Survival prediction and molecular subtyping of squamous cell lung cancer based on network embedding
Dingjie Guo,
Jing Chen,
Yixian Wang
et al.
Abstract:Squamous cell lung cancer (SQCLC), which is fatal to humans, is heterogeneous with different genetic and histological features. We used SBMOI, a multi-omics data integration method from previous study, to integrate clinical, gene expression, and somatic mutation data of SQCLC to construct new patient features. Next, random survival forest (RSF) model and SimpleMKL model were constructed to predict the survival of SQCLC patients, and K-means model was constructed to perform molecular subtyping. The results of t… Show more
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