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Novel ratio-metric features enable the identification of new driver genes across cancer types

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TLDR
RamanLab et al. as mentioned in this paper proposed a pan-cancer model, cTaG, to identify new driver genes, which captures the functional impact of the mutations as well as their recurrence across samples.
Abstract
An emergent area of cancer genomics is the identification of driver genes. Driver genes confer a selective growth advantage to the cell. While several driver genes have been discovered, many remain undiscovered, especially those mutated at a low frequency across samples. This study defines new features and builds a pan-cancer model, cTaG, to identify new driver genes. The features capture the functional impact of the mutations as well as their recurrence across samples, which helps build a model unbiased to genes with low frequency. The model classifies genes into the functional categories of driver genes, tumour suppressor genes (TSGs) and oncogenes (OGs), having distinct mutation type profiles. We overcome overfitting and show that certain mutation types, such as nonsense mutations, are more important for classification. Further, cTaG was employed to identify tissue-specific driver genes. Some known cancer driver genes predicted by cTaG as TSGs with high probability are ARID1A, TP53, and RB1. In addition to these known genes, potential driver genes predicted are CD36, ZNF750 and ARHGAP35 as TSGs and TAB3 as an oncogene. Overall, our approach surmounts the issue of low recall and bias towards genes with high mutation rates and predicts potential new driver genes for further experimental screening. cTaG is available at https://github.com/RamanLab/cTaG .

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Journal ArticleDOI

iCOMIC: a graphical interface-driven bioinformatics pipeline for analyzing cancer omics data

TL;DR: The iCOMIC toolkit as mentioned in this paper is embedded in the Snakemake workflow management system and can analyze whole-genome and transcriptome data and is characterized by a user-friendly GUI that offers several advantages, including minimal execution steps and eliminating the need for complex command-line arguments.
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Artificial intelligence assists precision medicine in cancer treatment

TL;DR: In this article , the authors used deep learning to mine the deep-level information in genomics, transcriptomics, proteomics, radiomics, digital pathological images, and other data, which can make clinicians synthetically and comprehensively understand tumors.
Journal ArticleDOI

Tumor-derived ARHGAP35 mutations enhance the Gα_13-Rho signaling axis in human endometrial cancer

TL;DR: It is demonstrated that increased expression of Gα13 promotes cell proliferation through activation of Rho and the transcription factor AP-1 in human endometrial cancer, and potential roles of ARHGAP35 as an oncogenic driver gene are suggested, providing novel therapeutic opportunities for endometricrial cancer.
Posted ContentDOI

Multi-omic data helps improve prediction of personalised tumor suppressors and oncogenes

TL;DR: This method is the first machine learning model to classify genes as tumour suppressor gene (TSG), oncogene (OG) or neutral, thus assigning the functional impact of the gene in the patient, and develops a multi-omic approach, PIVOT, to train on experimentally or computationally validated mutational and structural driver events.
References
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TL;DR: This work has been supported by the Department of the Army and the National Institutes of Health, and the author acknowledges the support and encouragement of the National Cancer Institute.
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What is a driver gene?

The paper does not explicitly define what a driver gene is.