__vPECA__: variants interpretation method by Paired Expression and Chromatin Accessibility data * Version 1.0 * Last updated: June 6, 2019 !!!Reference * Jingxue Xin, Hui Zhang, Yaoxi He, Zhana Duren, Chaoying Cui, Lang Chen, Xin Luo, Dong-Sheng Yan, Chaoyu Zhang, Xiang Zhu, Qiuyue Yuan, Xuebing Qi, Ouzhuluobu, Wing Hung Wong, Yong Wang, Bing Su. Chromatin accessibility landscape and regulatory network of high-altitude hypoxia adaptation. (In submission). !!!Method We develop a variants interpretation method by Paired Expression and Chromatin Accessibility data to model genome-wide chromatin accessibility profiles for high-altitude hypoxia adaptation in HUVEC, to reveal causal SNPs, active and active selected regulatory elements for a certain gene. !!!Procedure !!Useful Resource: Download 25 bio-sample matched RNA-seq and DNase-seq data from mouse ENCODE project. Download regulatoryElement-targetGene association. Download PECA predicted whole network and context specific network for 25 tissues or cell type. !!Using PECA Tools: PECA-TNet: Matlab tool for context specific network Input: paired expression of genes (Exp) and chromatin accessibility of regulatory elements (Opn) on your interested cellular context. Output: context specific network (TissueSpecificNet). Usage: TissueSpecificNet=PECATool1(Exp,Opn,GeneName,ElementName); Where GeneName and ElementName are name of gene and regulatory elements. PECA-Anno: Matlab tool for genomic region annotation by network Input: Bed file of the genomic region you interested (region.bed’). Output: annotation network of your region (RegionNet). Usage: RegionNet=PECATool2(‘region.bed’); !!!Software This is a beta version of the program for preliminary testing. The program is still under development. * [PECA|http://web.stanford.edu/~zduren/PECA/] ---- Category: [Software]