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Review
. 2025 Mar 21;17(7):1060.
doi: 10.3390/cancers17071060.

Artificial Intelligence in Gynecological Oncology from Diagnosis to Surgery

Affiliations
Review

Artificial Intelligence in Gynecological Oncology from Diagnosis to Surgery

Stefano Restaino et al. Cancers (Basel). .

Abstract

Background: The field of medicine, both clinical and surgical, has recently been overwhelmed by artificial intelligence technology, which promises countless application scenarios and, above all, implementation in clinical practice and research. Novelties are riding the wave fast, but where do we stand? A small overview in gynecological oncology of future challenges, evidence already investigated, and possible scenarios to be derived was conducted. Methods: Both diagnostic and surgical work in the field of gynecological oncology was conducted, selecting the most interesting articles on the subject. Results: From the narrative review of the literature, it emerged how much further ahead the diagnostic field is at present compared to the surgical one, which appeared to be more limited to ovarian surgery. Most current evidence focuses on the role of different biomarkers in predicting diagnostic, prognostic, and treatment-integrated patterns. Conclusions: Everything we know to date is related to a dynamic photograph that is constantly and rapidly changing as much as AI is becoming inextricably linked to our medical field.

Keywords: artificial intelligence; diagnosis; gynecology oncology; surgery.

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Conflict of interest statement

The authors declare no conflicts of interest.

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