Machine Learning-based Classifier to Decipher Immune Landscape of Uveal Melanoma and Predict Patient Outcomes
Yuan Zhang,
Ni Shen,
Aimin Jiang
et al.
Abstract:Uveal melanoma (UVM) is influenced by immune infiltration features, making the analysis of UVM genomic and immune signatures crucial for predicting patient prognosis and identifying potential targeted therapies.To address this issue, we leveraged multi-omics data from The Cancer Genome Atlas and GEO datasets, especially immune infiltration data, to classify UVM into distinct immune-related subgroups using an unsupervised clustering algorithm. The resulting subgroups were denoted as uveal melanoma carcinoma sub… Show more
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