Integrated machine learning identifies a cellular senescence-related prognostic model to improve outcomes in uterine corpus endometrial carcinoma
Changqiang Wei,
Shanshan Lin,
Yanrong Huang
et al.
Abstract:BackgroundUterine Corpus Endometrial Carcinoma (UCEC) stands as one of the prevalent malignancies impacting women globally. Given its heterogeneous nature, personalized therapeutic approaches are increasingly significant for optimizing patient outcomes. This study investigated the prognostic potential of cellular senescence genes(CSGs) in UCEC, utilizing machine learning techniques integrated with large-scale genomic data.MethodsA comprehensive analysis was conducted using transcriptomic and clinical data from… Show more
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