Predicting Early-Stage Diabetes Risk: A Machine Learning Approach

Neelam Agrawal*, Siddhartha Choubey**, Abha Choubey***, Somesh Kumar Dewangan****
*-**** Shri Shankaracharya Technical Campus, Bhilai, Chhattisgarh, India.
Periodicity:January - June'2024
DOI : https://doi.org/10.26634/jds.2.1.20356

Abstract

This study evaluates the potential of machine learning algorithms for early-stage diabetes prediction. A dataset containing demographic information, medical history, and lab results was analyzed using Logistic Regression and Random Forest Classifier. The results showed that Random Forest algorithms were able to accurately predict diabetes at an early stage with high accuracy. The best-performing algorithm was found to be the Random Forest Classifier, with an accuracy of 98.0%. These findings suggest that machine-learning algorithms hold great promise for improving diabetes diagnosis and management. The results of this study provide valuable insights for future research in this area and may help inform the development of more effective and efficient screening and treatment strategies for diabetes.

Keywords

Logistic Regression, Random Forest Classifier, Machine Learning Algorithms, Multi-Diabetes, Diabetes Prediction.

How to Cite this Article?

Agrawal, N., Choubey, S., Choubey, A., and Dewangan, S. K. (2024). Predicting Early-Stage Diabetes Risk: A Machine Learning Approach. i-manager’s Journal on Data Science & Big Data Analytics, 2(1), 30-35. https://doi.org/10.26634/jds.2.1.20356

References

If you have access to this article please login to view the article or kindly login to purchase the article

Purchase Instant Access

Single Article

North Americas,UK,
Middle East,Europe
India Rest of world
USD EUR INR USD-ROW
Pdf 40 40 300
Online 40 40 300
Pdf & Online 40 40 300

Options for accessing this content:
  • If you would like institutional access to this content, please recommend the title to your librarian.
    Library Recommendation Form
  • If you already have i-manager's user account: Login above and proceed to purchase the article.
  • New Users: Please register, then proceed to purchase the article.