Overview of Artificial Intelligence-Driven Wearable Devices for Diabetes: Scoping Review

被引:22
作者
Ahmed, Arfan [1 ]
Aziz, Sarah [1 ]
Abd-Alrazaq, Alaa [1 ]
Farooq, Faisal [2 ]
Sheikh, Javaid [1 ]
机构
[1] Weill Cornell Med Qatar, AI Ctr Precis Hlth, Doha, Qatar
[2] Qatar Comp Res Inst, Ctr Digital Hlth & Precis Med, Doha, Qatar
关键词
diabetes; artificial intelligence; wearable devices; machine learning; mobile phone; CARE; SYSTEM;
D O I
10.2196/36010
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Prevalence of diabetes has steadily increased over the last few decades with 1.5 million deaths reported in 2012 alone. Traditionally, analyzing patients with diabetes has remained a largely invasive approach. Wearable devices (WDs) make use of sensors historically reserved for hospital settings. WDs coupled with artificial intelligence (AI) algorithms show promise to help understand and conclude meaningful information from the gathered data and provide advanced and clinically meaningful analytics. Objective: This review aimed to provide an overview of AI-driven WD features for diabetes and their use in monitoring diabetes-related parameters. Methods: We searched 7 of the most popular bibliographic databases using 3 groups of search terms related to diabetes, WDs, and AI. A 2-stage process was followed for study selection: reading abstracts and titles followed by full-text screening. Two reviewers independently performed study selection and data extraction, and disagreements were resolved by consensus. A narrative approach was used to synthesize the data. Results: From an initial 3872 studies, we report the features from 37 studies post filtering according to our predefined inclusion criteria. Most of the studies targeted type 1 diabetes, type 2 diabetes, or both (21/37, 57%). Many studies (15/37, 41%) reported blood glucose as their main measurement. More than half of the studies (21/37, 57%) had the aim of estimation and prediction of glucose or glucose level monitoring. Over half of the reviewed studies looked at wrist-worn devices. Only 41% of the study devices were commercially available. We observed the use of multiple sensors with photoplethysmography sensors being most prevalent in 32% (12/37) of studies. Studies reported and compared >1 machine learning (ML) model with high levels of accuracy. Support vector machine was the most reported (13/37, 35%), followed by random forest (12/37, 32%). Conclusions: This review is the most extensive work, to date, summarizing WDs that use ML for people with diabetes, and provides research direction to those wanting to further contribute to this emerging field. Given the advancements in WD technologies replacing the need for invasive hospital setting devices, we see great advancement potential in this domain. Further work is needed to validate the ML approaches on clinical data from WDs and provide meaningful analytics that could serve as data gathering, monitoring, prediction, classification, and recommendation devices in the context of diabetes.
引用
收藏
页数:23
相关论文
共 59 条
[1]   An IoT-Based Non-Invasive Glucose Level Monitoring System Using Raspberry Pi [J].
Alarcon-Paredes, Antonio ;
Francisco-Garcia, Victor ;
Guzman-Guzman, Iris P. ;
Cantillo-Negrete, Jessica ;
Cuevas-Valencia, Rene E. ;
Alonso-Silverio, Gustavo A. .
APPLIED SCIENCES-BASEL, 2019, 9 (15)
[2]   A Personalized Healthcare Monitoring System for Diabetic Patients by Utilizing BLE-Based Sensors and Real-Time Data Processing [J].
Alfian, Ganjar ;
Syafrudin, Muhammad ;
Ijaz, Muhammad Fazal ;
Syaekhoni, M. Alex ;
Fitriyani, Norma Latif ;
Rhee, Jongtae .
SENSORS, 2018, 18 (07)
[3]  
[Anonymous], 2020, ADV SIGNAL PROCESSIN
[4]  
[Anonymous], About diabetes
[5]  
[Anonymous], 2018, Internet of Things (IoT) Connected Devices Installed Base Worldwide from 2015 to 2025 (in Billions)
[6]  
[Anonymous], 2019, P SPIE
[7]   A New Strategy for the Detection of Diabetic Retinopathy using a Smartphone App and Machine Learning Methods Embedded on Cloud Computer [J].
Araujo Alves, Shara Shami ;
Matos, Alexis Galeno ;
Almeida, Jefferson Silva ;
Benevides, Cilis Aragao ;
Henrique Cunha, Caio Cesar ;
Crescencio Santiago, Rhuan Victor ;
Pereira, Renato Francisco ;
Reboucas Filho, Pedro Pedrosa .
2020 IEEE 33RD INTERNATIONAL SYMPOSIUM ON COMPUTER-BASED MEDICAL SYSTEMS(CBMS 2020), 2020, :542-545
[8]   Non-invasive wearables for remote monitoring of HbA1c and glucose variability: proof of concept [J].
Bent, Brinnae ;
Cho, Peter J. ;
Wittmann, April ;
Thacker, Connie ;
Muppidi, Srikanth ;
Snyder, Michael ;
Crowley, Matthew J. ;
Feinglos, Mark ;
Dunn, Jessilyn P. .
BMJ OPEN DIABETES RESEARCH & CARE, 2021, 9 (01)
[9]   Artificial intelligence for the prevention and clinical management of hepatocellular carcinoma [J].
Calderaro, Julien ;
Seraphin, Tobias Paul ;
Luedde, Tom ;
Simon, Tracey G. .
JOURNAL OF HEPATOLOGY, 2022, 76 (06) :1348-1361
[10]   A mobile system for sedentary behaviors classification based on accelerometer and location data [J].
Ceron, Jesus D. ;
Lopez, Diego M. ;
Ramirez, Gustavo A. .
COMPUTERS IN INDUSTRY, 2017, 92-93 :25-31