Smartphone-based Identification of Critical Levels of Glycated Hemoglobin A1c using Transdermal Optical Imaging

Hudda Salih, S. J. Wu, Evgueni Kabakov, Kang Lee, Weihong Zhou
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引用次数: 2

Abstract

Abstract: Worldwide, the prevalence of diabetes has continued to increase rapidly. This gives rise to concerns regarding appropriate diabetes management to ensure optimal glycemic control. Untreated or uncontrolled diabetes can lead to a host of complications, such as cardiovascular diseases, an increased likelihood of morbidity and mortality (Deshpande, Harris-Hayes, & Schootman, 2008). A challenging problem which arises in diabetes management is the limitations of current blood glucose monitoring techniques. Electronic medical devices can potentially overcome the persistent problems in the healthcare industry. Thus, for this study, it was of interest to investigate whether advanced machine learning methods and Anura, a smartphone-based transdermal optical imaging technology (TOI) that assess health markers, can be a viable solution for diabetes management. Objectives: To examine the validity of TOI and a novel machine algorithm for diabetes prediction (i.e diabetes and non-diabetes). We compared the diabetes classification from TOI’s obtained glycated hemoglobin A1c (HbA1c) concentrations against data obtained from FDA approved blood immunoassay. Methods: In the present study, we used a kitchen sink random forest machine algorithm for diabetes prediction. The data set was obtained from 513 participants recruited during their annual physical examination at the Health Management Center of The Affiliated Hospital of Hangzhou Normal University, China. This included participant’s TOI and blood immunoassay determined HbA1c concentrations. To validate the model, pristine testing was done on 400 pristine participants pseudo randomly selected during 20 trials of training/testing. Results: The confusion matrix found TOI to have a classification accuracy of 66%, and the ROC curve of the RF classifier found TOI to have a ROC AUC of 0.69. Conclusions: The present study provides evidence for the potential use of the TOI technology, Anura, for contactless, non-invasive, and inexpensive assessments of diabetes.
基于智能手机的经皮光学成像糖化血红蛋白A1c临界水平识别
摘要:在世界范围内,糖尿病的患病率持续快速上升。这引起了人们对适当的糖尿病管理以确保最佳血糖控制的关注。未经治疗或不受控制的糖尿病可导致许多并发症,如心血管疾病,发病率和死亡率的可能性增加(Deshpande, Harris-Hayes, & schoootman, 2008)。糖尿病管理中出现的一个具有挑战性的问题是当前血糖监测技术的局限性。电子医疗设备可以潜在地克服医疗保健行业中持续存在的问题。因此,在这项研究中,研究先进的机器学习方法和Anura(一种基于智能手机的透皮光学成像技术(TOI),用于评估健康指标)是否可以成为糖尿病管理的可行解决方案是很有兴趣的。目的:检验TOI和一种新的机器算法在糖尿病(即糖尿病和非糖尿病)预测中的有效性。我们比较了TOI获得的糖化血红蛋白A1c (HbA1c)浓度与FDA批准的血液免疫测定数据的糖尿病分类。方法:在本研究中,我们使用厨房水槽随机森林算法进行糖尿病预测。数据集来自中国杭州师范大学附属医院健康管理中心每年体检时招募的513名参与者。这包括参与者的TOI和血液免疫测定测定的HbA1c浓度。为了验证模型,在训练/测试的20次试验中,对400名原始参与者进行了原始测试。结果:混淆矩阵发现TOI的分类准确率为66%,RF分类器的ROC曲线发现TOI的ROC AUC为0.69。结论:本研究为TOI技术Anura的潜在应用提供了证据,该技术可用于非接触式、非侵入性和廉价的糖尿病评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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