Prediction of type 2 diabetes mellitus using hematological factors based on machine learning approaches: A cohort study analysis

Autor: Amin Mansoori, Toktam Sahranavard, Zeinab Sadat Hosseini, Sara Saffar Soflaei, Negar Emrani, Eisa Nazar, Melika Gharizadeh, Zahra Khorasanchi, Mark Ghamsary, Gordon Ferns, Habibollah Esmaily, Majid Ghayour-Mobarhan
Rok vydání: 2022
Popis: Background Type 2 Diabetes mellitus (T2DM) is a significant public health problem globally. The diagnosis and management of diabetes are critical to reduce the complications of diabetes including cardiovascular disease and cancer. This study was designed to assess the potential association between T2DM and several routinely measured hematological parameters. Method This study was a subsample of 9000 adults aged 35–65 years recruited as part of Mashhad stroke and heart atherosclerotic disorder (MASHAD) cohort study population. Data mining techniques including logistic regression (LR), decision tree (DT) and bootstrap forest (BF) algorithms were applied to analyze data. All data analyses were performed using SPSS version 22 and SAS JMP Pro version 13 at a significant level of 0.05. Results Based on the performance indices, the BF model gave high accuracy, precision, specificity, and AUC compared to the other models. Thus, according to all the assessed hematological factors, the most effective risk factors for predicting the development of T2DM in the BF model were age and WBC. Conclusion In summary, the BF model represented a better performance to predict T2DM. Also, our selected model provides valuable information on critical determinants to predict T2DM like age and WBC.
Databáze: OpenAIRE