AI Early Disease Prediction 

Description

AI Early Disease Prediction

ABSTRACT: AI Early Disease Prediction  – Machine Learning techniques are used for a variety of applications. In the healthcare industry, Machine Learning plays an important role in predicting diseases. For detecting a disease number of tests should be required from the patient. But using the Machine Learning technique the number of tests can be reduced. This reduced test plays an important role in time and performance. This paper analyses Machine Learning techniques which can be used for predicting different types of diseases which mainly concentrate on predicting Heart Diabetes and Lung diseases.

Overview :

Medical science has a large amount of data growth per year. Due to the increased amount of data growth in the medical and healthcare field the accurate analysis of medical data has been benefits from early patient care. With the help of disease data, data mining finds hidden pattern information in a huge amount of medical data. We proposed general disease prediction based on the symptoms of the patient.


Scope:

The Disease Prediction application is end-user support and online consultation project. It then processes user-specific details to check for various illnesses that could be associated with it. Here the scope of the project is that integration of clinical decision support with computer-based patient records could reduce medical errors, enhance patient safety, decrease unwanted practice variation, and improve patient outcomes.


Existing system:

  • This paper is to address this important problem and design cloud-assisted privacy.
  • It preserves health records to protect the privacy of the involved parties and their data.
  • Thresholding method, K means clustering, Manual analysis.
  • The outsourcing decryption technique and a newly proposed key private proxy re-encryption are adapted.

Disadvantages:

  • No security for users’ data. No authentication or security provided
  • High resource costs are needed for the implementation.
  • Medical Resonance images contain a noise caused by operator performance which can lead to serious inaccuracies classification.

Proposed system:

AI Early Disease Prediction 

  • In this paper, we proposed a classification algorithm, naive Bayes, and Decision tree algorithm s are used. 
  • In the Proposed System, we use two different types of algorithms. For Finding the diseases such as Heart and Lung and Diabetes

Advantages:

  • High accuracy, fastest prediction, and consistency of results.
  • It can segment the lung, heart, and diabetes regions from the data accurately.
  • It is useful to classify the lung Tumor from trained data set for accurate detection.

System Architecture:

AI Early Disease Prediction 

Early Disease Prediction using AI docx
AI Early Disease Prediction

Hardware and Software Requirements:

AI Early Disease Prediction 

Hardware:

  1. Windows 7,8,10 64 bit
  2. RAM 4GB

Software:

  1. Python 2.7
  2. Anaconda Navigator

Python’s standard library

  • Pandas
  • Numpy
  • Sklearn
  • tkMessageBox
  • matplotlib

CONCLUSION:

AI Early Disease Prediction  – Machine learning has the great ability to revolutionize Early disease prediction with the help of advanced computational methods and the availability of a large amount of epidemiological and genetic disease datasets. Detection of disease in its early stages is the key to treatment. This work has described a machine learning approach to predicting disease levels. The technique may also help researchers to develop an accurate and effective tool that will reach the table of clinicians to help them make a better decisions about the disease status.


REFERENCES:

  1. Vos T, Allen C, Arora M, et al. Global, regional, and national incidence, prevalence, and years lived with disability for 310 diseases and injuries, 1990–2015: a systematic analysis for the Global Burden of Disease Study 2015. Lancet. 2016;388: 1545–1602.
  2. Cumberland PM, Rahi JS; for the UK Biobank Eye and Vision Consortium. Visual function, social position, and health and life chances. JAMA Ophthalmol. 2016;134:959–966. 3. Ferris FL, Davis MD, Clemons TE, et al. A simplified severity scale for age-related macular degeneration. Arch Ophthalmol. 2005;123:1570. 
  3. Schmidt-Erfurth U, Waldstein SM. A paradigm shift in imaging biomarkers in neovascular age-related macular degeneration. Prog Retin Eye Res. 2016;50:1–24.
  4. De Pauw J, Keane P, Tomasev N, et al. Automated analysis of retinal imaging using machine learning techniques for computer vision. F1000Research. 2016;5:1573.
  5. Leuschen JN, Schuman SG, Winter KP, et al. Spectral-domain optical coherence tomography characteristics of intermediate age-related macular degeneration. Ophthalmology. 2013;120: 140–150.
  1. Yehoshua Z, Wang F, Rosenfeld PJ, Penha FM, Feuer WJ, Gregori G. Natural history of drusen morphology in age-related macular degeneration using spectral-domain optical coherence tomography. Ophthalmology. 2011;118:2434– 2441.
  2. Nathoo NA, Or C, Young M, et al. Optical coherence tomography-based measurement of drusen load predicts the development of advanced age-related macular degeneration. Am J Ophthalmol. 2014;158:757–761.e1. 
  3. Abdelfattah NS, Zhang H, Boyer DS, et al. Drusen volume as a predictor of disease progression in patients with late age-related macular degeneration in the fellow eye. Invest Ophthalmol Vis Sci. 2016;57:1839–1846.

Customer Reviews

There are no reviews yet.

Be the first to review “AI Early Disease Prediction ”

This site uses Akismet to reduce spam. Learn how your comment data is processed.