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Development and validation of an interpretable model integrating multimodal information for improving ovarian cancer diagnosis

Author

Listed:
  • Huiling Xiang

    (Sun Yat-sen University Cancer Center
    Sun Yat-sen University Cancer Center)

  • Yongjie Xiao

    (Nanshan)

  • Fang Li

    (Chongqing University Cancer Hospital
    Chongqing University Cancer Hospital)

  • Chunyan Li

    (Sun Yat-sen University Cancer Center)

  • Lixian Liu

    (Guangdong Second Provincial General Hospital)

  • Tingting Deng

    (Sun Yat-sen University Cancer Center)

  • Cuiju Yan

    (Sun Yat-sen University Cancer Center)

  • Fengtao Zhou

    (The Hong Kong University of Science and Technology)

  • Xi Wang

    (Zhejiang Lab
    The Chinese University of Hong Kong)

  • Jinjing Ou

    (Sun Yat-sen University Cancer Center)

  • Qingguang Lin

    (Sun Yat-sen University Cancer Center)

  • Ruixia Hong

    (Chongqing University Cancer Hospital
    Chongqing University Cancer Hospital)

  • Lishu Huang

    (Chongqing University Cancer Hospital
    Chongqing University Cancer Hospital)

  • Luyang Luo

    (The Hong Kong University of Science and Technology)

  • Huangjing Lin

    (Nanshan
    The Chinese University of Hong Kong)

  • Xi Lin

    (Sun Yat-sen University Cancer Center)

  • Hao Chen

    (The Hong Kong University of Science and Technology
    The Hong Kong University of Science and Technology)

Abstract

Ovarian cancer, a group of heterogeneous diseases, presents with extensive characteristics with the highest mortality among gynecological malignancies. Accurate and early diagnosis of ovarian cancer is of great significance. Here, we present OvcaFinder, an interpretable model constructed from ultrasound images-based deep learning (DL) predictions, Ovarian–Adnexal Reporting and Data System scores from radiologists, and routine clinical variables. OvcaFinder outperforms the clinical model and the DL model with area under the curves (AUCs) of 0.978, and 0.947 in the internal and external test datasets, respectively. OvcaFinder assistance led to improved AUCs of radiologists and inter-reader agreement. The average AUCs were improved from 0.927 to 0.977 and from 0.904 to 0.941, and the false positive rates were decreased by 13.4% and 8.3% in the internal and external test datasets, respectively. This highlights the potential of OvcaFinder to improve the diagnostic accuracy, and consistency of radiologists in identifying ovarian cancer.

Suggested Citation

  • Huiling Xiang & Yongjie Xiao & Fang Li & Chunyan Li & Lixian Liu & Tingting Deng & Cuiju Yan & Fengtao Zhou & Xi Wang & Jinjing Ou & Qingguang Lin & Ruixia Hong & Lishu Huang & Luyang Luo & Huangjing , 2024. "Development and validation of an interpretable model integrating multimodal information for improving ovarian cancer diagnosis," Nature Communications, Nature, vol. 15(1), pages 1-12, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-46700-2
    DOI: 10.1038/s41467-024-46700-2
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