Precision Diabetic Monitoring Using Artificial Intelligence and Machine Learning

Authors

  • GREESHMA YALURU

DOI:

https://doi.org/10.46243/jst.2021.v6.i05.pp64-70

Keywords:

Diabetes, Machine, Learning, Prediction, Dataset, Ensemble

Abstract

Diabetes is a disease that develops as a result of a high glucose level in the bloodstream of a person. A person's diabetes should not be disregarded; if left untreated, diabetes may lead to serious health complications in the long run. Such as heart disease, renal disease, , high blood pressure, and so on it may cause eye damage and can also have an impact on other organs in the human body. Diabetes may be managed if it is identified and treated early on. In order to accomplish this is the objective during this project's effort; we will look at early diabetes detection. In a human body or on a patient in order to gets more precision Different Machine Learning Techniques are being used. Machine gaining knowledge of methods by constructing models using data gathered from patients, it is possible to get better results for prediction. This is the case in this effort that we will put to use Classification and ensemble learning with machine learning Using statistical methods on a dataset, diabetes may be predicted. Which of the following are K-Nearest? KNN (Kindest Neighbour), Logistic Regression (LR), and Decision Tree (DT), Support Vector Machine (SVM), Gradient Boosting (GB), and Support Vector Machine (SVM) The Forest of Chance (RF). Every model has a different level of accuracy than the others. Whenever they are contrasted with other models. The project work provides the opportunity to the model's ability to forecast diabetes with high accuracy or greater accuracy demonstrates that the model is capable of doing so. As a result of our research, we have discovered that when compared to other methods, Random Forest produced greater accuracy. Techniques using machine learning.

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Published

2021-10-12

How to Cite

YALURU, G. (2021). Precision Diabetic Monitoring Using Artificial Intelligence and Machine Learning. Journal of Science & Technology (JST), 6(5), 64–70. https://doi.org/10.46243/jst.2021.v6.i05.pp64-70