Authors:
S. Rubin Bose, J. Angelin Jeba, Balika J. Chelliah, B. Aarthi, R. Regin, S. Suman Rajest
Addresses:
Department of Electronics and Communications Engineering, SRM Institute of Science and Technology, Ramapuram, Chennai, Tamil Nadu, India. Department of Electronics and Communication Engineering, S.A. Engineering College, Chennai, Tamil Nadu, India. Department of Computer Science and Engineering, SRM Institute of Science and Technology, Ramapuram, Chennai, Tamil Nadu, India. Department of Research and Development & International Student Affairs, Dhaanish Ahmed College of Engineering, Chennai, Tamil Nadu, India.
Chronic liver illnesses like cirrhosis and hepatitis threaten world health. Early prediction helps improve treatment outcomes and prevent liver failure or cancer. This research presents the concept of early diagnosis of TabNet liver disease. TabNet predicts liver disease development accurately and reliably, outperforming Random Forest and Logistic Regression models for optimisation. Real-time analysis gives healthcare practitioners relevant insights for early intervention and personalised treatment. Key features include real-time alerts and predictions from continuous patient data monitoring. The technology alerts immediately of any irregularities or hazards, ensuring timely intervention for chronic liver disorders or preventative treatment. The easy, adaptive user interface allows dynamic model confidence threshold change. The solution also allows batch data analysis for retrospective evaluation. This hybrid machine learning method compares model confidence scores to optimise and strengthen the answer. Its flexibility allows it to be used in patient monitoring and risk prediction while preserving accuracy and interpretability.
Keywords: Liver Disease Detection; Predictive Models; Random Forest; Logistic Regression; Machine Learning; Proactive Healthcare; Personalized Medicine; Retrospective Evaluation.
Received on: 29/06/2024, Revised on: 18/09/2024, Accepted on: 03/11/2024, Published on: 03/12/2024
DOI: 10.69888/FTSHSL.2024.000277
FMDB Transactions on Sustainable Health Science Letters, 2024 Vol. 2 No. 4, Pages: 231-244