Show simple item record

AuthorOjurongbe, Taiwo Adetola
AuthorAfolabi, Habeeb Abiodun
AuthorOyekale, Adesola
AuthorBashiru, Kehinde Adekunle
AuthorAyelagbe, Olubunmi
AuthorOjurongbe, Olusola
AuthorAbbasi, Saddam Akber
AuthorAdegoke, Nurudeen A.
Available date2024-10-13T06:39:08Z
Publication Date2024
Publication NameHealth Science Reports
ResourceScopus
ISSN23988835
URIhttp://dx.doi.org/10.1002/hsr2.1834
URIhttp://hdl.handle.net/10576/60032
AbstractBackground and Aims: With the global rise in type 2 diabetes, predictive modeling has become crucial for early detection, particularly in populations with low routine medical checkup profiles. This study aimed to develop a predictive model for type 2 diabetes using health check-up data focusing on clinical details, demographic features, biochemical markers, and diabetes knowledge. Methods: Data from 444 Nigerian patients were collected and analysed. We used 80% of this data set for training, and the remaining 20% for testing. Multivariable penalized logistic regression was employed to predict the disease onset, incorporating waist-hip ratio (WHR), triglycerides (TG), catalase, and atherogenic indices of plasma (AIP). Results: The predictive model demonstrated high accuracy, with an area under the curve of 99% (95% CI = 97%-100%) for the training set and 94% (95% CI = 89%-99%) for the test set. Notably, an increase in WHR (adjusted odds ratio [AOR] = 70.35; 95% CI = 10.04-493.1, p-value < 0.001) and elevated AIP (AOR = 4.55; 95% CI = 1.48-13.95, p-value = 0.008) levels were significantly associated with a higher risk of type 2 diabetes, while higher catalase levels (AOR = 0.33; 95% CI = 0.22-0.49, p < 0.001) correlated with a decreased risk. In contrast, TG levels (AOR = 1.04; 95% CI = 0.40-2.71, p-value = 0.94) were not associated with the disease. Conclusion: This study emphasizes the importance of using distinct clinical and biochemical markers for early type 2 diabetes detection in Nigeria, reflecting global trends in diabetes modeling, and highlighting the need for context-specific methods. The development of a web application based on these results aims to facilitate the early identification of individuals at risk, potentially reducing health complications, and improving diabetes management strategies in diverse settings.
SponsorAll authors confirm that no funding was involved in the study. Open access publishing facilitated by The University of Sydney, as part of the Wiley - The University of Sydney agreement via the Council of Australian University Librarians.
Languageen
PublisherJohn Wiley and Sons Inc
Subjectdemographic features and clinical symptoms
machine learning
patients' knowledge of diabetes
prediction
type 2 diabetes
TitlePredictive model for early detection of type 2 diabetes using patients' clinical symptoms, demographic features, and knowledge of diabetes
TypeArticle
Issue Number1
Volume Number7
dc.accessType Open Access


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record