Please use this identifier to cite or link to this item: http://hdl.handle.net/11452/29710
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dc.contributor.authorKavur, A. E.-
dc.contributor.authorGezer, N. S.-
dc.contributor.authorBarış, M.-
dc.contributor.authorŞahin, Y.-
dc.contributor.authorSavaş, Ö.-
dc.contributor.authorBaydar, B.-
dc.contributor.authorYüksel, U.-
dc.contributor.authorOlut, Ş.-
dc.contributor.authorAkar, G. B.-
dc.contributor.authorÜnal, G.-
dc.contributor.authorDicle, O.-
dc.contributor.authorSelver, M. A.-
dc.date.accessioned2022-12-06T12:31:59Z-
dc.date.available2022-12-06T12:31:59Z-
dc.date.issued2019-06-13-
dc.identifier.citationKavur, A. E. vd. (2020). "Comparison of semi-automatic and deep learning-based automatic methods for liver segmentation in living liver transplant donors". Diagnostic and Interventional Radiology, 26(1), 11-21.en_US
dc.identifier.issn13053825-
dc.identifier.urihttps://doi.org/10.5152/dir.2019.19025-
dc.identifier.urihttps://www.dirjournal.org/en/comparison-of-semi-automatic-and-deep-learning-based-automatic-methods-for-liver-segmentation-in-living-liver-transplant-donors-132076-
dc.identifier.urihttp://hdl.handle.net/11452/29710-
dc.description.abstractPURPOSE We aimed to compare the accuracy and repeatability of emerging machine learning-based (i.e., deep learning) automatic segmentation algorithms with those of well-established interactive semi-automatic methods for determining liver volume in living liver transplant donors at computed tomography (CT) imaging. METHODS A total of 12 methods (6 semi-automatic, 6 full-automatic) were evaluated. The semi-automatic segmentation algorithms were based on both traditional iterative models including watershed, fast marching, region growing, active contours arid modern techniques including robust statistics segmenter and super-pixels. These methods entailed some sort of interaction mechanism such as placing initialization seeds on images or determining a parameter range. The automatic methods were based on deep learning and included three framework templates (DeepMedic, NiftyNet and U-Net), the first two of which were applied with default parameter sets and the last two involved adapted novel model designs. For 20 living donors (8 training and 12 test datasets), a group of imaging scientists and radiologists created ground truths by performing manual segmentations on contrast-enhanced CT images. Each segmentation was evaluated using five metrics (i.e., volume overlap and relative volume errors, average/root-mean-square/maximum symmetrical surface distances). The results were mapped to a scoring system and a final grade was calculated by taking their average. Accuracy and repeatability were evaluated using slice-by-slice comparisons and volumetric analysis. Diversity and complementarily were observed through heatmaps. Majority voting (MV) and simultaneous truth and performance level estimation (STAPLE) algorithms were utilized to obtain the fusion of the individual results. RESULTS The top four methods were automatic deep learning models, with scores of 79.63, 79.46, 77.15, and 74.50. Intra-user score was determined as 95.14. Overall, automatic deep learning segmentation outperformed interactive techniques on all metrics. The mean volume of liver of ground truth was 1409.93 +/- 271.28 mL, while it was calculated as 1342.21 +/- 231.24 mL using automatic and 1201.26 +/- 258.13 mL using interactive methods, showing higher accuracy and less variation with automatic methods. The qualitative analysis of segmentation results showed significant diversity and complementarity, enabling the idea of using ensembles to obtain superior results. The fusion score of automatic methods reached 83.87 with MV and 86.20 with STAPLE, which my slightly less than fusion of all methods (MV, 86.70) and (STAPLE, 88.74). CONCLUSION Use of the new deep learning-based automatic segmentation algorithms substantially increases the accuracy and repeatability for segmentation and volumetric measurements of liver. Fusion of automatic methods based on ensemble approaches exhibits best results with almost no additional time cost due to potential parallel execution of multiple models.en_US
dc.language.isoenen_US
dc.publisherTürk Radyoloji Derneğitr_TR
dc.rightsinfo:eu-repo/semantics/openAccessen_US
dc.rightsAtıf Gayri Ticari Türetilemez 4.0 Uluslararasıtr_TR
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/*
dc.subjectRadiology, nuclear medicine & medical imagingen_US
dc.subjectConvolutional neural-networksen_US
dc.subjectAbdominal organsen_US
dc.subjectVolumeen_US
dc.subjectMultilevelen_US
dc.subjectAccuracyen_US
dc.subjectModelen_US
dc.subjectMRIen_US
dc.subjectCNNen_US
dc.subject.meshDeep learningen_US
dc.subject.meshHumansen_US
dc.subject.meshImage processingen_US
dc.subject.meshComputer-assisteden_US
dc.subject.meshLiveren_US
dc.subject.meshLiver transplantationen_US
dc.subject.meshLiving donorsen_US
dc.subject.meshOrgan sizeen_US
dc.subject.meshReproducibility of resultsen_US
dc.subject.meshTomography, X-Ray computeden_US
dc.titleComparison of semi-automatic and deep learning-based automatic methods for liver segmentation in living liver transplant donorsen_US
dc.typeArticleen_US
dc.identifier.wos000505165200002tr_TR
dc.identifier.scopus2-s2.0-85077479935tr_TR
dc.relation.tubitak116E133tr_TR
dc.relation.publicationcategoryMakale - Uluslararası Hakemli Dergitr_TR
dc.contributor.departmentBursa Uludağ Üniversitesi/Mühendislik Fakültesi/Elektronik Mühendisliği.tr_TR
dc.contributor.orcid0000-0001-7933-1643tr_TR
dc.identifier.startpage11tr_TR
dc.identifier.endpage21tr_TR
dc.identifier.volume26tr_TR
dc.identifier.issue1tr_TR
dc.relation.journalDiagnostic and Interventional Radiologyen_US
dc.contributor.buuauthorKılıkçıer, Çağlar-
dc.contributor.researcheridAAH-3031-2021tr_TR
dc.relation.collaborationYurt içitr_TR
dc.indexed.trdizinTrDizintr_TR
dc.identifier.pubmed31904568tr_TR
dc.subject.wosRadiology, nuclear medicine & medical imagingen_US
dc.indexed.wosSCIEen_US
dc.indexed.scopusScopusen_US
dc.indexed.pubmedPubMeden_US
dc.wos.quartileQ3en_US
dc.contributor.scopusid55946623600tr_TR
dc.subject.scopusCT Image; Dice; Segmentationen_US
dc.subject.emtreeAdulten_US
dc.subject.emtreeArticleen_US
dc.subject.emtreeClinical articleen_US
dc.subject.emtreeComputer assisted tomographyen_US
dc.subject.emtreeContrast enhancementen_US
dc.subject.emtreeControlled studyen_US
dc.subject.emtreeDeep learningen_US
dc.subject.emtreeFemaleen_US
dc.subject.emtreeHumanen_US
dc.subject.emtreeLiver graften_US
dc.subject.emtreeLiver weighten_US
dc.subject.emtreeLiving donoren_US
dc.subject.emtreeMaleen_US
dc.subject.emtreePlant seeden_US
dc.subject.emtreeQualitative analysisen_US
dc.subject.emtreeRadiologisten_US
dc.subject.emtreeScoring systemen_US
dc.subject.emtreeSegmentation algorithmen_US
dc.subject.emtreeWatersheden_US
dc.subject.emtreeAnatomy and histologyen_US
dc.subject.emtreeComparative studyen_US
dc.subject.emtreeDiagnostic imagingen_US
dc.subject.emtreeImage processingen_US
dc.subject.emtreeLiveren_US
dc.subject.emtreeLiver transplantationen_US
dc.subject.emtreeLiving donoren_US
dc.subject.emtreeOrgan sizeen_US
dc.subject.emtreeProceduresen_US
dc.subject.emtreeReproducibilityen_US
dc.subject.emtreeX-ray computed tomographyen_US
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