2 research outputs found
A novel molecular analysis approach in colorectal cancer suggests new treatment opportunities
Colorectal cancer (CRC) is a molecular and clinically heterogeneous disease. In 2015, the
Colorectal Cancer Subtyping Consortium classified CRC into four consensus molecular subtypes
(CMS), but these CMS have had little impact on clinical practice. The purpose of this study is to
deepen the molecular characterization of CRC. A novel approach, based on probabilistic graphical models (PGM) and sparse k-means–consensus cluster layer analyses, was applied in order to
functionally characterize CRC tumors. First, PGM was used to functionally characterize CRC, and
then sparse k-means–consensus cluster was used to explore layers of biological information and
establish classifications. To this aim, gene expression and clinical data of 805 CRC samples from
three databases were analyzed. Three different layers based on biological features were identified:
adhesion, immune, and molecular. The adhesion layer divided patients into high and low adhesion
groups, with prognostic value. The immune layer divided patients into immune-high and immunelow groups, according to the expression of immune-related genes. The molecular layer established
four molecular groups related to stem cells, metabolism, the Wnt signaling pathway, and extracellular functions. Immune-high patients, with higher expression of immune-related genes and genes
involved in the viral mimicry response, may benefit from immunotherapy and viral mimicry-related
therapies. Additionally, several possible therapeutic targets have been identified in each molecular
group. Therefore, this improved CRC classification could be useful in searching for new therapeutic
targets and specific therapeutic strategies in CRC diseas
Client Applications and Server-Side Docker for Management of RNASeq and/or VariantSeq Workflows and Pipelines of the GPRO Suite
The GPRO suite is an in-progress bioinformatic project for -omics data analysis. As part of the continued growth of this project, we introduce a client- and server-side solution for comparative transcriptomics and analysis of variants. The client-side consists of two Java applications called 'RNASeq' and 'VariantSeq' to manage pipelines and workflows based on the most common command line interface tools for RNA-seq and Variant-seq analysis, respectively. As such, 'RNASeq' and 'VariantSeq' are coupled with a Linux server infrastructure (named GPRO Server-Side) that hosts all dependencies of each application (scripts, databases, and command line interface software). Implementation of the Server-Side requires a Linux operating system, PHP, SQL, Python, bash scripting, and third-party software. The GPRO Server-Side can be installed, via a Docker container, in the user's PC under any operating system or on remote servers, as a cloud solution. 'RNASeq' and 'VariantSeq' are both available as desktop (RCP compilation) and web (RAP compilation) applications. Each application has two execution modes: a step-by-step mode enables each step of the workflow to be executed independently, and a pipeline mode allows all steps to be run sequentially. 'RNASeq' and 'VariantSeq' also feature an experimental, online support system called GENIE that consists of a virtual (chatbot) assistant and a pipeline jobs panel coupled with an expert system. The chatbot can troubleshoot issues with the usage of each tool, the pipeline jobs panel provides information about the status of each computational job executed in the GPRO Server-Side, while the expert system provides the user with a potential recommendation to identify or fix failed analyses. Our solution is a ready-to-use topic specific platform that combines the user-friendliness, robustness, and security of desktop software, with the efficiency of cloud/web applications to manage pipelines and workflows based on command line interface software