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  1. University of Computer Studies, Yangon
  2. Conferences

Tuberculosis Analysis by Naive Bayesian Classification

http://hdl.handle.net/20.500.12678/0000003819
http://hdl.handle.net/20.500.12678/0000003819
2bdbbf13-4a07-4279-87ea-f402d054c190
dab4db14-e792-4604-a0e7-0509a0c3dd91
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54137.pdf 54137.pdf (427 Kb)
Publication type
Article
Upload type
Publication
Title
Title Tuberculosis Analysis by Naive Bayesian Classification
Language en
Publication date 2009-12-30
Authors
San, El Mi Mi
Nwe, Nwe
Description
Tuberculosis (TB) is a social disease withmedical aspects. By the increasing availability of biomedicaland health-care data with a wide range ofcharacteristics, computer-based medical system isplaying an increasingly relevant role in assisting bothdiagnosis and treatment. Base on the knowledgestored, the system will learn the patterns using NaiveBayesian classification and decides the category of TBby probabilities. It is based on the theorem of posteriorprobability. This system intends to develop a diagnosissystem of automatic classification method for TBdiagnosis based on the symptoms of the patients. Thesystem stores the knowledge of the medical expertsand the medical records of the previous case asTraining database. This system also considers themissing value by filling data completely, because itneeds the actual symptoms of the patient forincreasing accuracy to classify. This system can givethe category of TB and treatment for the patient whohas TB symptoms by using Naive Bayesianclassification method on the Training database. Theaccuracy of the system for that patient is shown byusing hold-out method on testing database.
Keywords
Machine learning system, Naive Bayesian classification, Computer-Based medical diagnosis system
Identifier http://onlineresource.ucsy.edu.mm/handle/123456789/1547
Journal articles
Fourth Local Conference on Parallel and Soft Computing
Conference papers
Books/reports/chapters
Thesis/dissertations
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