Chronic Diseases Prediction Using ML
- URL: http://arxiv.org/abs/2502.10481v1
- Date: Thu, 13 Feb 2025 22:55:17 GMT
- Title: Chronic Diseases Prediction Using ML
- Authors: Sri Varsha Mulakala, G. Neeharika, P. Vinay Kumar, A. Bhargava Kiran,
- Abstract summary: The recent increase in morbidity is primarily due to chronic diseases including Diabetes, Heart disease, Lung cancer, and brain tumours.
We built a machine-learning model for predicting the existence of numerous diseases utilising datasets from various sources.
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- Abstract: The recent increase in morbidity is primarily due to chronic diseases including Diabetes, Heart disease, Lung cancer, and brain tumours. The results for patients can be improved, and the financial burden on the healthcare system can be lessened, through the early detection and prevention of certain disorders. In this study, we built a machine-learning model for predicting the existence of numerous diseases utilising datasets from various sources, including Kaggle, Dataworld, and the UCI repository, that are relevant to each of the diseases we intended to predict. Following the acquisition of the datasets, we used feature engineering to extract pertinent features from the information, after which the model was trained on a training set and improved using a validation set. A test set was then used to assess the correctness of the final model. We provide an easy-to-use interface where users may enter the parameters for the selected ailment. Once the right model has been run, it will indicate whether the user has a certain ailment and offer suggestions for how to treat or prevent it.
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