WSEAS Transactions on Computers
Print ISSN: 1109-2750, E-ISSN: 2224-2872
Volume 23, 2024
Web Application for Diabetes Prediction using Machine Learning Techniques
Authors: , , ,
Abstract: The objective of this project is to predict a person's risk of having diabetes by utilizing Support Vector Machine (SVM) algorithms in an intuitive web application interface. This application attempts to provide accurate and reasonable predictions by using input health parameters (number of pregnancies, blood pressure, glucose level, insulin level, age, skin thickness, diabetes pedigree function, etc.) that users provide via a graphical user interface (GUI). By combining the power of SVM with user-friendly web technology, the project endeavors to enhance accessibility to predictive healthcare tools. The seamless integration of Machine Learning into a web application facilitates a simple and effective method for diabetes prediction, which could aid people in making accurate choices regarding their health. By promoting preventive measures and giving people early awareness, this initiative hopes to support proactive healthcare.
Search Articles
Keywords: Diabetes Prediction, Machine Learning, Support Vector Machine, Graphical User Interface, Web Application using Streamlit, Health Sector
Pages: 237-244
DOI: 10.37394/23205.2024.23.23