Differentiation of carcinosarcoma from endometrial carcinoma on magnetic resonance imaging using deep learning

2022
journal article
article
4
cris.lastimport.wos2024-04-09T20:27:25Z
dc.abstract.enPurpose: To verify whether deep learning can be used to differentiate between carcinosarcomas (CSs) and endometrial carcinomas (ECs) using several magnetic resonance imaging (MRI) sequences. Material and methods: This retrospective study included 52 patients with CS and 279 patients with EC. A deep-learning model that uses convolutional neural networks (CNN) was trained with 572 T2-weighted images (T2WI) from 42 patients, 488 apparent diffusion coefficient of water maps from 33 patients, and 539 fat-saturated contrast-enhanced T1-weighted images from 40 patients with CS, as well as 1612 images from 223 patients with EC for each sequence. These were tested with 9-10 images of 9-10 patients with CS and 56 images of 56 patients with EC for each sequence, respectively. Three experienced radiologists independently interpreted these test images. The sensitivity, specificity, accuracy, and area under the receiver operating characteristic curve (AUC) for each sequence were compared between the CNN models and the radiologists. Results: The CNN model of each sequence had sensitivity 0.89-0.93, specificity 0.44-0.70, accuracy 0.83-0.89, and AUC 0.80-0.94. It also showed an equivalent or better diagnostic performance than the 3 readers (sensitivity 0.43-0.91, specificity 0.30-0.78, accuracy 0.45-0.88, and AUC 0.49-0.92). The CNN model displayed the highest diagnostic performance on T2WI (sensitivity 0.93, specificity 0.70, accuracy 0.89, and AUC 0.94). Conclusions: Deep learning provided diagnostic performance comparable to or better than experienced radiologists when distinguishing between CS and EC on MRI.pl
dc.contributor.authorSaida, Tsukasapl
dc.contributor.authorMori, Kensakupl
dc.contributor.authorHoshiai, Sodaipl
dc.contributor.authorSakai, Masafumipl
dc.contributor.authorUrushibara, Aikopl
dc.contributor.authorIshiguro, Toshitakapl
dc.contributor.authorSatoh, Toyomipl
dc.contributor.authorNakajima, Takahitopl
dc.date.accessioned2023-04-12T07:09:26Z
dc.date.available2023-04-12T07:09:26Z
dc.date.issued2022pl
dc.date.openaccess0
dc.description.accesstimew momencie opublikowania
dc.description.additionalBibliogr. s. e528-e529pl
dc.description.physicale521-e529pl
dc.description.versionostateczna wersja wydawcy
dc.description.volume87pl
dc.identifier.doi10.5114/pjr.2022.119806pl
dc.identifier.eissn1899-0967pl
dc.identifier.issn1733-134Xpl
dc.identifier.urihttps://ruj.uj.edu.pl/xmlui/handle/item/310242
dc.languageengpl
dc.language.containerengpl
dc.rightsUdzielam licencji. Uznanie autorstwa - Użycie niekomercyjne - Bez utworów zależnych 4.0 Międzynarodowa*
dc.rights.licenceCC-BY-NC-ND
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/legalcode.pl*
dc.share.typeotwarte czasopismo
dc.subject.enartificial intelligencepl
dc.subject.enmagnetic resonance imagingpl
dc.subject.enuteruspl
dc.subject.encarcinosarcomapl
dc.subject.enmalignant mixed Müllerian tumourspl
dc.subtypeArticlepl
dc.titleDifferentiation of carcinosarcoma from endometrial carcinoma on magnetic resonance imaging using deep learningpl
dc.title.journalPolish Journal of Radiologypl
dc.typeJournalArticlepl
dspace.entity.typePublication
cris.lastimport.wos
2024-04-09T20:27:25Z
dc.abstract.enpl
Purpose: To verify whether deep learning can be used to differentiate between carcinosarcomas (CSs) and endometrial carcinomas (ECs) using several magnetic resonance imaging (MRI) sequences. Material and methods: This retrospective study included 52 patients with CS and 279 patients with EC. A deep-learning model that uses convolutional neural networks (CNN) was trained with 572 T2-weighted images (T2WI) from 42 patients, 488 apparent diffusion coefficient of water maps from 33 patients, and 539 fat-saturated contrast-enhanced T1-weighted images from 40 patients with CS, as well as 1612 images from 223 patients with EC for each sequence. These were tested with 9-10 images of 9-10 patients with CS and 56 images of 56 patients with EC for each sequence, respectively. Three experienced radiologists independently interpreted these test images. The sensitivity, specificity, accuracy, and area under the receiver operating characteristic curve (AUC) for each sequence were compared between the CNN models and the radiologists. Results: The CNN model of each sequence had sensitivity 0.89-0.93, specificity 0.44-0.70, accuracy 0.83-0.89, and AUC 0.80-0.94. It also showed an equivalent or better diagnostic performance than the 3 readers (sensitivity 0.43-0.91, specificity 0.30-0.78, accuracy 0.45-0.88, and AUC 0.49-0.92). The CNN model displayed the highest diagnostic performance on T2WI (sensitivity 0.93, specificity 0.70, accuracy 0.89, and AUC 0.94). Conclusions: Deep learning provided diagnostic performance comparable to or better than experienced radiologists when distinguishing between CS and EC on MRI.
dc.contributor.authorpl
Saida, Tsukasa
dc.contributor.authorpl
Mori, Kensaku
dc.contributor.authorpl
Hoshiai, Sodai
dc.contributor.authorpl
Sakai, Masafumi
dc.contributor.authorpl
Urushibara, Aiko
dc.contributor.authorpl
Ishiguro, Toshitaka
dc.contributor.authorpl
Satoh, Toyomi
dc.contributor.authorpl
Nakajima, Takahito
dc.date.accessioned
2023-04-12T07:09:26Z
dc.date.available
2023-04-12T07:09:26Z
dc.date.issuedpl
2022
dc.date.openaccess
0
dc.description.accesstime
w momencie opublikowania
dc.description.additionalpl
Bibliogr. s. e528-e529
dc.description.physicalpl
e521-e529
dc.description.version
ostateczna wersja wydawcy
dc.description.volumepl
87
dc.identifier.doipl
10.5114/pjr.2022.119806
dc.identifier.eissnpl
1899-0967
dc.identifier.issnpl
1733-134X
dc.identifier.uri
https://ruj.uj.edu.pl/xmlui/handle/item/310242
dc.languagepl
eng
dc.language.containerpl
eng
dc.rights*
Udzielam licencji. Uznanie autorstwa - Użycie niekomercyjne - Bez utworów zależnych 4.0 Międzynarodowa
dc.rights.licence
CC-BY-NC-ND
dc.rights.uri*
http://creativecommons.org/licenses/by-nc-nd/4.0/legalcode.pl
dc.share.type
otwarte czasopismo
dc.subject.enpl
artificial intelligence
dc.subject.enpl
magnetic resonance imaging
dc.subject.enpl
uterus
dc.subject.enpl
carcinosarcoma
dc.subject.enpl
malignant mixed Müllerian tumours
dc.subtypepl
Article
dc.titlepl
Differentiation of carcinosarcoma from endometrial carcinoma on magnetic resonance imaging using deep learning
dc.title.journalpl
Polish Journal of Radiology
dc.typepl
JournalArticle
dspace.entity.type
Publication
Affiliations

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