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Machine learning combined with radiomics and deep learning features extracted from CT images: a novel AI model to distinguish benign from malignant ovarian tumors.
Jan, Ya-Ting; Tsai, Pei-Shan; Huang, Wen-Hui; Chou, Ling-Ying; Huang, Shih-Chieh; Wang, Jing-Zhe; Lu, Pei-Hsuan; Lin, Dao-Chen; Yen, Chun-Sheng; Teng, Ju-Ping; Mok, Greta S P; Shih, Cheng-Ting; Wu, Tung-Hsin.
Afiliación
  • Jan YT; Department of Biomedical Imaging and Radiological Sciences, National Yang Ming Chiao Tung University, Taipei, 112, Taiwan.
  • Tsai PS; Department of Radiology, MacKay Memorial Hospital, Taipei, Taiwan.
  • Huang WH; Department of Medicine, MacKay Medical College, New Taipei City, Taiwan.
  • Chou LY; MacKay Junior College of Medicine, Nursing and Management, New Taipei City, Taiwan.
  • Huang SC; Department of Biomedical Imaging and Radiological Sciences, National Yang Ming Chiao Tung University, Taipei, 112, Taiwan.
  • Wang JZ; Department of Radiology, MacKay Memorial Hospital, Taipei, Taiwan.
  • Lu PH; Department of Medicine, MacKay Medical College, New Taipei City, Taiwan.
  • Lin DC; MacKay Junior College of Medicine, Nursing and Management, New Taipei City, Taiwan.
  • Yen CS; Department of Biomedical Imaging and Radiological Sciences, National Yang Ming Chiao Tung University, Taipei, 112, Taiwan.
  • Teng JP; Department of Radiology, MacKay Memorial Hospital, Taipei, Taiwan.
  • Mok GSP; Department of Medicine, MacKay Medical College, New Taipei City, Taiwan.
  • Shih CT; MacKay Junior College of Medicine, Nursing and Management, New Taipei City, Taiwan.
  • Wu TH; Department of Radiology, MacKay Memorial Hospital, Taipei, Taiwan.
Insights Imaging ; 14(1): 68, 2023 Apr 24.
Article en En | MEDLINE | ID: mdl-37093321
ABSTRACT

BACKGROUND:

To develop an artificial intelligence (AI) model with radiomics and deep learning (DL) features extracted from CT images to distinguish benign from malignant ovarian tumors.

METHODS:

We enrolled 149 patients with pathologically confirmed ovarian tumors. A total of 185 tumors were included and divided into training and testing sets in a 73 ratio. All tumors were manually segmented from preoperative contrast-enhanced CT images. CT image features were extracted using radiomics and DL. Five models with different combinations of feature sets were built. Benign and malignant tumors were classified using machine learning (ML) classifiers. The model performance was compared with five radiologists on the testing set.

RESULTS:

 Among the five models, the best performing model is the ensemble model with a combination of radiomics, DL, and clinical feature sets. The model achieved an accuracy of 82%, specificity of 89% and sensitivity of 68%. Compared with junior radiologists averaged results, the model had a higher accuracy (82% vs 66%) and specificity (89% vs 65%) with comparable sensitivity (68% vs 67%). With the assistance of the model, the junior radiologists achieved a higher average accuracy (81% vs 66%), specificity (80% vs 65%), and sensitivity (82% vs 67%), approaching to the performance of senior radiologists.

CONCLUSIONS:

 We developed a CT-based AI model that can differentiate benign and malignant ovarian tumors with high accuracy and specificity. This model significantly improved the performance of less-experienced radiologists in ovarian tumor assessment, and may potentially guide gynecologists to provide better therapeutic strategies for these patients.
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Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Idioma: En Revista: Insights Imaging Año: 2023 Tipo del documento: Article País de afiliación: Taiwán

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Idioma: En Revista: Insights Imaging Año: 2023 Tipo del documento: Article País de afiliación: Taiwán
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