Multiple Disease Prediction Using Streamlit

  • Unique Paper ID: 155579
  • Volume: 9
  • Issue: 1
  • PageNo: 1169-1172
  • Abstract:
  • Wellbeing is one of the significant variables to be considered by an individual.Healthcare falls under the essential conveniences to be given to the society.Many of the current AI models for medical services examination are focusing on one disease prediction for each analysis.Our point is to anticipate the various sorts of illness in single stage by utilizing inbuilt python module Streamlit.In this task we are utilizing Naïve Bayes algorithm, random forest,decision tree and svm classifier are utilized for prediction of a particular disease .The calculation which gives more accuracy is used to train the data set before implementation.To implement multiple disease analysis used machine learning algorithms,Streamlit and python pickling is utilized to save the model behaviour.In this article we analyse Diabetes analysis,Heart disease and parkinson's disease by using some of the basic parameters such as Pulse Rate, Cholesterol, Blood Pressure, Heart Rate, etc., and also the risk factors associated with the disease can be found using prediction model with good accuracy and Precision.Further we can include other kind of chronic diseases,skin diseases and many other.In this work, demonstrated that using only core health parameters many diseases can be predicted.The significance of this analysis to analyse the maximum diseases to screen the patient's condition and caution the patients ahead of time to diminish mortality proportion.

Copyright & License

Copyright © 2025 Authors retain the copyright of this article. This article is an open access article distributed under the Creative Commons Attribution License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

BibTeX

@article{155579,
        author = {Kesa Sruthi and Jadala Srilipi and Vodyati Vyshnavi and Dr Sreedhar Bhukya},
        title = {Multiple Disease Prediction Using Streamlit},
        journal = {International Journal of Innovative Research in Technology},
        year = {},
        volume = {9},
        number = {1},
        pages = {1169-1172},
        issn = {2349-6002},
        url = {https://ijirt.org/article?manuscript=155579},
        abstract = {Wellbeing is one of the significant variables to be considered by an individual.Healthcare falls under the essential conveniences to be given to the society.Many of the current AI models for medical services examination are focusing on one disease prediction for each analysis.Our point is to anticipate the various sorts of illness in single stage by utilizing inbuilt python module Streamlit.In this task we are utilizing Naïve Bayes algorithm, random forest,decision tree and svm classifier are utilized for prediction of a particular disease .The calculation which gives more accuracy is used to train the data set before implementation.To implement multiple disease analysis used machine learning algorithms,Streamlit and python pickling is utilized to save the model behaviour.In this article we analyse Diabetes analysis,Heart disease and parkinson's disease by using some of the basic parameters such as Pulse Rate, Cholesterol, Blood Pressure, Heart Rate, etc., and also the risk factors associated with the disease can be found using prediction model with good accuracy and Precision.Further we can include other kind of chronic diseases,skin diseases and many other.In this work, demonstrated that using only core health parameters many diseases can be predicted.The significance of this analysis to analyse the maximum diseases to screen the patient's condition and caution the patients ahead of time to diminish mortality proportion.},
        keywords = {Prediction, Random forest,Decision Tree, SVM Classifier, Exploratory Data Analysis, Machine Learning.},
        month = {},
        }

Cite This Article

  • ISSN: 2349-6002
  • Volume: 9
  • Issue: 1
  • PageNo: 1169-1172

Multiple Disease Prediction Using Streamlit

Related Articles