Explainable early prediction of gestational Diabetes biomarkers by combining medical background and wearable devices: a pilot study with cohort group in South Africa

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dc.date.accessioned 2024-03-06T16:01:13Z
dc.date.available 2024-03-06T16:01:13Z
dc.date.issued 2024-03-06 en
dc.identifier.uri http://hdl.handle.net/20.500.11910/23180
dc.description.abstract This study aims to explore the potential of Internet of Things (IoT) devices and explainable Artificial Intelligence (AI) techniques in predicting biomarker values associated with GDM when measured 13 - 16 weeks prior to diagnosis. We developed a system that forecasts biomarkers such as LDL, HDL, triglycerides, cholesterol, HbA1c, and results from the Oral Glucose Tolerance Test (OGTT) including fasting glucose, 1-hour, and 2-hour postload glucose values. These biomarker values are predicted based on sensory measurements collected around week 12 of pregnancy, including continuous glucose levels, short physical movement recordings, and medical background information. To the best of our knowledge, this is the first study to forecast GDM-associated biomarker values 13 to 16 weeks prior to the GDM screening test, using continuous glucose monitoring devices, a wristband for activity detection, and medical background data. We applied machine learning models, specifically Decision Tree and Random Forest Regressors, along with Coupled-Matrix Tensor Factorisation (CMTF) and Elastic Net techniques, examining all possible combinations of these methods across different data modalities. The results demonstrated good performance for most biomarkers. On average, the models achieved Mean Squared Error (MSE) between 0.29 and 0.42 and Mean Absolute Error (MAE) between 0.23 and 0.45 for biomarkers like HDL, LDL, cholesterol, and HbA1c. For the OGTT glucose values, the average MSE ranged from 0.95 to 2.44, and the average MAE ranged from 0.72 to 0.91. Additionally, the utilisation of CMTF with Alternating Least Squares technique yielded slightly better results (0.16 MSE and 0.07 MAE on average) compared to the well-known Elastic Net feature selection technique. While our study was conducted with a limited cohort in South Africa, our findings offer promising indications regarding the potential for predicting biomarker values in pregnant women through the integration of wearable devices and medical background data in the analysis. Nevertheless, further validation on a larger, more diverse cohort is imperative to substantiate these encouraging results. en
dc.format.medium Print en
dc.subject MEDICAL CARE en
dc.subject HEALTH CARE en
dc.subject DIABETES en
dc.title Explainable early prediction of gestational Diabetes biomarkers by combining medical background and wearable devices: a pilot study with cohort group in South Africa en
dc.type Journal Article en
dc.description.version Y en
dc.ProjectNumber PUAWAA en
dc.Volume February en
dc.BudgetYear 2023/24 en
dc.ResearchGroup Public Health, Societies and Belonging en
dc.SourceTitle IEEE Journal of Biomedical and Health Informatics en
dc.ArchiveNumber 9814335 en
dc.URL http://ktree.hsrc.ac.za/doc_read_all.php?docid=28720 en
dc.PageNumber Online en
dc.outputnumber 14992 en
dc.bibliographictitle Kolozali, S., White, S.L., Norris, S., Fasli, M. & Van Heerden, A. (2024) Explainable early prediction of gestational Diabetes biomarkers by combining medical background and wearable devices: a pilot study with cohort group in South Africa. IEEE Journal of Biomedical and Health Informatics. February:Online. en
dc.publicationyear 2024 en
dc.contributor.author1 Kolozali, S. en
dc.contributor.author2 White, S.L. en
dc.contributor.author3 Norris, S. en
dc.contributor.author4 Fasli, M. en
dc.contributor.author5 Van Heerden, A. en


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