基于人工智能的无创血糖监测:范围审查。

IF 5.8 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Pin Zhong Chan, Eric Jin, Miia Jansson, Han Shi Jocelyn Chew
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引用次数: 0

摘要

背景:目前的血糖监测(BGM)方法通常都是侵入性的,需要反复刺破手指获取血液样本,容易引起疼痛、不适和感染。无创血糖监测(NIBGM)是减少不适、降低感染风险和提高便利性的理想选择:本综述旨在了解人工智能(AI)在无创血糖监测中的应用案例:方法:根据Arksey O'Malley五步框架进行了系统的范围界定综述。对八个电子数据库(CINAHL、Embase、PubMed、Web of Science、Scopus、The Cochrane-Central Library、ACM Digital Library 和 IEEE Xplore)进行了检索,检索时间从开始到 2023 年 2 月 8 日。由两名独立审稿人对研究进行筛选,进行描述性分析,并以叙述的方式呈现研究结果。研究特征(作者、国家、出版物类型、研究设计、人群特征、平均年龄、所使用的无创技术类型和应用,以及 BGM 系统的特征)由两名研究人员独立提取并交叉检查。方法学质量评估采用医学人工智能评估核对表进行:共纳入 33 篇论文,分别来自亚洲、美国、欧洲、中东和非洲,发表于 2005 年至 2023 年之间。大多数研究使用光学技术(19 篇,占 58%)来估算血糖水平(27 篇,占 82%)。其他研究则使用电化学传感器(4 项)、成像技术(2 项)、混合技术(2 项)和组织阻抗(1 项)。准确率从 35.56% 到 94.23% 不等,克拉克误差格(A+B)从 86.91% 到 100% 不等。最常用的机器学习算法是随机森林(n=10),最常用的深度学习模型是人工神经网络(n=6)。收录论文的医学人工智能评估检查表总平均得分为 33.5 分(标准差为 3.09),平均质量为中等。所回顾的研究表明,一些人工智能技术可以从非侵入性来源准确预测血糖水平,同时提高患者的舒适度和易用性。然而,由于模型和输入数据的异质性,准确性的总体范围很广:需要努力规范人工智能技术在血糖监测中的使用,并制定共识指南和协议,以确保人工智能辅助监测系统的质量和安全性。在无创血糖监测中使用人工智能是一个前景广阔的研究领域,有可能彻底改变糖尿病管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-Based Noninvasive Blood Glucose Monitoring: Scoping Review.

Background: Current blood glucose monitoring (BGM) methods are often invasive and require repetitive pricking of a finger to obtain blood samples, predisposing individuals to pain, discomfort, and infection. Noninvasive blood glucose monitoring (NIBGM) is ideal for minimizing discomfort, reducing the risk of infection, and increasing convenience.

Objective: This review aimed to map the use cases of artificial intelligence (AI) in NIBGM.

Methods: A systematic scoping review was conducted according to the Arksey O'Malley five-step framework. Eight electronic databases (CINAHL, Embase, PubMed, Web of Science, Scopus, The Cochrane-Central Library, ACM Digital Library, and IEEE Xplore) were searched from inception until February 8, 2023. Study selection was conducted by 2 independent reviewers, descriptive analysis was conducted, and findings were presented narratively. Study characteristics (author, country, type of publication, study design, population characteristics, mean age, types of noninvasive techniques used, and application, as well as characteristics of the BGM systems) were extracted independently and cross-checked by 2 investigators. Methodological quality appraisal was conducted using the Checklist for assessment of medical AI.

Results: A total of 33 papers were included, representing studies from Asia, the United States, Europe, the Middle East, and Africa published between 2005 and 2023. Most studies used optical techniques (n=19, 58%) to estimate blood glucose levels (n=27, 82%). Others used electrochemical sensors (n=4), imaging (n=2), mixed techniques (n=2), and tissue impedance (n=1). Accuracy ranged from 35.56% to 94.23% and Clarke error grid (A+B) ranged from 86.91% to 100%. The most popular machine learning algorithm used was random forest (n=10) and the most popular deep learning model was the artificial neural network (n=6). The mean overall checklist for assessment of medical AI score on the included papers was 33.5 (SD 3.09), suggesting an average of medium quality. The studies reviewed demonstrate that some AI techniques can accurately predict glucose levels from noninvasive sources while enhancing comfort and ease of use for patients. However, the overall range of accuracy was wide due to the heterogeneity of models and input data.

Conclusions: Efforts are needed to standardize and regulate the use of AI technologies in BGM, as well as develop consensus guidelines and protocols to ensure the quality and safety of AI-assisted monitoring systems. The use of AI for NIBGM is a promising area of research that has the potential to revolutionize diabetes management.

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来源期刊
CiteScore
14.40
自引率
5.40%
发文量
654
审稿时长
1 months
期刊介绍: The Journal of Medical Internet Research (JMIR) is a highly respected publication in the field of health informatics and health services. With a founding date in 1999, JMIR has been a pioneer in the field for over two decades. As a leader in the industry, the journal focuses on digital health, data science, health informatics, and emerging technologies for health, medicine, and biomedical research. It is recognized as a top publication in these disciplines, ranking in the first quartile (Q1) by Impact Factor. Notably, JMIR holds the prestigious position of being ranked #1 on Google Scholar within the "Medical Informatics" discipline.
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