Artificial intelligence-based risk stratification, accurate diagnosis and treatment prediction in gynecologic oncology

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Abstract

As data-driven science, artificial intelligence (AI) has paved a promising path toward an evolving health system teeming with thrilling opportunities for precision oncology. Notwithstanding the tremendous success of oncological AI in such fields as lung carcinoma, breast tumor and brain malignancy, less attention has been devoted to investigating the influence of AI on gynecologic oncology. Hereby, this review sheds light on the ever-increasing contribution of state-of-the-art AI techniques to the refined risk stratification and whole-course management of patients with gynecologic tumors, in particular, cervical, ovarian and endometrial cancer, centering on information and features extracted from clinical data (electronic health records), cancer imaging including radiological imaging, colposcopic images, cytological and histopathological digital images, and molecular profiling (genomics, transcriptomics, metabolomics and so forth). However, there are still noteworthy challenges beyond performance validation. Thus, this work further describes the limitations and challenges faced in the real-word implementation of AI models, as well as potential solutions to address these issues.

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Jiang, Y., Wang, C., & Zhou, S. (2023, November 1). Artificial intelligence-based risk stratification, accurate diagnosis and treatment prediction in gynecologic oncology. Seminars in Cancer Biology. Academic Press. https://doi.org/10.1016/j.semcancer.2023.09.005

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