4.6 Article

A New Epigenetic Model to Stratify Glioma Patients According to Their Immunosuppressive State

Journal

CELLS
Volume 10, Issue 3, Pages -

Publisher

MDPI
DOI: 10.3390/cells10030576

Keywords

immunosuppression; tumor microenviroment; neural network; genome-wide methylation model; glioma; extracellular matrix

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In this study, a machine learning classification model based on epigenetic data was developed to separate glioma patients according to their immunosuppression state, achieving a best performance of 82.8% accuracy. By selecting genes and improving selection through data-driven procedures, a method to stratify glioma patients based on their epigenomic state was provided.
Gliomas are the most common primary neoplasm of the central nervous system. A promising frontier in the definition of glioma prognosis and treatment is represented by epigenetics. Furthermore, in this study, we developed a machine learning classification model based on epigenetic data (CpG probes) to separate patients according to their state of immunosuppression. We considered 573 cases of low-grade glioma (LGG) and glioblastoma (GBM) from The Cancer Genome Atlas (TCGA). First, from gene expression data, we derived a novel binary indicator to flag patients with a favorable immune state. Then, based on previous studies, we selected the genes related to the immune state of tumor microenvironment. After, we improved the selection with a data-driven procedure, based on Boruta. Finally, we tuned, trained, and evaluated both random forest and neural network classifiers on the resulting dataset. We found that a multi-layer perceptron network fed by the 338 probes selected by applying both expert choice and Boruta results in the best performance, achieving an out-of-sample accuracy of 82.8%, a Matthews correlation coefficient of 0.657, and an area under the ROC curve of 0.9. Based on the proposed model, we provided a method to stratify glioma patients according to their epigenomic state.

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