Abstract
Risk assessment and developing predictive models for diabetes prevention is considered an important task. Therefore, we proposed to analyze and provide a comprehensive analysis of the performance of diabetes screening scores for risk assessment and prediction in five populations: the Chinese, Japanese, Korean, US-PIMA Indian, and Trinidadian populations, utilizing statistical and machine learning (ML) methods. Additionally, due to the present COVID-19 epidemic, it is necessary to investigate how diabetes and COVID-19 are related to one another. Thus, by using a sample of the Korean population, the interrelationship between diabetes and COVID-19 was further investigated. The results revealed that by using a statistical method, the optimal cut points among Chinese, Japanese, Korean, US-PIMA Indian, and Trinidadian populations were 6.205 mmol/L (FPG), 5.523 mmol/L (FPG), and 5.375% (HbA1c), 150.50–106.50 mg/dL (FBS), 123.50 mg/dL (2hPG), and 107.50 mg/dL (FBG), respectively, with AUC scores of 0.97, 0.80, 0.78, 0.85, 0.79, and 0.905. The results also confirmed that diabetes has a significant relationship with COVID-19 in the Korean population (p-value 0.001), with an adjusted OR of 1.21. Finally, the overall best ML models were performed by Naïve Bayes with AUC scores of 0.736, 0.75, and 0.83 in the Japanese, Korean, and Trinidadian populations, respectively.
Funder
Sejong University Industry-Academic Cooperation Foundation
Subject
General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)
Reference96 articles.
1. Pate, A., Emsley, R., Ashcroft, D.M., Brown, B., and van Staa, T. The Uncertainty with Using Risk Prediction Models for Individual Decision Making: An Exemplar Cohort Study Examining the Prediction of Cardiovascular Disease in English Primary Care. BMC Med., 2019. 17.
2. Overview of Clinical Prediction Models;Chen;Ann. Transl. Med.,2020
3. Performance of Screening and Diagnostic Tests: Application of Receiver Operating Characteristic Analysis;Murphy;Arch. Gen. Psychiatry,1987
4. Risk Prediction Tools in Cardiovascular Disease Prevention: A Report from the ESC Prevention of CVD Programme Led by the European Association of Preventive Cardiology (EAPC) in Collaboration with the Acute Cardiovascular Care Association (ACCA) and the Association of Cardiovascular Nursing and Allied Professions (ACNAP);Rossello;Eur. J. Psychiatry Nurs.,2019
5. HDPM: An Effective Heart Disease Prediction Model for a Clinical Decision Support System;Fitriyani;IEEE Access,2020