To get the full list of phenotypic variables, please check the menu below. Please click on the scatter plot to access the network view page.
Tool description
PANDA reconstructs a gene regulatory network using TF PPI, TF DNA binding motif as regulation prior, and gene expression samples. PUMA reconstructs a gene regulatory network with miRNA as regulators using gene expression samples and miRNA predicted targets by miRanda or TargetScan as regulation priors. The Regulator-regulator interaction matrix is set to the identity matrix in the algorithm. LIONESS reconstructs patient-specific PANDA networks for each gene expression sample.
BONOBO is a single-sample network inference method, which can be used to estimate patient-specific co-expression matrices, which are then fed as input for PANDA to build patient-specific GRNs. To adapt BONOBO-PANDA networks for patient's sex, and in addition to sample-specific co-expression, PANDA's motif prior networks are constructed for each sex (accounting for sex chromosomes), while the third input (PPI networks) are generic for all patients. To download sample-specific networks, you can check the phenotypic information and select the networks by clinical variables or download all the samples in a single file.
Variable description
PANDA-LIONESS networks are single-sample networks generated by first estimating an aggregate PANDA network then deriving patient-specific LIONESS networks. You can either download all the networks to get a matrix of size the number of samples by the number of edges. The number of edges is 644 * 30243 (number of miRNA/TFs * number of genes) (~ 106). Otherwise, you can specify the sample network to download and you will get a miRNA/TF-by-gene matrix named after the GTEx sample reference.
Sample | Subject | Gender | Age | DTH-HRDY | SMAT-SSCR | SMRIN | SMTS | SMUBRID | Isch. time | Time point | Net. |
---|---|---|---|---|---|---|---|---|---|---|---|
All | All | - | - | - | - | - | - | - | - | - | Edg126 GB |
GTEX-1117F-0226-SM-5GZZ7 | GTEX-1117F | 2 | 60-69 | 4 | 0 | 6.8 | Adipose Tissue | 2190 | 1214 | Actual Death | |
GTEX-111CU-1826-SM-5GZYN | GTEX-111CU | 1 | 50-59 | 0 | 0 | 7.5 | Adipose Tissue | 2190 | 138 | Actual Death | |
GTEX-111FC-0226-SM-5N9B8 | GTEX-111FC | 1 | 60-69 | 1 | 2 | 7.3 | Adipose Tissue | 2190 | 1040 | Presumed Death | |
GTEX-111FC-1426-SM-5N9C7 | GTEX-111FC | 1 | 60-69 | 1 | 1 | 5.8 | Adipose Tissue | 2190 | 1104 | Presumed Death | |
GTEX-111VG-2326-SM-5N9BK | GTEX-111VG | 1 | 60-69 | 3 | 1 | 7.7 | Adipose Tissue | 2190 | 1083 | Actual Death | |
GTEX-111YS-2426-SM-5GZZQ | GTEX-111YS | 1 | 60-69 | 0 | 0 | 6.6 | Adipose Tissue | 2190 | 296 | Actual Death | |
GTEX-1122O-2026-SM-5NQ91 | GTEX-1122O | 2 | 60-69 | 0 | 0 | 6.3 | Adipose Tissue | 2190 | 126 | Actual Death | |
GTEX-1128S-2126-SM-5H12U | GTEX-1128S | 2 | 60-69 | 2 | 0 | 6.5 | Adipose Tissue | 2190 | 882 | Actual Death | |
GTEX-113IC-0226-SM-5HL5C | GTEX-113IC | 1 | 60-69 | - | 0 | 6.7 | Adipose Tissue | 2190 | 96 | Presumed Death |