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Machine learning models for prediction of co-occurrence of diabetes and cardiovascular diseases: a retrospective cohort study

Abdalrada, AS, Abawajy, Jemal, Al-Quraishi, T and Islam, Shariful 2022, Machine learning models for prediction of co-occurrence of diabetes and cardiovascular diseases: a retrospective cohort study, Journal of Diabetes and Metabolic Disorders, pp. 1-11, doi: 10.1007/s40200-021-00968-z.

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Title Machine learning models for prediction of co-occurrence of diabetes and cardiovascular diseases: a retrospective cohort study
Author(s) Abdalrada, AS
Abawajy, JemalORCID iD for Abawajy, Jemal orcid.org/0000-0001-8962-1222
Al-Quraishi, T
Islam, SharifulORCID iD for Islam, Shariful orcid.org/0000-0001-7926-9368
Journal name Journal of Diabetes and Metabolic Disorders
Start page 1
End page 11
Total pages 11
Publisher Springer
Place of publication Berlin, Germany
Publication date 2022
ISSN 2251-6581
Keyword(s) AUTONOMIC NEUROPATHY
Cardiovascular disease
CHOLESTEROL
Classification and regression
Co-morbidity
CORONARY-HEART-DISEASE
Diabetes mellitus
DIAGNOSIS
Endocrinology & Metabolism
FAMILY-HISTORY
HBA1C
Life Sciences & Biomedicine
MANAGEMENT
Multi-diseases prediction
RISK-FACTOR
Science & Technology
Summary Abstract Background Diabetic mellitus (DM) and cardiovascular diseases (CVD) cause significant healthcare burden globally and often co-exists. Current approaches often fail to identify many people with co-occurrence of DM and CVD, leading to delay in healthcare seeking, increased complications and morbidity. In this paper, we aimed to develop and evaluate a two-stage machine learning (ML) model to predict the co-occurrence of DM and CVD. Methods We used the diabetes complications screening research initiative (DiScRi) dataset containing >200 variables from >2000 participants. In the first stage, we used two ML models (logistic regression and Evimp functions) implemented in multivariate adaptive regression splines model to infer the significant common risk factors for DM and CVD and applied the correlation matrix to reduce redundancy. In the second stage, we used classification and regression algorithm to develop our model. We evaluated the prediction models using prediction accuracy, sensitivity and specificity as performance metrics. Results Common risk factors for DM and CVD co-occurrence was family history of the diseases, gender, deep breathing heart rate change, lying to standing blood pressure change, HbA1c, HDL and TC\HDL ratio. The predictive model showed that the participants with HbA1c >6.45 and TC\HDL ratio > 5.5 were at risk of developing both diseases (97.9% probability). In contrast, participants with HbA1c >6.45 and TC\HDL ratio ≤ 5.5 were more likely to have only DM (84.5% probability) and those with HbA1c ≤5.45 and HDL >1.45 were likely to be healthy (82.4%. probability). Further, participants with HbA1c ≤5.45 and HDL <1.45 were at risk of only CVD (100% probability). The predictive accuracy of the ML model to detect co-occurrence of DM and CVD is 94.09%, sensitivity 93.5%, and specificity 95.8%. Conclusions Our ML model can significantly predict with high accuracy the co-occurrence of DM and CVD in people attending a screening program. This might help in early detection of patients with DM and CVD who could benefit from preventive treatment and reduce future healthcare burden.
Language eng
DOI 10.1007/s40200-021-00968-z
Indigenous content off
Field of Research 1103 Clinical Sciences
1117 Public Health and Health Services
HERDC Research category C1 Refereed article in a scholarly journal
Free to Read? Yes
Persistent URL http://hdl.handle.net/10536/DRO/DU:30161669

Document type: Journal Article
Collections: Faculty of Health
School of Exercise and Nutrition Sciences
Open Access Collection
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Every reasonable effort has been made to ensure that permission has been obtained for items included in DRO. If you believe that your rights have been infringed by this repository, please contact drosupport@deakin.edu.au.