Development of a Diabetes Mellitus Diagnostic System Using Self-Organizing Map Algorithm: A Machine Learning Approach

Egba, Anwaitu Fraser1; Akawuku Ifeanyi Godspower2; Alade Samuel Mayowa3 and Iduh Blessing4

1Department of Computer and Robotics Education, School of Science Education, Federal College of Education (Technical), P.M.B. 11, Omoku, Rivers State, in Affiliation with University of Nigeria, Nsukka, Enugu State, Nigeria.

2,3,4Department of Computer Science, Faculty of Physical Sciences, Nnamdi Azikiwe University, P.M.B 5056, Awka, Anambra State, Nigeria.

Corresponding Author: Egba, Anwaitu Fraser, Department of Computer Science, School of Science Education, Federal College of Education (Technical), Omoku, Rivers State, in Affiliation to University of Nigeria, Nsukka, Enugu State, Nigeria. Email: egbaaa2@gmail.com        

ABSTRACT

Delivery of Health care services in developing nations has posed a huge problem to the world at large. The United Nations and the World Health Organization have been on the front burner sorting for ways of improving these problems to abate the yearly mortality rates which are caused largely by inadequate health facilities, poor technical know-how, and poor health care administration. One disease that has a high number of patients is diabetes. In Nigeria, out of a population of 200 million, diabetes kills over 2% yearly. To reduce this menace, early diagnosis and awareness are important. And automation of the medical diagnostic system is one of the sure ways of achieving these feet. This paper explores the potential of a self-organizing map algorithm; a machine learning technique in the development of a diabetes mellitus diagnostic system (DMDS). Data collected from 120 patients from the University of Port Harcourt Teaching Hospital (UPTH) was used in the training and validation of the model. The confusion matrix formula was used in testing the sensitivity and accuracy of the model which yielded 75.63% and 87.2% respectively which are within the accepted range, predefined by expert physicians.

Keywords Artificial Intelligence, self-organizing map, diagnosis, neural networks, diabetes mellitus

CITE AS: Egba, Anwaitu Fraser, Akawuku Ifeanyi Godspower, Alade Samuel Mayowa and Iduh Blessing (2024). Development of a Diabetes Mellitus Diagnostic System Using Self-Organizing Map Algorithm: A Machine Learning Approach. IDOSR JOURNAL OF SCIENTIFIC RESEARCH 9(1) 72-80. https://doi.org/10.59298/IDOSRJSR/2024/9.1.7280.100