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المؤلفAhmed, Arfan
المؤلفAziz, Sarah
المؤلفQidwai, Uvais
المؤلفAbd-Alrazaq, Alaa
المؤلفSheikh, Javaid
تاريخ الإتاحة2024-05-07T05:39:55Z
تاريخ النشر2023
اسم المنشورComputer Methods and Programs in Biomedicine Update
المصدرScopus
المعرّفhttp://dx.doi.org/10.1016/j.cmpbup.2023.100094
الرقم المعياري الدولي للكتاب26669900
معرّف المصادر الموحدhttp://hdl.handle.net/10576/54655
الملخصIntroduction: Diabetes Mellitus (DM) is characterized by impaired ability to metabolize glucose for use in cells for energy, resulting in high blood sugar (hyperglycemia). DM impacted 463 million individuals worldwide in 2019, with over four million fatalities documented. Blood glucose levels (BGL) are usually measured, as standard protocols, through invasive procedures. Recently, Artificial Intelligence (AI) based techniques have demonstrated the potential to estimate BGL using data collected by non-invasive Wearable Devices (WDs), thereby, facilitating monitoring and management of diabetics. One of the key aspects of WDs with machine learning (ML) algorithms is to find specific data signatures, called Digital biomarkers, that can be used in classification or gaging the extent of the underlying condition. The use of such biomarkers to monitor glycemic events represents a major shift in technology for self-monitoring and developing digital biomarkers using non-invasive WDs. To do this, it is necessary to investigate the correlations between characteristics acquired from non-invasive WDs and indicators of glycemic health; furthermore, much work is needed to validate accuracy. Research Design & Methods: The study aimed to investigate performance of AI models in estimating BGL among diabetic patients using non-invasive wearable devices data An open-source dataset was used which provided BGL readings, diabetic status (Diabetic or non-diabetic), heart rate, Blood oxygen level (SPO2), Diastolic Blood pressure, Systolic Blood Pressure, Body temperature, Sweating, and Shivering for 13 participants by age group taken from WDs. Our experimental design included Data Collection, Feature Engineering, ML model selection/development, and reporting evaluation of metrics. Results: We were able to estimate with high accuracy (RMSE range: 0.099 to 0.197) the relationship between glycemic metrics and features that can be derived from non-invasive WDs when utilizing AI models. Conclusion: We provide further evidence of the feasibility of using commercially available WDs for the purpose of BGL estimation amongst diabetics.
اللغةen
الناشرElsevier
الموضوعArtificial intelligence
Blood glucose level
Deep learning
Diabetes
Machine learning
Wearable devices
العنوانPerformance of artificial intelligence models in estimating blood glucose level among diabetic patients using non-invasive wearable device data
النوعArticle
رقم المجلد3


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