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Early diagnosis of diabetes mellitus

Ongoing

Early Diagnosis of Diabetes Mellitus in Oman using AI- based Predictive Algorithm

Diabetes mellitus is observed as the fastest growing disease in the world. By 2050, the world’s diabetes patients are expected to reach to over 700 million, which means one in 20 adults will be suffering from diabetes according to “World Population Ageing report” published by the United Nation in 2015. The Oman National Center of Data and Statistic reports that diabetes mellitus is ranked 4th as the cause of death in Oman in 2019. Therefore, early diagnosis and treatment will minimize mortality due to diabetes.

The main aim of the research is to develop a predictive model for early diagnosis of diabetes mellitus type II among Omani nationals using AI-based techniques such as machine learning (ML) support vector machine (SVM), convolutional neural networks (CNN), deep learning (DL) and combined ML and DL. The early diagnosis of the disease is vital to provide early treatment intervention to control disease progression and minimize premature death.

This research provides a common understanding of diabetes mellitus classification using artificial intelligence, machine learning and deep learning. The research began by reviewing all relevant studies and explored the accuracy in diabetes prediction. At first, the published studies were analyzed in detail and classified according to their methodologies. The comprehensive and detailed review of the diagnosis of diabetes by machine learning algorithms as well as the combined models have been compiled into a comprehensive report. The literature review also includes the accumulation and creation of classification and prediction techniques. The published prediction models use different types of machine learning algorithms such as classification or association algorithms; Decision Trees, Support Vector Machine (SVM), and Linear Regression. They were the most common algorithms used until July 2020. Deep Learning (DL) has been introduced as an improvement to ANN. Recent studies that have used DL produced remarkable results. The accuracy rate produced by these methods varied. This has encouraged us to attempt to improve the accuracy by either building models with classifiers that haven’t been used or combine different classifiers. The majority of the studies in the field of the diabetes prediction used the public Pima Indian Dataset obtained from the UCI repository. We are working closely with clinical collaborators in Oman to collect the available Diabetic Clinic data in different regions for age groups above the age of 40 as the national screening is routinely done for this age group in Oman. This data will be preprocessed and used to develop the AI predictive model. 


Meet the Principal Investigator(s) for the project

Professor Wamadeva Balachandran
Professor Wamadeva Balachandran - Professor Balachandran is Professor of Electronic Systems and served as Head of Department of Systems Engineering at ÃÛÌÒ´«Ã½, UK, from 1999 to 2004. Before joining ÃÛÌÒ´«Ã½ in 1995, he was a Reader in the Department of Electronics & Electrical Engineering at the University of Surrey, UK. Prior to joining Surrey he was a Post-Doctoral Research Fellow in the Department of Electronics at Southampton University, UK, from 1979 to 1983. He received his MSc and PhD degrees in Control Engineering and Measurement & Instrumentation from University of Bradford, UK, in 1975 and 1979 respectively. He received the BSc degree in Physical Sciences from University of Ceylon, Colombo, Sri Lanka, in 1971. After serving as a temporary member of academic staff for nine months in University of Ceylon, Colombo, Sri Lanka, he joined as an academic member of staff in the Physics Department of Fourabay College, University of Sierra Leone in 1971 and remained until 1974. During this period he also taught Physics and mathematics in a secondary school. He was a Visiting Professor in the Driftmier Engineering Centre at University of Georgia in 1993 and 1996. He is a Visiting Professor at the University of Mansoura and Dongguan University in China. In 2004 he was a Visiting Scholar in the School of Engineering & Applied Science at University of California, Los Angeles. Professor Balachandran is a Fellow of IEEE (USA), IEE (UK), InstPhy (UK), InstMC (UK) and Royal Society of Arts (UK). His research interest spans several different disciplines: Electrostatics & Charge Particle Dynamics, Electrohydrodynamics, Micro/Nano particles and fibre generation, Transport of DNA using DEP force, Lab-on-a-chip, Electromagnetic Field Sensing, EM Interaction with Human Body, Dynamic Measurement Systems, Global Positioning Satellite System for Navigation and Medical Electronics. He has actively pursued research in these fields for more than 20 years and published over 200 papers to date and filed 10 patent applications. He has served as an External Examiner for 23 PhD degrees in the UK, France and Australia. Professor Balachandran has presented more than 40 plenary and invited talks in his field of expertise at international conferences around the globe. He has organized and Chaired several international conferences and continue to serve as a member of several scientific and organizing committees of international conferences. He is regularly invited to Chair sessions at IEEE/IAS, ICLASS, and several other meetings in the UK, Europe, USA and Asia. On a couple of occasions, Prof. Balachandran’s research has been featured on BBC World Service and TV Broadcasts. He continues to review manuscripts for 15 archival journals and research grant applications for EPSRC (UK), EU Framework, NSF (USA), SERC (Canada) and Singapore government. Prof. Balachandran is a member of the Editorial Board of the Journal of Atomization and Sprays, and the International Journal of Particle Science and Technology. He is a paper review manager of IEEE Transactions of Industrial Application Society. He has been a Guest Editor for the Journal of Measurement & Control. He has served as a member of ÃÛÌÒ´«Ã½ Court, Council, Senate, Finance Committee, Appeals Panel, Faculty Board and Wolfson Centre Advisory Board. He has a long experience of acting as a consultant in the fields of his research to over 30 companies worldwide.

Related Research Group(s)

instrument

Biomedical Engineering - Research in the growing multi-disciplinary field of advanced technology as devices, processes and modelling to advance health through improvements in therapy, diagnosis, screening, monitoring and rehabilitation.


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Project last modified 22/11/2023