Artificial intelligence algorithm for preoperative prediction of FIGO stage in ovarian cancer based on clinical features integrated 18F-FDG PET/CT metabolic and radiomics features

Shilin Xu & Yu Wang et al. · 2025-02-20

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The International Federation of Gynecology and Obstetric (FIGO) stage is critical to guiding the treatments of ovarian cancer (OC). We tried to develop a model to predict the FIGO stage of OC through machine learning algorithms with patients' pretreatment clinical, positron emission tomography scan (PET/CT) metabolic, and radiomics features. We enrolled OC patients who underwent PET/CT scans and divided them into two cohorts according to their FIGO stage. Then we manually delineated the volume of interest (VOI) and calculated PET metabolic features. Other PET/CT radiomics features were extracted by Python. We developed 11 prediction models to predict stages based on four groups of features and conducted three experiments to verify the meaning of PET/CT features. We also redesigned experiments to demonstrate the stage prediction performance in ovarian clear cell carcinoma (OCCC) and mucinous ovarian cancer (MCOC). 183 OC patients were enrolled in this study, and we obtained 137 features from four groups of data. The best model was an adaptive ensemble with an area under the curve (AUC) value of 0.819. Our proposed models presented the best result of 0.808 in terms of AUC in OCCC and MCOC patients' groups. Through artificial intelligence (AI) algorithms, the PET/CT metabolic and radiomics features combined with clinical features could improve the accuracy of staging prediction.
TL;DR

Through artificial intelligence (AI) algorithms, the PET/CT metabolic and radiomics features combined with clinical features combined with clinical features could improve the accuracy of staging prediction.

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Authors
Shilin Xu, Chengguang Zhu, Meixuan Wu, Sijia Gu, Yongsong Wu, Shanshan Cheng, Chao Wang, Yue Zhang, Weixia Zhang, Wei Shen, Jiani Yang, Xiaokang Yang, Yu Wang
Funding

Shanghai Municipal Science and Technology Major Project

2021SHZDZX0102

National Natural Science Foundation of China

82102856

the Fundamental Research Funds for the Central Universities, the National Key R&D Program of China

2022YFF1202600

Science and Technology Commission of Shanghai Municipality

23YF1433600