applied color correction and thresholding techniques to minimize the impact of reflection and artifacts. Three experiments were conducted based on the devices used for training the digit recognition model. Overall, our results demonstrate that the device-specific model with transfer learning and the device independent model outperformed the device-specific model without transfer learning. The mean absolute error (MAE) of image transcription on held-out test datasets using the device-independent digit recognition were 1.2 and 0.8 mmHg for systolic and diastolic BP in the Georgia IMPROVE and 0.9 and 0.5 mmHg in Guatemala Set 2 datasets. The MAE, far below the FDA recommendation of 5 mmHg, makes the proposed automatic image transcription model suitable for general use when used with appropriate low-error BP devices.

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