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Deep learning algorithm for the automated detection and classification of nasal cavity mass in nasal endoscopic images.
Kwon, Kyung Won; Park, Seong Hyeon; Lee, Dong Hoon; Kim, Dong-Young; Park, Il-Ho; Cho, Hyun-Jin; Kim, Jong Seung; Kim, Joo Yeon; Hong, Sang Duk; Kim, Shin Ae; Yoo, Shin Hyuk; Park, Soo Kyoung; Heo, Sung Jae; Kim, Sung Hee; Won, Tae-Bin; Choi, Woo Ri; Kim, Yong Min; Kim, Yong Wan; Kim, Jong-Yeup; Kwon, Jae Hwan; Yu, Myeong Sang.
Afiliação
  • Kwon KW; Department of Otolaryngology, Samsung Changwon Hospital, Sungkyunkwan University School of Medicine, Changwon, Korea.
  • Park SH; Department of Biomedical Informatics, College of Medicine, Konyang University, Daejeon, Korea.
  • Lee DH; Department of Otolaryngology-Head and Neck Surgery, Chonnam National University Medical School & Hwasun Hospital, Hwasun, Korea.
  • Kim DY; Department of Otorhinolaryngology-Head and Neck Surgery, Seoul National University Hospital, Seoul, Korea.
  • Park IH; Department of Otorhinolaryngology-Head and Neck Surgery, Korea University Guro Hospital, Korea University College of Medicine, Seoul, Korea.
  • Cho HJ; Department of Otorhinolaryngology, Gyeongsang National University School of Medicine and Gyeongsang National University Hospital, Jinju, Korea.
  • Kim JS; Department of Otorhinolaryngology-Head and Neck Surgery, College of Medicine, Jeonbuk National University, Jeonju, Korea.
  • Kim JY; Department of Otolaryngology-Head and Neck Surgery, Kosin University College of Medicine, Busan, Korea.
  • Hong SD; Department of Otorhinolaryngology-Head and Neck Surgery, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, Korea.
  • Kim SA; Department of Otolaryngology-Head and Neck Surgery, Soonchunhyang University Seoul Hospital, Soonchunhyang University College of Medicine, Seoul, Korea.
  • Yoo SH; Department of Otorhinolaryngology-Head and Neck Surgery, Dankook University College of Medicine, Cheonan, Korea.
  • Park SK; Department of Otorhinolaryngology-Head and Neck Surgery, Chungnam National University Sejong Hospital, College of Medicine, Sejong, Korea.
  • Heo SJ; Department of Otorhinolaryngology-Head and Neck Surgery, School of Medicine, Kyungpook National University Chilgok Hospital, Kyungpook National University, Daegu, Korea.
  • Kim SH; Department of Otorhinolaryngology-Head and Neck Surgery, National Medical Center, Seoul, Korea.
  • Won TB; Department of Otorhinolaryngology‒Head and Neck Surgery, Seoul National University Bundang Hospital, Seongnam, Korea.
  • Choi WR; Department of Otolaryngology, Samsung Changwon Hospital, Sungkyunkwan University School of Medicine, Changwon, Korea.
  • Kim YM; Department of Otorhinolaryngology-Head and Neck Surgery, College of Medicine, Chungnam National University, Daejeon, Korea.
  • Kim YW; Department of Otorhinolaryngology, Inje University Haeundae Paik Hospital, Busan, Korea.
  • Kim JY; Department of Biomedical Informatics, College of Medicine, Konyang University, Daejeon, Korea.
  • Kwon JH; Department of Otolaryngology-Head and Neck Surgery, Kosin University College of Medicine, Busan, Korea.
  • Yu MS; Department of Otorhinolaryngology-Head and Neck Surgery, Asan Medical Center, University of Ulsan College of Medicine, Seoul, Korea.
PLoS One ; 19(3): e0297536, 2024.
Article em En | MEDLINE | ID: mdl-38478548
ABSTRACT
Nasal endoscopy is routinely performed to distinguish the pathological types of masses. There is a lack of studies on deep learning algorithms for discriminating a wide range of endoscopic nasal cavity mass lesions. Therefore, we aimed to develop an endoscopic-examination-based deep learning model to detect and classify nasal cavity mass lesions, including nasal polyps (NPs), benign tumors, and malignant tumors. The clinical feasibility of the model was evaluated by comparing the results to those of manual assessment. Biopsy-confirmed nasal endoscopic images were obtained from 17 hospitals in South Korea. Here, 400 images were used for the test set. The training and validation datasets consisted of 149,043 normal nasal cavity, 311,043 NP, 9,271 benign tumor, and 5,323 malignant tumor lesion images. The proposed Xception architecture achieved an overall accuracy of 0.792 with the following class accuracies on the test set normal = 0.978 ± 0.016, NP = 0.790 ± 0.016, benign = 0.708 ± 0.100, and malignant = 0.698 ± 0.116. With an average area under the receiver operating characteristic curve (AUC) of 0.947, the AUC values and F1 score were highest in the order of normal, NP, malignant tumor, and benign tumor classes. The classification performances of the proposed model were comparable with those of manual assessment in the normal and NP classes. The proposed model outperformed manual assessment in the benign and malignant tumor classes (sensitivities of 0.708 ± 0.100 vs. 0.549 ± 0.172, 0.698 ± 0.116 vs. 0.518 ± 0.153, respectively). In urgent (malignant) versus nonurgent binary predictions, the deep learning model achieved superior diagnostic accuracy. The developed model based on endoscopic images achieved satisfactory performance in classifying four classes of nasal cavity mass lesions, namely normal, NP, benign tumor, and malignant tumor. The developed model can therefore be used to screen nasal cavity lesions accurately and rapidly.
Assuntos

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Aprendizado Profundo / Neoplasias Limite: Humans Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Aprendizado Profundo / Neoplasias Limite: Humans Idioma: En Ano de publicação: 2024 Tipo de documento: Article