AI-powered advances in type II endometrial cancer: global trends and African contexts
Thulo Molefi, Lloyd Mabonga, Rodney Hull, Motshedisi Sebitloane, Zodwa Dlamini

TL;DR
This review explores how AI can improve the diagnosis and treatment of aggressive type II endometrial cancer, especially in Africa, where healthcare disparities are significant.
Contribution
The paper highlights AI's potential to address type II endometrial cancer disparities in Africa through tailored therapies and integration of indigenous knowledge.
Findings
AI-powered tools show promise in improving diagnosis and treatment of type II endometrial cancer.
Innovative AI projects are being developed to address Africa's unique healthcare challenges.
Integration of indigenous knowledge into AI applications can lead to Afrocentric healthcare solutions.
Abstract
The advent of artificial intelligence (AI) in oncology has opened new avenues for enhancing the diagnosis, treatment, and prognosis of type II endometrial cancers (ECs), which account for the majority of EC-related deaths globally. With rising incidence and increasing concerns in Africa, type II ECs are often detected in advanced stages, exhibit aggressive progression, and resist conventional therapies. Despite these characteristics, they are still treated similarly to type I ECs, which are less aggressive and more treatment-responsive. Currently, no specific targeted therapies exist for type II ECs, creating an urgent need for innovative treatment options. This review examines the integration of AI-powered approaches in the care of type II ECs, focusing on their potential to address rising incidence and disparities in Africa. It explores AI-driven diagnostic tools, tailored…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Radiomics and Machine Learning in Medical Imaging · Endometrial and Cervical Cancer Treatments
