NetBID2 provides comprehensive hidden driver analysis.
Xinran DongLiang DingAndrew ThrasherXinge WangJingJing LiuQingfei PanJordan RashYogesh DhunganaXu YangIsabel RischYuxin LiLei YanMichael C RuschClay McLeodKoon-Kiu YanJunmin PengHongbo ChiJinghui ZhangJiyang YuPublished in: Nature communications (2023)
Many signaling and other genes known as "hidden" drivers may not be genetically or epigenetically altered or differentially expressed at the mRNA or protein levels, but, rather, drive a phenotype such as tumorigenesis via post-translational modification or other mechanisms. However, conventional approaches based on genomics or differential expression are limited in exposing such hidden drivers. Here, we present a comprehensive algorithm and toolkit NetBID2 (data-driven network-based Bayesian inference of drivers, version 2), which reverse-engineers context-specific interactomes and integrates network activity inferred from large-scale multi-omics data, empowering the identification of hidden drivers that could not be detected by traditional analyses. NetBID2 has substantially re-engineered the previous prototype version by providing versatile data visualization and sophisticated statistical analyses, which strongly facilitate researchers for result interpretation through end-to-end multi-omics data analysis. We demonstrate the power of NetBID2 using three hidden driver examples. We deploy NetBID2 Viewer, Runner, and Cloud apps with 145 context-specific gene regulatory and signaling networks across normal tissues and paediatric and adult cancers to facilitate end-to-end analysis, real-time interactive visualization and cloud-based data sharing. NetBID2 is freely available at https://jyyulab.github.io/NetBID .
Keyphrases
- data analysis
- single cell
- electronic health record
- big data
- emergency department
- gene expression
- machine learning
- genome wide
- healthcare
- intensive care unit
- bioinformatics analysis
- psychometric properties
- deep learning
- binding protein
- social media
- young adults
- artificial intelligence
- dna methylation
- amino acid
- neural network