2024
DOI: 10.1007/s10462-023-10666-2
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Exploring data mining and machine learning in gynecologic oncology

Ferdaous Idlahcen,
Ali Idri,
Evgin Goceri

Abstract: Gynecologic (GYN) malignancies are gaining new and much-needed attention, perpetually fueling literature. Intra-/inter-tumor heterogeneity and “frightened” global distribution by race, ethnicity, and human development index, are pivotal clues to such ubiquitous interest. To advance “precision medicine” and downplay the heavy burden, data mining (DM) is timely in clinical GYN oncology. No consolidated work has been conducted to examine the depth and breadth of DM applicability as an adjunct to GYN oncology, emp… Show more

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Cited by 9 publications
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