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Automated system for diagnosing endometrial cancer by adopting deep-learning technology in hysteroscopy

Endometrial cancer is a ubiquitous gynecological disease with increasing global incidence. Therefore, despite the lack of an established screening technique to date, early diagnosis of endometrial cancer assumes critical importance. This paper presents an artificial-intelligence-based system to dete...

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Detalles Bibliográficos
Autores principales: Takahashi, Yu, Sone, Kenbun, Noda, Katsuhiko, Yoshida, Kaname, Toyohara, Yusuke, Kato, Kosuke, Inoue, Futaba, Kukita, Asako, Taguchi, Ayumi, Nishida, Haruka, Miyamoto, Yuichiro, Tanikawa, Michihiro, Tsuruga, Tetsushi, Iriyama, Takayuki, Nagasaka, Kazunori, Matsumoto, Yoko, Hirota, Yasushi, Hiraike-Wada, Osamu, Oda, Katsutoshi, Maruyama, Masanori, Osuga, Yutaka, Fujii, Tomoyuki
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8011803/
https://www.ncbi.nlm.nih.gov/pubmed/33788887
http://dx.doi.org/10.1371/journal.pone.0248526
Descripción
Sumario:Endometrial cancer is a ubiquitous gynecological disease with increasing global incidence. Therefore, despite the lack of an established screening technique to date, early diagnosis of endometrial cancer assumes critical importance. This paper presents an artificial-intelligence-based system to detect the regions affected by endometrial cancer automatically from hysteroscopic images. In this study, 177 patients (60 with normal endometrium, 21 with uterine myoma, 60 with endometrial polyp, 15 with atypical endometrial hyperplasia, and 21 with endometrial cancer) with a history of hysteroscopy were recruited. Machine-learning techniques based on three popular deep neural network models were employed, and a continuity-analysis method was developed to enhance the accuracy of cancer diagnosis. Finally, we investigated if the accuracy could be improved by combining all the trained models. The results reveal that the diagnosis accuracy was approximately 80% (78.91–80.93%) when using the standard method, and it increased to 89% (83.94–89.13%) and exceeded 90% (i.e., 90.29%) when employing the proposed continuity analysis and combining the three neural networks, respectively. The corresponding sensitivity and specificity equaled 91.66% and 89.36%, respectively. These findings demonstrate the proposed method to be sufficient to facilitate timely diagnosis of endometrial cancer in the near future.