The complexity of cancer has always been a huge issue in understanding the source of this disease. However, by appreciating its complexity, we can shed some light on crucial gene associations across and in specific cancer types. In this study, we develop a general framework to infer relevant gene biomarkers and their gene-to-gene associations using multiple gene co- expression networks for each cancer type. Specifically, we infer computationally and biologically interesting communities of genes from kidney renal clear cell carcinoma, liver hepatocellular carcinoma, and prostate adenocarcinoma data sets of The Cancer Genome Atlas (TCGA) database. The gene communities are extracted through a data-driven pipeline and then evaluated through bot...
Abstract Background Understanding the genetic networks and their role in chronic diseases (e.g., can...
One of the driving force that pushes a normal cell towards a cancerous state is led by unregulated c...
Identifying the hallmarks of cancer is essential for cancer research, and the genes involved in canc...
The complexity of cancer has always been a huge issue in understanding the source of this disease. H...
<div><p>Gene co-expression network analysis is an effective method for predicting gene functions and...
Gene co-expression network analysis is an effective method for predicting gene functions and disease...
Identification of cancer-related genes is helpful for understanding the pathogenesis of cancer, deve...
Motivation: Diagnosis and prognosis of cancer and understanding oncogenesis within the context of bi...
Cancer is a very complex genetic disease driven by combinations of mutated genes. This complexity st...
Background: Modern high-throughput genomic technologies represent a comprehensive hallmark of molecu...
Gene fusions are hybrid genes formed when two dis-crete genes are incorrectly joined together. Gene ...
The main goal of Systems Biology research is to reconstruct biological networks for its topological ...
VK: Fortunato, S.We propose a new multi-network-based strategy to integrate different layers of geno...
Abstract Background Extensive biomedical studies have shown that clinical and environmental risk fac...
Gene coexpression network analysis is a powerful "data-driven" approach essential for understanding ...
Abstract Background Understanding the genetic networks and their role in chronic diseases (e.g., can...
One of the driving force that pushes a normal cell towards a cancerous state is led by unregulated c...
Identifying the hallmarks of cancer is essential for cancer research, and the genes involved in canc...
The complexity of cancer has always been a huge issue in understanding the source of this disease. H...
<div><p>Gene co-expression network analysis is an effective method for predicting gene functions and...
Gene co-expression network analysis is an effective method for predicting gene functions and disease...
Identification of cancer-related genes is helpful for understanding the pathogenesis of cancer, deve...
Motivation: Diagnosis and prognosis of cancer and understanding oncogenesis within the context of bi...
Cancer is a very complex genetic disease driven by combinations of mutated genes. This complexity st...
Background: Modern high-throughput genomic technologies represent a comprehensive hallmark of molecu...
Gene fusions are hybrid genes formed when two dis-crete genes are incorrectly joined together. Gene ...
The main goal of Systems Biology research is to reconstruct biological networks for its topological ...
VK: Fortunato, S.We propose a new multi-network-based strategy to integrate different layers of geno...
Abstract Background Extensive biomedical studies have shown that clinical and environmental risk fac...
Gene coexpression network analysis is a powerful "data-driven" approach essential for understanding ...
Abstract Background Understanding the genetic networks and their role in chronic diseases (e.g., can...
One of the driving force that pushes a normal cell towards a cancerous state is led by unregulated c...
Identifying the hallmarks of cancer is essential for cancer research, and the genes involved in canc...