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Texture modeling applied to medical images



dc.contributor.advisorHaindl Michal
dc.contributor.authorRemeš Václav
dc.date.accessioned2018-11-08T18:52:14Z
dc.date.available2018-11-08T18:52:14Z
dc.date.issued2018-03-02
dc.identifierKOS-246881451505
dc.identifier.urihttp://hdl.handle.net/10467/78612
dc.description.abstractThis thesis presents novel descriptive multidimensional Markovian textural models applied to computer aided diagnosis in the eld of X-ray mammography. These general mathematical models, applicable in wide areas of texture modeling outside X-ray mammography as well, provide ideal visual verication using synthesis of the corresponding measured data spaces, contrary to standard discriminative models. All achieved results in the thesis are extensively benchmarked. The thesis presents two methods for breast density classication in X-ray mammography. The methods were tested on the widely known MIAS database and the state-of-the art INbreast database, with competitive results. Several methods for completely automatic mammogram texture enhancement are presented. These methods are based on the descriptive textural models developed in the thesis which automatically adapt to the analyzed X-ray texture, thus being universal for any type of input without the need of further manual tuning of specic parameters. The methods' outputs highlight regions of interest, detected as textural abnormalities. The methods provide the possibility of enhancement tuned to specic types of mammogram tissue. Hence, the enhanced mammograms can help radiologists to decrease their false negative evaluation rate. It has been shown that the algorithms work well both for small ndings, such as microcalcications, and for bigger lesions. The pseudocolour method oers a unique way of mammogram feature fusion for visual evaluation and vastly enriches the the information content of the enhanced mammogram. The results were veried also by radiologist consultants. New contrast criterion was implemented which outperforms previously published contrast criteria. The focus of our study is mammogram texture and the following search for its optimal mathematical representation.cze
dc.description.abstractThis thesis presents novel descriptive multidimensional Markovian textural models applied to computer aided diagnosis in the eld of X-ray mammography. These general mathematical models, applicable in wide areas of texture modeling outside X-ray mammography as well, provide ideal visual verication using synthesis of the corresponding measured data spaces, contrary to standard discriminative models. All achieved results in the thesis are extensively benchmarked. The thesis presents two methods for breast density classication in X-ray mammography. The methods were tested on the widely known MIAS database and the state-of-the art INbreast database, with competitive results. Several methods for completely automatic mammogram texture enhancement are presented. These methods are based on the descriptive textural models developed in the thesis which automatically adapt to the analyzed X-ray texture, thus being universal for any type of input without the need of further manual tuning of specic parameters. The methods' outputs highlight regions of interest, detected as textural abnormalities. The methods provide the possibility of enhancement tuned to specic types of mammogram tissue. Hence, the enhanced mammograms can help radiologists to decrease their false negative evaluation rate. It has been shown that the algorithms work well both for small ndings, such as microcalcications, and for bigger lesions. The pseudocolour method oers a unique way of mammogram feature fusion for visual evaluation and vastly enriches the the information content of the enhanced mammogram. The results were veried also by radiologist consultants. New contrast criterion was implemented which outperforms previously published contrast criteria. The focus of our study is mammogram texture and the following search for its optimal mathematical representation.eng
dc.language.isoENG
dc.publisherČeské vysoké učení technické v Praze. Vypočetní a informační centrum.cze
dc.publisherCzech Technical University in Prague. Computing and Information Centre.eng
dc.rightsA university thesis is a work protected by the Copyright Act. Extracts, copies and transcripts of the thesis are allowed for personal use only and at one?s own expense. The use of thesis should be in compliance with the Copyright Act http://www.mkcr.cz/assets/autorske-pravo/01-3982006.pdf and the citation ethics http://knihovny.cvut.cz/vychova/vskp.htmleng
dc.rightsVysokoškolská závěrečná práce je dílo chráněné autorským zákonem. Je možné pořizovat z něj na své náklady a pro svoji osobní potřebu výpisy, opisy a rozmnoženiny. Jeho využití musí být v souladu s autorským zákonem http://www.mkcr.cz/assets/autorske-pravo/01-3982006.pdf a citační etikou http://knihovny.cvut.cz/vychova/vskp.htmlcze
dc.subjectmammography,Markov random elds,texture analysis,texture synthesis,computeraided diagnosis,image enhancement,image classication,contrast criteriacze
dc.subjectmammography,Markov random elds,texture analysis,texture synthesis,computeraided diagnosis,image enhancement,image classication,contrast criteriaeng
dc.titleModelování textur aplikované na lékařské snímkycze
dc.titleTexture modeling applied to medical imageseng
dc.typedisertační prácecze
dc.typedoctoral thesiseng
dc.date.accepted2018-03-02
dc.contributor.refereeKybic Jan
theses.degree.disciplineInformatikacze
theses.degree.grantorkatedra teoretické informatikycze
theses.degree.programmeInformatikacze


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