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DC poleHodnotaJazyk
dc.contributor.advisorŽelezný, Miloš
dc.contributor.authorRyba, Tomáš
dc.date.accepted2017-10-3
dc.date.accessioned2018-01-15T15:09:22Z
dc.date.available2010-9-1
dc.date.available2018-01-15T15:09:22Z
dc.date.issued2017
dc.date.submitted2016-11-23
dc.identifier70655
dc.identifier.urihttp://hdl.handle.net/11025/28548
dc.description.abstractComputer-aided diagnostic (CAD) systems are widely used in technical and me\-di\-cal fields. Using the CAD systems in medicine allows the application of image processing methods as well as the methods of artificial intelligence. The purpose of the systems is to assists doctors. A radiologist needs to diagnose a great amount of image data, which is very focus-demanding work. Using a CAD system can support doctor's effectiveness in the sense of processing speed and/or accuracy. The goal of the thesis is to develop a CAD system for the automatic localization and subsequent classification of liver lesions. Liver cancer is mostly diagnosed from a differential diagnosis that consists of analysis of two serial CT screening. Because the screenings are taken at the time interval of several seconds, data registration needs to be performed. In both series the liver region is found using a fully autonomous method based on the Grow Cut algorithm and the results obtained are further refined by a localized active contour method. The liver region is then analyzed and searched for lesions. The localization of the lesion is performed by Markov Random Fields initialized with a combination of saliency maps. The lesions found are then paired-up and classified by a decision tree.cs
dc.format152 s.cs
dc.format.mimetypeapplication/pdf
dc.language.isoenen
dc.publisherZápadočeská univerzita v Plznics
dc.rightsPlný text práce je přístupný bez omezení.cs
dc.subjectdiagnosticcs
dc.subjectlivercs
dc.subjectimage processingcs
dc.subjectlesioncs
dc.subjectlocalizationcs
dc.subjectclassificationcs
dc.subjectregistrationcs
dc.subjectsaliency mapcs
dc.subjectmarkov random fieldscs
dc.subjectactive contourscs
dc.subjectdecision treecs
dc.titleAutomatická lokalizace a klasifikace jaterních lézícs
dc.title.alternativeAutomatic localization and classification of liver lesionsen
dc.typedisertační prácecs
dc.thesis.degree-namePh.D.cs
dc.thesis.degree-levelDoktorskýcs
dc.thesis.degree-grantorZápadočeská univerzita v Plzni. Fakulta aplikovaných vědcs
dc.thesis.degree-programAplikované vědy a informatikacs
dc.description.resultNeobhájenocs
dc.rights.accessopenAccessen
dc.description.abstract-translatedComputer-aided diagnostic (CAD) systems are widely used in technical and me\-di\-cal fields. Using the CAD systems in medicine allows the application of image processing methods as well as the methods of artificial intelligence. The purpose of the systems is to assists doctors. A radiologist needs to diagnose a great amount of image data, which is very focus-demanding work. Using a CAD system can support doctor's effectiveness in the sense of processing speed and/or accuracy. The goal of the thesis is to develop a CAD system for the automatic localization and subsequent classification of liver lesions. Liver cancer is mostly diagnosed from a differential diagnosis that consists of analysis of two serial CT screening. Because the screenings are taken at the time interval of several seconds, data registration needs to be performed. In both series the liver region is found using a fully autonomous method based on the Grow Cut algorithm and the results obtained are further refined by a localized active contour method. The liver region is then analyzed and searched for lesions. The localization of the lesion is performed by Markov Random Fields initialized with a combination of saliency maps. The lesions found are then paired-up and classified by a decision tree.en
dc.title.otherAutomatická lokalizace a klasifikace jaterních lézícs
dc.subject.translateddiagnosticen
dc.subject.translatedliveren
dc.subject.translatedimage processingen
dc.subject.translatedlesionen
dc.subject.translatedlocalizationen
dc.subject.translatedclassificationen
dc.subject.translatedregistrationen
dc.subject.translatedsaliency mapen
dc.subject.translatedmarkov random fieldsen
dc.subject.translatedactive contoursen
dc.subject.translateddecision treeen
Vyskytuje se v kolekcích:Disertační práce / Dissertations (KKY)

Soubory připojené k záznamu:
Soubor Popis VelikostFormát 
doctoral_thesis_Ryba.pdfPlný text práce35,72 MBAdobe PDFZobrazit/otevřít
posudky-ODP-ryba.pdfPosudek oponenta práce2,38 MBAdobe PDFZobrazit/otevřít
protokol-odp-ryba.pdfPrůběh obhajoby práce870,3 kBAdobe PDFZobrazit/otevřít


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