Gaussian kernelized transformer learning model for brain tumor risk factor identification and disease diagnosis

Published

20-03-2025

DOI:

https://doi.org/10.58414/SCIENTIFICTEMPER.2025.16.2.03

Keywords:

Brain tumor diagnosis, Epileptic seizures detection, Sokal–Michener’s multivariate relief matching technique, Optimizer to minimize data dimensionality, Gaussian Kernelized Transformer Learning model, ROC curve analysis.

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Issue

Section

Research article

Authors

Abstract

Brain tumor is an abnormal growth of cells in brain or central spinal canal. Tumors are benign (non-cancerous) or malignant (cancerous). They can be invented in the brain (primary tumors) or spread to other elements of the body. Early detection significantly improves survival rates and overall prognosis for patients by enabling intervention before tumors grow larger or spread, which can complicate treatment. Early intervention also preserves brain function and quality of life while minimizing severe neurological damage or symptoms. Epileptic seizures are a significant clinical symptom and a potential early indicator of brain tumors in patients. Conventional machine learning and deep learning face significant challenges in accurately detecting brain tumors with minimal time consumption. In this paper, a novel technique called multivariate relief matching gaussian kernelized transformer learning (MRMGKTL) model has been developed. The major intent of the MRMGKTL model is to enhance the accuracy of brain tumor detection through the recognition of epileptic seizures. MRMGKTL model comprises data acquisition, feature selection, and classification. In the data acquisition phase, electrical activity data from the brains of patients are collected from datasets for diagnosing brain tumors based on epileptic seizures. Following data acquisition, Sokal– Michener’s multivariate relief matching technique is used to choose the most significant aspects of the dataset. The feature selection process in the proposed method aims to minimize the time required for tumor detection. Using the selected features, brain tumor disease diagnosis is performed using a Gaussian Kernelized transformer learning model to detect and diagnose brain tumors associated with epileptic seizure severity levels with higher accuracy. This approach ensures the accurate identification of brain tumors and associated risk factors with minimal time consumption. Experimental assessment evaluates various factors. Analyzed outcomes demonstrate that the proposed MRMGKTL model achieves superior performance in accuracy of brain tumor diagnosis and reduces time consumption compared to conventional deep learning methods.

How to Cite

P S Renjeni, B Senthilkumaran, Ramalingam Sugumar, & Jaya Singh Dhas. (2025). Gaussian kernelized transformer learning model for brain tumor risk factor identification and disease diagnosis. The Scientific Temper, 16(02), 3710–3721. https://doi.org/10.58414/SCIENTIFICTEMPER.2025.16.2.03

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Author Biographies

P S Renjeni, Research Scholar, Christu Raj College of Arts & Science, Bharathidasan University

P S RENJENI received B.Sc Chemistry from SreeDevi Kumari College for Women,Manonmaniam Sundaranar University, TamilNadu,India and obtained MCA from Noorul Islam College of Engineering, Manonmaniam Sundaranar University. Presently , she is doing Ph.D in Bharathidasan University, Trichy, India.She has 19 years of teaching experience and working as Assistant Professor in the Department of Computer Science, V T M College of Arts and Science, Arumanai, TamilNadu, India. Her research interest is in Data Mining.

B Senthilkumaran, Research Supervisor, Christu Raj College of Arts & Science, Bharathidasan University

Dr. B. SENTHIL KUMARAN received his Bachelor of Science in Computer
Science in 2011 from Bharathidasan University, Thiruchirapalli and Master of
Science in Computer Science from Bharathidasan University, Thiruchirapalli in 2013, Ph.D from Bharathidasan University, Thiruchirappalli in 2019 and PDF from Srinivas University, Karnataka since 2022. He is currently working as a Assistant Professor, Department of Computer Science, Christuraj College, Thruchirappalli and previously Head of the Department, Department of Computer Science, Jairams College of Arts and Science, Karur, Tamil Nadu. He has a teaching experience of 5 years and 10 months and has published 6 papers in reputed international journals.

Ramalingam Sugumar, Professor, PG & Research Department of Computer Science & Applications, Christu Raj College

Dr.R.Sugumar is currently working as Director in PG & Research Department and Application at Christhu Raj College (Affiliated to Bharathidasan University) Trichy. In 1997 he graduated his Master’s Degree in Computer Science and by 2004 he completed his M.Phil. In Computer Science. He awarded a Doctorate Degree in Computer Science by 2013. Additionally, He qualified SET Examination by April 2017.He has more than 23 years of experience in the teaching field in the Department of Computer Science respectively. 9 Students have completed and awarded for the Doctorate Degree in Computer Science, while 5 research scholars are currently pursuing degree in the same field and also he supervised more than 15 student in Master of philosophy. He also presented and published more than 60 papers in various Conferences which includes National and International Journals including Web of Science,Scopus indexed, UGC care journals and authored 3 Text books. He also conducted and participated in many workshops and FDP’s. His primary areas of interest are Cloud Computing, Network Security, Data Mining and Warehousing, To his credit, he serves as a Board of Studies Member in AVS College and he acts as an Editor for various reputed Journals. He reviews manuscripts for several publications, including the Journal of Advances in Mathematics and Computer Science & the Asian Journal of Reasearch in Computer Science. He received Indo Middle East Educational Excellence Award-2023 at “Dubai International Conference” organized by Global Research Conference Forum, Pune.

L. Jaya Singh Dhas, Assistant Professor in Computer Science, Scott Christian College

  1. Jaya Singh Dhas received his Bachelor of Science in Computer Science from Madurai Kamaraj University - Madurai, India in 1991. Master of Computer Applications from Bharathidasan University - Tiruchirappalli in the year 1996. M.Phil Computer Science from Alagappa University - Karikudi in the year 1998 and Completed his Ph.D degree in Computer Science from Bharathidasan University – Tiruchirappalli in the year 2022.  He has published more than 10 research papers in reputed national and international journals. He is a member of Internet society and International Association of Engineers (IAENG) since 2017. He has published 3 book chapters in international and national books. He received patent entitled Monitoring E-Health Care System Using Artificial Intelligence Techniques & Methods in 2022. He is  currently working as a Head of the Department & Assistant Professor, Department of Computer Science, Scott Christian College (Autonomous), Nagercoil since 1998 and his research work focuses on Algorithms, Big Data Analytics, Data Science & Machine learning.

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