AI Center for Precision Health, Weill Cornell Medicine-Qatar, Doha, Qatar.
Qatar Computing Research Institute, Hamad Bin Khalifa University, Doha, Qatar.
J Med Internet Res. 2023 Mar 14;25:e40259. doi: 10.2196/40259.
In 2021 alone, diabetes mellitus, a metabolic disorder primarily characterized by abnormally high blood glucose (BG) levels, affected 537 million people globally, and over 6 million deaths were reported. The use of noninvasive technologies, such as wearable devices (WDs), to regulate and monitor BG in people with diabetes is a relatively new concept and yet in its infancy. Noninvasive WDs coupled with machine learning (ML) techniques have the potential to understand and conclude meaningful information from the gathered data and provide clinically meaningful advanced analytics for the purpose of forecasting or prediction.
The purpose of this study is to provide a systematic review complete with a quality assessment looking at diabetes effectiveness of using artificial intelligence (AI) in WDs for forecasting or predicting BG levels.
We searched 7 of the most popular bibliographic databases. Two reviewers performed study selection and data extraction independently before cross-checking the extracted data. A narrative approach was used to synthesize the data. Quality assessment was performed using an adapted version of the Quality Assessment of Diagnostic Accuracy Studies-2 (QUADAS-2) tool.
From the initial 3872 studies, the features from 12 studies were reported after filtering according to our predefined inclusion criteria. The reference standard in all studies overall (n=11, 92%) was classified as low, as all ground truths were easily replicable. Since the data input to AI technology was highly standardized and there was no effect of flow or time frame on the final output, both factors were categorized in a low-risk group (n=11, 92%). It was observed that classical ML approaches were deployed by half of the studies, the most popular being ensemble-boosted trees (random forest). The most common evaluation metric used was Clarke grid error (n=7, 58%), followed by root mean square error (n=5, 42%). The wide usage of photoplethysmogram and near-infrared sensors was observed on wrist-worn devices.
This review has provided the most extensive work to date summarizing WDs that use ML for diabetic-related BG level forecasting or prediction. Although current studies are few, this study suggests that the general quality of the studies was considered high, as revealed by the QUADAS-2 assessment tool. Further validation is needed for commercially available devices, but we envisage that WDs in general have the potential to remove the need for invasive devices completely for glucose monitoring in the not-too-distant future.
PROSPERO CRD42022303175; https://tinyurl.com/3n9jaayc.
仅在 2021 年,糖尿病这一主要特征为异常高血糖(BG)水平的代谢紊乱,影响了全球 5.37 亿人,并有超过 600 万人死亡。使用非侵入性技术,如可穿戴设备(WDs),来调节和监测糖尿病患者的 BG 是一个相对较新的概念,目前仍处于起步阶段。非侵入性的 WDs 与机器学习(ML)技术相结合,有可能从收集的数据中理解和得出有意义的信息,并提供具有临床意义的先进分析,以进行预测。
本研究旨在提供一项系统评价,对使用人工智能(AI)在 WDs 中进行 BG 水平预测或预测的糖尿病有效性进行质量评估。
我们在 7 个最受欢迎的文献数据库中进行了搜索。两名审查员独立进行了研究选择和数据提取,然后交叉核对提取的数据。采用叙述方法综合数据。使用经过改编的诊断准确性研究的质量评估-2(QUADAS-2)工具进行质量评估。
根据我们预先设定的纳入标准,从最初的 3872 项研究中筛选出 12 项研究的特征。所有研究的参考标准(n=11,92%)总体上被归类为低,因为所有的真实值都很容易复制。由于 AI 技术输入的数据高度标准化,并且最终输出不受流量或时间框架的影响,因此这两个因素均被归类为低风险组(n=11,92%)。观察到一半的研究使用了经典的 ML 方法,最受欢迎的是集成增强树(随机森林)。最常用的评估指标是 Clarke 网格误差(n=7,58%),其次是均方根误差(n=5,42%)。在腕戴设备上观察到广泛使用光体积描记和近红外传感器。
本综述提供了迄今为止最广泛的工作,总结了使用 ML 进行糖尿病相关 BG 水平预测或预测的 WDs。尽管目前的研究较少,但本研究表明,QUADAS-2 评估工具显示,研究的总体质量被认为较高。需要对商业上可用的设备进行进一步验证,但我们预计,一般的 WDs 有可能在不远的将来完全取代侵入性设备进行葡萄糖监测。
PROSPERO CRD42022303175;https://tinyurl.com/3n9jaayc。