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dc.contributor.authorChartrand, Gabriel
dc.contributor.authorCresson, Thierry
dc.contributor.authorChav, Ramnada
dc.contributor.authorGotra, Akshat
dc.contributor.authorTang, An
dc.contributor.authorDe Guise, Jacques
dc.date.accessioned2023-07-03T12:14:56Z
dc.date.availableNO_RESTRICTIONfr
dc.date.available2023-07-03T12:14:56Z
dc.date.issued2016-11-18
dc.identifier.urihttp://hdl.handle.net/1866/28308
dc.publisherInstitute of electrical and electronics engineersfr
dc.subjectThree-dimensional (3-D)fr
dc.subjectCTfr
dc.subjectLaplacian mesh optimizationfr
dc.subjectLiverfr
dc.subjectMRIfr
dc.subjectSegmentationfr
dc.titleLiver segmentation on CT and MR using laplacian mesh optimizationfr
dc.typeArticlefr
dc.contributor.affiliationUniversité de Montréal. Faculté de médecine. Département de radiologie, radio-oncologie et médecine nucléairefr
dc.identifier.doi10.1109/TBME.2016.2631139
dcterms.abstractObjective: The purpose of this paper is to describe a semiautomated segmentation method for the liver and evaluate its performance on CT-scan and MR images. Methods: First, an approximate 3-D model of the liver is initialized from a few user-generated contours to globally outline the liver shape. The model is then automatically deformed by a Laplacian mesh optimization scheme until it precisely delineates the patient’s liver. A correction tool was implemented to allow the user to improve the segmentation until satisfaction. Results: The proposed method was tested against 30 CT-scans from the SLIVER07 challenge repository and 20 MR studies from the Montreal University Hospital Center, covering a wide spectrum of liver morphologies and pathologies. The average volumetric overlap error was 5.1% for CT and 7.6% for MRI and the average segmentation time was 6 min. Conclusion: The obtained results show that the proposed method is efficient, reliable, and could effectively be used routinely in the clinical setting. Significance: The proposed approach can alleviate the cumbersome and tedious process of slice-wise segmentation required for precise hepatic volumetry, virtual surgery, and treatment planning.fr
dcterms.isPartOfurn:ISSN:0018-9294fr
dcterms.isPartOfurn:ISSN:1558-2531fr
dcterms.languageengfr
UdeM.ReferenceFournieParDeposantChartrand, G., Cresson, T., Chav, R., Gotra, A., Tang, A., & De Guise, J. A. (2017). Liver Segmentation on CT and MR Using Laplacian Mesh Optimization. IEEE transactions on bio-medical engineering, 64(9), 2110–2121. https://doi.org/10.1109/TBME.2016.2631139fr
UdeM.VersionRioxxVersion acceptée / Accepted Manuscriptfr
oaire.citationTitleIEEE transactions on biomedical engineeringfr
oaire.citationVolume64fr
oaire.citationIssue9fr
oaire.citationStartPage2110fr
oaire.citationEndPage2121fr


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