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Development of a deep learning method for improving diagnostic accuracy for uterine sarcoma cases

Uterine sarcomas have very poor prognoses and are sometimes difficult to distinguish from uterine leiomyomas on preoperative examinations. Herein, we investigated whether deep neural network (DNN) models can improve the accuracy of preoperative MRI-based diagnosis in patients with uterine sarcomas....

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Autores principales: Toyohara, Yusuke, Sone, Kenbun, Noda, Katsuhiko, Yoshida, Kaname, Kurokawa, Ryo, Tanishima, Tomoya, Kato, Shimpei, Inui, Shohei, Nakai, Yudai, Ishida, Masanori, Gonoi, Wataru, Tanimoto, Saki, Takahashi, Yu, Inoue, Futaba, Kukita, Asako, Kawata, Yoshiko, Taguchi, Ayumi, Furusawa, Akiko, Miyamoto, Yuichiro, Tsukazaki, Takehiro, Tanikawa, Michihiro, Iriyama, Takayuki, Mori-Uchino, Mayuyo, Tsuruga, Tetsushi, Oda, Katsutoshi, Yasugi, Toshiharu, Takechi, Kimihiro, Abe, Osamu, Osuga, Yutaka
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9669038/
https://www.ncbi.nlm.nih.gov/pubmed/36385486
http://dx.doi.org/10.1038/s41598-022-23064-5
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author Toyohara, Yusuke
Sone, Kenbun
Noda, Katsuhiko
Yoshida, Kaname
Kurokawa, Ryo
Tanishima, Tomoya
Kato, Shimpei
Inui, Shohei
Nakai, Yudai
Ishida, Masanori
Gonoi, Wataru
Tanimoto, Saki
Takahashi, Yu
Inoue, Futaba
Kukita, Asako
Kawata, Yoshiko
Taguchi, Ayumi
Furusawa, Akiko
Miyamoto, Yuichiro
Tsukazaki, Takehiro
Tanikawa, Michihiro
Iriyama, Takayuki
Mori-Uchino, Mayuyo
Tsuruga, Tetsushi
Oda, Katsutoshi
Yasugi, Toshiharu
Takechi, Kimihiro
Abe, Osamu
Osuga, Yutaka
author_facet Toyohara, Yusuke
Sone, Kenbun
Noda, Katsuhiko
Yoshida, Kaname
Kurokawa, Ryo
Tanishima, Tomoya
Kato, Shimpei
Inui, Shohei
Nakai, Yudai
Ishida, Masanori
Gonoi, Wataru
Tanimoto, Saki
Takahashi, Yu
Inoue, Futaba
Kukita, Asako
Kawata, Yoshiko
Taguchi, Ayumi
Furusawa, Akiko
Miyamoto, Yuichiro
Tsukazaki, Takehiro
Tanikawa, Michihiro
Iriyama, Takayuki
Mori-Uchino, Mayuyo
Tsuruga, Tetsushi
Oda, Katsutoshi
Yasugi, Toshiharu
Takechi, Kimihiro
Abe, Osamu
Osuga, Yutaka
author_sort Toyohara, Yusuke
collection PubMed
description Uterine sarcomas have very poor prognoses and are sometimes difficult to distinguish from uterine leiomyomas on preoperative examinations. Herein, we investigated whether deep neural network (DNN) models can improve the accuracy of preoperative MRI-based diagnosis in patients with uterine sarcomas. Fifteen sequences of MRI for patients (uterine sarcoma group: n = 63; uterine leiomyoma: n = 200) were used to train the models. Six radiologists (three specialists, three practitioners) interpreted the same images for validation. The most important individual sequences for diagnosis were axial T2-weighted imaging (T2WI), sagittal T2WI, and diffusion-weighted imaging. These sequences also represented the most accurate combination (accuracy: 91.3%), achieving diagnostic ability comparable to that of specialists (accuracy: 88.3%) and superior to that of practitioners (accuracy: 80.1%). Moreover, radiologists’ diagnostic accuracy improved when provided with DNN results (specialists: 89.6%; practitioners: 92.3%). Our DNN models are valuable to improve diagnostic accuracy, especially in filling the gap of clinical skills between interpreters. This method can be a universal model for the use of deep learning in the diagnostic imaging of rare tumors.
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spelling pubmed-96690382022-11-18 Development of a deep learning method for improving diagnostic accuracy for uterine sarcoma cases Toyohara, Yusuke Sone, Kenbun Noda, Katsuhiko Yoshida, Kaname Kurokawa, Ryo Tanishima, Tomoya Kato, Shimpei Inui, Shohei Nakai, Yudai Ishida, Masanori Gonoi, Wataru Tanimoto, Saki Takahashi, Yu Inoue, Futaba Kukita, Asako Kawata, Yoshiko Taguchi, Ayumi Furusawa, Akiko Miyamoto, Yuichiro Tsukazaki, Takehiro Tanikawa, Michihiro Iriyama, Takayuki Mori-Uchino, Mayuyo Tsuruga, Tetsushi Oda, Katsutoshi Yasugi, Toshiharu Takechi, Kimihiro Abe, Osamu Osuga, Yutaka Sci Rep Article Uterine sarcomas have very poor prognoses and are sometimes difficult to distinguish from uterine leiomyomas on preoperative examinations. Herein, we investigated whether deep neural network (DNN) models can improve the accuracy of preoperative MRI-based diagnosis in patients with uterine sarcomas. Fifteen sequences of MRI for patients (uterine sarcoma group: n = 63; uterine leiomyoma: n = 200) were used to train the models. Six radiologists (three specialists, three practitioners) interpreted the same images for validation. The most important individual sequences for diagnosis were axial T2-weighted imaging (T2WI), sagittal T2WI, and diffusion-weighted imaging. These sequences also represented the most accurate combination (accuracy: 91.3%), achieving diagnostic ability comparable to that of specialists (accuracy: 88.3%) and superior to that of practitioners (accuracy: 80.1%). Moreover, radiologists’ diagnostic accuracy improved when provided with DNN results (specialists: 89.6%; practitioners: 92.3%). Our DNN models are valuable to improve diagnostic accuracy, especially in filling the gap of clinical skills between interpreters. This method can be a universal model for the use of deep learning in the diagnostic imaging of rare tumors. Nature Publishing Group UK 2022-11-16 /pmc/articles/PMC9669038/ /pubmed/36385486 http://dx.doi.org/10.1038/s41598-022-23064-5 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Toyohara, Yusuke
Sone, Kenbun
Noda, Katsuhiko
Yoshida, Kaname
Kurokawa, Ryo
Tanishima, Tomoya
Kato, Shimpei
Inui, Shohei
Nakai, Yudai
Ishida, Masanori
Gonoi, Wataru
Tanimoto, Saki
Takahashi, Yu
Inoue, Futaba
Kukita, Asako
Kawata, Yoshiko
Taguchi, Ayumi
Furusawa, Akiko
Miyamoto, Yuichiro
Tsukazaki, Takehiro
Tanikawa, Michihiro
Iriyama, Takayuki
Mori-Uchino, Mayuyo
Tsuruga, Tetsushi
Oda, Katsutoshi
Yasugi, Toshiharu
Takechi, Kimihiro
Abe, Osamu
Osuga, Yutaka
Development of a deep learning method for improving diagnostic accuracy for uterine sarcoma cases
title Development of a deep learning method for improving diagnostic accuracy for uterine sarcoma cases
title_full Development of a deep learning method for improving diagnostic accuracy for uterine sarcoma cases
title_fullStr Development of a deep learning method for improving diagnostic accuracy for uterine sarcoma cases
title_full_unstemmed Development of a deep learning method for improving diagnostic accuracy for uterine sarcoma cases
title_short Development of a deep learning method for improving diagnostic accuracy for uterine sarcoma cases
title_sort development of a deep learning method for improving diagnostic accuracy for uterine sarcoma cases
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9669038/
https://www.ncbi.nlm.nih.gov/pubmed/36385486
http://dx.doi.org/10.1038/s41598-022-23064-5
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