Machine learning-based identification of an immunotherapy-related signature to enhance outcomes and immunotherapy responses in melanoma
Zaidong Deng,
Jie Liu,
Yanxun V. Yu
et al.
Abstract:BackgroundImmunotherapy has revolutionized skin cutaneous melanoma treatment, but response variability due to tumor heterogeneity necessitates robust biomarkers for predicting immunotherapy response.MethodsWe used weighted gene co-expression network analysis (WGCNA), consensus clustering, and 10 machine learning algorithms to develop the immunotherapy-related gene model (ITRGM) signature. Multi-omics analyses included bulk and single-cell RNA sequencing of melanoma patients, mouse bulk RNA sequencing, and path… Show more
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