CR |
This is the CR colorectal cancer data to be included in my package |
essnet |
Based on the output of internal_substraction, this calculates a p-value for each complex |
fsnet |
Based on the rank weight matrix and the list of complexes, give a matrix of scores per complex |
generate_proteomics_sim |
Proteomics data simulation function |
generate_rank_matrix |
Generates a rank matrix |
generate_weight_matrix |
Generates a weight matrix by applying the generate weight vector function to all columns |
generate_weight_vector |
Generates a weight vector |
gsea |
The original GSEA algorithm based on the Kolmogorov-Smirnov |
he |
The hypergeometric enrichment pipeline |
hello |
Hello, World! |
internal_substraction |
This generates all paired differences, deltas, for each gene between samples in class A and B |
my.t.test.p.value |
A test function for the t-test |
pfsnet_theoretical_t_test |
Uses the original FSNET matrix but applies PFSNET's calculation method |
ppfsnet_theoretical_t_test |
Uses the original FSNET matrix but applies PPFSNET's calculation method |
qpsp |
QPSP rank matrix generation function |
qpsp_generate_rank_matrix |
QPSP rank matrix generation function |
qpsp_standard_t_test |
This generates a vector of p-values for a data matrix using the two-sample t-test |
RC |
This is the RC renal cancer data to be included in my package |
RCC |
This is the RCC renal cancer control data to be included in my package |
snet_generate_weight_matrix |
Generates a matrix of snet weights for a given data matrix |
snet_weight_vector |
Generates a vector of snet weights for a given sample |
standard_t_test |
This generates a vector of p-values for a data matrix using the two-sample t-test |
subset_weights |
Generates a modulated weight matrix |