Combined model-based and deep learning-based automated 3D zonal segmentation of the prostate on T2-weighted MR images: clinical evaluation

被引:15
作者
Rouviere, Olivier [1 ,2 ,3 ,4 ]
Moldovan, Paul Cezar [1 ]
Vlachomitrou, Anna [5 ]
Gouttard, Sylvain [1 ]
Riche, Benjamin [6 ,7 ]
Groth, Alexandra [8 ]
Rabotnikov, Mark [9 ]
Ruffion, Alain [10 ]
Colombel, Marc [2 ,3 ,11 ]
Crouzet, Sebastien [11 ]
Weese, Juergen [8 ]
Rabilloud, Muriel [2 ,3 ,6 ,7 ]
机构
[1] Hosp Civils Lyon, Hop Edouard Herriot, Dept Urinary & Vasc Imaging, Pavillon B,5 Pl Arsonval, F-69437 Lyon, France
[2] Univ Lyon, F-69003 Lyon, France
[3] Univ Lyon 1, Fac Med Lyon Est, F-69003 Lyon, France
[4] INSERM, LabTau, U1032, Lyon, France
[5] Philips France, 33 Rue Verdun,CS 60 055, F-92156 Suresnes, France
[6] Hosp Civils Lyon, Pole Sante Publ, Serv Biostat & Bioinformat, F-69003 Lyon, France
[7] CNRS, UMR 5558, Equipe Biostat Sante, Lab Biometrie & Biol Evolut, F-69100 Villeurbanne, France
[8] Philips Res, Rontgenstr 24-26, D-22335 Hamburg, Germany
[9] Philips, MATAM Ind Pk, IL-3508409 Haifa, Israel
[10] Hosp Civils Lyon, Ctr Hosp Lyon Sud, Dept Urol, F-69310 Pierre Benite, France
[11] Hosp Civils Lyon, Dept Urol, Hop Edouard Herriot, F-69437 Lyon, France
关键词
Deep learning; Magnetic resonance imaging; Prostate cancer; Algorithms; Prostatic hyperplasia; RESONANCE; CANCERS;
D O I
10.1007/s00330-021-08408-5
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Objective To train and to test for prostate zonal segmentation an existing algorithm already trained for whole-gland segmentation. Methods The algorithm, combining model-based and deep learning-based approaches, was trained for zonal segmentation using the NCI-ISBI-2013 dataset and 70 T2-weighted datasets acquired at an academic centre. Test datasets were randomly selected among examinations performed at this centre on one of two scanners (General Electric, 1.5 T; Philips, 3 T) not used for training. Automated segmentations were corrected by two independent radiologists. When segmentation was initiated outside the prostate, images were cropped and segmentation repeated. Factors influencing the algorithm's mean Dice similarity coefficient (DSC) and its precision were assessed using beta regression. Results Eighty-two test datasets were selected; one was excluded. In 13/81 datasets, segmentation started outside the prostate, but zonal segmentation was possible after image cropping. Depending on the radiologist chosen as reference, algorithm's median DSCs were 96.4/97.4%, 91.8/93.0% and 79.9/89.6% for whole-gland, central gland and anterior fibromuscular stroma (AFMS) segmentations, respectively. DSCs comparing radiologists' delineations were 95.8%, 93.6% and 81.7%, respectively. For all segmentation tasks, the scanner used for imaging significantly influenced the mean DSC and its precision, and the mean DSC was significantly lower in cases with initial segmentation outside the prostate. For central gland segmentation, the mean DSC was also significantly lower in larger prostates. The radiologist chosen as reference had no significant impact, except for AFMS segmentation. Conclusions The algorithm performance fell within the range of inter-reader variability but remained significantly impacted by the scanner used for imaging.
引用
收藏
页码:3248 / 3259
页数:12
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