The Utilization of Machine Learning Algorithms for Assisting Physicians in the Diagnosis of Diabetes

Author:

Nguyen Linh Phuong12,Tung Do Dinh23ORCID,Nguyen Duong Thanh4ORCID,Le Hong Nhung5,Tran Toan Quoc5ORCID,Binh Ta Van2,Pham Dung Thuy Nguyen67ORCID

Affiliation:

1. School of Preventive Medicine and Public Health, Ha Noi Medical University, 1, Ton That Tung Street, Dong Da District, Ha Noi 100000, Vietnam

2. Vietnam Diabetes Educators Association, 52/A1 Dai Kim Urban Area, Hoang Mai District, Ha Noi 100000, Vietnam

3. Saint Paul General Hospital, 12A Chu Van An, Ba Dinh District, Ha Noi 100000, Vietnam

4. Institute for Tropical Technology, Vietnam Academy of Science and Technology (VAST), 18 Hoang Quoc Viet St., Cau Giay Dist., Ha Noi 100000, Vietnam

5. Institute of Natural Products Chemistry, Vietnam Academy of Science and Technology (VAST), 18 Hoang Quoc Viet St., Cau Giay Dist., Ha Noi 100000, Vietnam

6. NTT Institute of Applied Technology and Sustainable Development, Nguyen Tat Thanh University, Ho Chi Minh City 70000, Vietnam

7. Faculty of Environmental and Food Engineering, Nguyen Tat Thanh University, Ho Chi Minh City 70000, Vietnam

Abstract

This paper investigates the use of machine learning algorithms to aid medical professionals in the detection and risk assessment of diabetes. The research employed a dataset gathered from individuals with type 2 diabetes in Ninh Binh, Vietnam. A variety of classification algorithms, including Decision Tree Classifier, Logistic Regression, SVC, Ada Boost Classifier, Gradient Boosting Classifier, Random Forest Classifier, and K Neighbors Classifier, were utilized to identify the most suitable algorithm for the dataset. The results of the present study indicate that the Random Forest Classifier algorithm yielded the most promising results, exhibiting a cross-validation score of 0.998 and an accuracy rate of 100%. To further evaluate the effectiveness of the selected model, it was subjected to a testing phase involving a new dataset comprising 67 patients that had not been previously seen. The performance of the algorithm on this dataset resulted in an accuracy rate of 94%, especially the study’s notable finding is the algorithm’s accurate prediction of the probability of patients developing diabetes, as indicated by the class 1 (diabetes) probabilities. This innovative approach offers a meticulous and quantifiable method for diabetes detection and risk evaluation, showcasing the potential of machine learning algorithms in assisting clinicians with diagnosis and management. By communicating the diabetes score and probability estimates to patients, the comprehension of their disease status can be enhanced. This information empowers patients to make informed decisions and motivates them to adopt healthier lifestyle habits, ultimately playing a crucial role in impeding disease progression. The study underscores the significance of leveraging machine learning in healthcare to optimize patient care and improve long-term health outcomes.

Funder

Vietnam Ministry of Science and Technology

Publisher

MDPI AG

Subject

Clinical Biochemistry

Reference39 articles.

1. International Diabetes Federation (2023, May 11). IDF Diabetes Atlas|Tenth Edition. Available online: https://diabetesatlas.org/.

2. World Health Organization (2023, May 11). The Growing Burden of Diabetes in Viet Nam. Available online: https://www.who.int/vietnam/news/feature-stories/detail/the-growing-burden-of-diabetes-in-viet-nam.

3. International Diabetes Federation (2023, May 11). Global Diabetes Data Report 2000–2045. Available online: https://diabetesatlas.org/data/.

4. International Diabetes Feferation (2023, May 11). Viet Nam Diabetes Report 2000–2045. Available online: https://diabetesatlas.org/data/en/country/217/vn.html.

5. Russell, S.J., Norvig, P., and Davis, E. (2010). Artificial Intelligence: A Modern Approach, Prentice Hall. [3rd ed.].

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