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  1. University of Computer Studies, Yangon
  2. Conferences

Decision Support System For Lung Cancer By using Bayesian Classification

http://hdl.handle.net/20.500.12678/0000003708
http://hdl.handle.net/20.500.12678/0000003708
d89e6ce3-5e4a-4dc4-89aa-10a1900fa045
c881a298-d7f9-4b34-be6e-80470b16ddce
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54018.pdf 54018.pdf (372 Kb)
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Article
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Publication
Title
Title Decision Support System For Lung Cancer By using Bayesian Classification
Language en
Publication date 2009-12-30
Authors
Lin, Than Than
Sandar, Khin
Description
In many application domains, classification ofcomplex measurements is essential in a diagnosticprocess. Correct classification of measurements mayin fact be the most critical part of the diagnosticprocess. The main feature of the proposed system isto provide a sample and integrated tool fordesigning diagnostic application. Lung cancer is thesecond most common malignancy in men and thethird most common cancer in women. Usually lungcancer nodules have a multifocal origin and arather poor prognosis. Therefore, a careful reviewof the symptoms presented and a detailed physicalexam greatly help with the diagnosis occurs. Thispaper proposes a decision support system for lungcancer classification using Bayesian Analysis tohelp the physician or the patient who tests herself athome for lung cancer with the most possible result.Bayesian classification is one of the classificationmethods successfully applied to the cancerdiagnostic problems. The system stores theknowledge of the medical experts and the medicalrecords of the previous cases. Based on theknowledge stored, the system will learn the patternsusing Bayesian Analysis and decide the probabilitybased on the symptoms of the patients. Classifieraccuracy is also estimated to get the better decisionsupport system with the minimum error rate byusing Bayesian Analysis that provides a theoreticaljustification and lower error rate than otherclassifiers, [6].
Keywords
Decision support system, Bayesian classification, classifier accuracy, Naïve Bayesian Classification, Expert System, Lung Cancer Classification
Identifier http://onlineresource.ucsy.edu.mm/handle/123456789/1446
Journal articles
Fourth Local Conference on Parallel and Soft Computing
Conference papers
Books/reports/chapters
Thesis/dissertations
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