Diabetes Prediction and Prevention Platform UsingAI:
Devansh Lauhariya
Amity University, Uttar Pradesh, Noida, UP, India
shobhitlauhariya@gmail.com
1. Abstract
One of the worst diseases in the world is thought to be diabetes. Obesity, elevated blood glucose, and other factors are among the many factors that contribute to diabetes. It accomplishes this by changing the insulin hormone, which boosts the crab's blood sugar levels and results in an erratic metabolism.
The main goal of this program is to reduce the likelihood that people may develop diabetes by providing them with predictions and encouraging them to make better dietary and lifestyle choices in the years to come. The main objectives of this study were to create and implement a machine learning-based diabetes prediction method and look into the tactics that would be employed to make this work Endeavour. Knn, Label Encoder, and train test split are just a few of the many classification and ensemble learning algorithms that are used in the proposed method.
In order to better control diabetes and save lives, medical personnel may be able to use the research's findings to make more accurate early predictions and decisions. Using additional data, the method first evaluates the information that has been extracted from a dataset, such as specific symptoms that can be used to learn more about diabetes.
Building classification models for the diabetic data set, creating models that can identify whether a person is ill, and achieving the highest validation scores possible were the goals of this work. Massive datasets may be found in the healthcare business.
By investigating enormous datasets in this manner, we may uncover previously unknown information and trends, which will enable us to draw conclusions based on the data and make accurate forecasts. We categorize the dataset using random techniques since our major goal in doing this research is to determine the method that is the most accurate for predicting diabetes.