Edited on September 28, 2020; Compiled on September 29, 2020
As the field of precision medicine progresses, we start to tailor treatments for cancer patients classified not only by their clinical, but also by their molecular features. The emerging cancer subtypes defined by these features require dedicated resources to assist the discovery of drug candidates for preclinical evaluation. Voluminous cancer patient gene expression profiles have been accumulated in public databases, enabling the creation of a cancer-specific expression signature. Meanwhile, large-scale gene expression profiles of chemical compounds became available in recent years. By matching the cancer-specific expression signature to compound-induced gene expression profiles from large drug libraries, researchers can prioritize small molecules that present high potency to reverse expression of signature genes for further experimental testing of their efficacy. This approach has proven to be an efficient and cost-effective way to identify efficacious drug candidates. However, the success of this approach requires multiscale procedures, imposing significant challenges to many labs. Therefore, we present OCTAD (http://octad.org): an open workspace for virtually screening compounds targeting precise cancer patient groups using gene expression features. We have included 19,127 patient tissue samples covering 50 cancer types, and expression profiles for 12,442 distinct compounds. We will continue to include more tissue samples. We streamline all the procedures including deep-learning based reference tissue selection, disease gene expression signature creation, drug reversal potency scoring, and in silico validation. We release OCTAD as a web portal and a standalone R package to allow experimental and computational scientists to easily navigate the tool. The code and data can also be employed to answer various biological questions.
We use Hepatocellular Carcinoma (HCC) to illustrate the utility of the desktop pipeline. We provide the code and data for investigating differential expression, pathway enrichment, drug prediction and hit selection, and in silico validation. In this workflow, we will select case tissue samples from our compiled TCGA data and compute control tissue samples from the GTEx data. Note that the compiled data contains adjacent normal samples which can also serve as control tissues. By default, the octad package uses Small OCTAD dataset containing expression values only for LINCS 978 landmark genes required for sRGES score computation. To download the full expression values, please refer to the link octad.counts.and.tpm.h5 (~3G). We recommend to use the full expression matrix. By default, computated results are stored in the temporary directory. ## Select case samples Choosing cases (tumor samples from the phenoDF data.frame) and controls (corresponding samples treated as background such as normal tissue, adjacent normal tissue or tumor tissue samples without a specific mutation) is critical to achieving the best results. Several methods are included in the provided code which demonstrates multiple control sample selection methods. There are no built-in validation steps to evaluate case samples. Visualization of cases in a t-SNE (t-Distributed Stochastic Neighbor Embedding) plot could help understand their relations with other OCTAD samples. Samples sharing similar transcriptomic profiles tend to cluster together in the t-SNE plot. The cases scattering in multiple clusters are not recommended to choose as a group. Phenotype data frame phenoDF
contains tissue types including normal tissue, adjacent normal tissue, primary cancer, recurrent cancer, and metastatic cancer.
To list all available samples from the octad database, use the phenoDF data frame. To select HCC samples, subset the phenoDF:
#select data
library(octad)
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phenoDF=get_ExperimentHub_data("EH7274") #load data.frame with samples included in the OCTAD database.
## see ?octad.db and browseVignettes('octad.db') for documentation
## loading from cache
head(phenoDF) #list all data included within the package
## sample.id sample.type biopsy.site cancer
## 1 GTEX-1117F-0226-SM-5GZZ7 normal ADIPOSE - SUBCUTANEOUS normal
## 2 GTEX-1117F-0426-SM-5EGHI normal MUSCLE - SKELETAL normal
## 3 GTEX-1117F-0526-SM-5EGHJ normal ARTERY - TIBIAL normal
## 4 GTEX-1117F-0626-SM-5N9CS normal ARTERY - CORONARY normal
## 5 GTEX-1117F-0726-SM-5GIEN normal HEART - ATRIAL APPENDAGE normal
## 6 GTEX-1117F-1326-SM-5EGHH normal ADIPOSE - VISCERAL (OMENTUM) normal
## data.source gender read.count.file age_in_year metastatic_site tumor_grade
## 1 GTEX Female TOIL.RData <NA> <NA> <NA>
## 2 GTEX Female TOIL.RData <NA> <NA> <NA>
## 3 GTEX Female TOIL.RData <NA> <NA> <NA>
## 4 GTEX Female TOIL.RData <NA> <NA> <NA>
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## tumor_stage gain_list loss_list mutation_list subtype
## 1 <NA> <NA> <NA>
## 2 <NA> <NA> <NA>
## 3 <NA> <NA> <NA>
## 4 <NA> <NA> <NA>
## 5 <NA> <NA> <NA>
## 6 <NA> <NA> <NA>
HCC_primary=subset(phenoDF,cancer=='liver hepatocellular carcinoma'&sample.type == 'primary') #select data
case_id=HCC_primary$sample.id #select cases
The sample ids will be stored in the character vector case_id. The code can be easily modified to select for other cancers or a set of samples based on mutations and copy numbers (e.g., TP53 mutation or MYC amplification). It is also recommended to use the R package cgdsr to select TCGA samples based on more clinical and molecular features.
Use the function computeRefTissue
to compute appropriate normal tissues via comparing gene expression features between case samples and normal tissue samples. Users can select adjacent normal tissue samples if available. By default, features from the precomputed AutoEncoder
file are used, but other features such as top varying genes across samples can be employed as well. Pairwise Spearman correlation is computed between every case sample and every normal sample using these features. For each normal sample, its median correlation with all case samples is then computed. Top correlated normal samples (defined by control_size) are then selected as control.
#computing top 50 reference tissues
control_id=computeRefTissue(case_id,output=FALSE,adjacent=TRUE,source = "octad",control_size = 50)
## see ?octad.db and browseVignettes('octad.db') for documentation
## loading from cache
## see ?octad.db and browseVignettes('octad.db') for documentation
## loading from cache
#please note, if \code{output = TRUE}, \code{outputFolder} variable must be specified, otherwise it will be written to \code{tempdir()}
# use adjacent normal tissue samples as control_id allow you to avoid running this function
There is also an availability to select control samples by hand:
#computing top 50 reference tissues
control_id=subset(phenoDF,biopsy.site=='LIVER'&sample.type=='normal')$sample.id[1:50] #select first 50 samples from healthy liver
# use adjacent normal tissue samples as control_id allow you to avoid running this function
The relationships among case, control and other samples can be visualised through a t-SNE matrix precomputed based on the features derived from autoencoder.
tsne=get_ExperimentHub_data("EH7276") #Download file with tsneresults for all samples in the octad.db once. After this it will be cached and no additional download required.
## see ?octad.db and browseVignettes('octad.db') for documentation
## loading from cache
tsne$type <- "others"
tsne$type[tsne$sample.id %in% case_id] <- "case"
tsne$type[tsne$sample.id %in% control_id] <- "control"
#plot
p2 <- ggplot(tsne, aes(X, Y, color = type)) + geom_point(alpha = 0.4)+
labs(title = paste ('TNSE PLOT'), x= 'TSNE Dim1', y='TSNE Dim2', caption="OCTAD")+
theme_bw()
p2
## Compute gene differential expression between case and control samples Differential expression can be computed via edgeR, limma + voom, or DESeq2. By default, we use edgeR in the analysis. Since the function diffExp
computes differentially expressed genes between case_id
and control_id
within the same data matrix, it can be used to find differentially expressed genes between any two groups of samples. By default, a small dataset containing only 978 genes shared with the LINCS database is used.
res=diffExp(case_id,control_id,source='octad.small',output=FALSE,DE_method='wilcox')
#please note, if \code{output = TRUE}, \code{outputFolder} variable must be specified, otherwise it will be written to \code{tempdir()}
head(res)
#Use simple subset to filter the DE results:
res=subset(res,abs(log2FoldChange)>1&padj<0.001)
The diffExp
function will produce data.frame
with DE results. Please note that option annotate
is not required to be TRUE
, but in this case annotation will be performed. If using custom expression matrix, please make sure expSet row.names
contains Ensembl IDs that are used to assign gene names and gene descriptions. By default the small dataset containing 978 genes used to compute DE. To compute DE for the whole 60k genes or custom expression matrix refer to section “Compute DE full dataset and custom expression matrix”.
The runsRGES
function is used to identify the drugs that potentially reverses the disease signature. Use the code below to choose significant genes; this works by keeping genes that have low adjusted P-values and high log-fold changes.
Launch the sRGES computation. It takes a few minutes to compute RGES scores. After the job is finished, it will output files all_lincs_score.csv (RGES of individual profiles), sRGES.csv (summarized RGES of individual drugs) and dz_sig_used.csv (signature genes used for drug prediction). LINCS also provides the imputed expression of the whole transcriptome based on the 978 genes. We will add it in the future when its usage is fully evaluated. There is no good way available to choose an optimal sRGES threshold, but empirically < -0.2 is good to go
data("res_example") #load differential expression example for HCC vs adjacent liver tissue computed in diffExp() function from previous step
res=subset(res_example,abs(log2FoldChange)>1&padj<0.001) #load example expression dataset
sRGES=runsRGES(res,max_gene_size=100,permutations=1000,output=FALSE)
#please note, if \code{output = TRUE}, \code{outputFolder} variable must be specified, otherwise it will be written to \code{tempdir()}
head(sRGES)
As the pharmacogenomic database CTRPv2 consists of efficacy data of 481 drugs in 860 cancer cell lines, we may leverage this database for further in silico validation of our predictions, even without running any biological experiment. We use the HepG2 cell line to validate the prediction of HCC drugs.
cell_line_computed=computeCellLine(case_id=case_id,source='octad.small')
## outputFolder is NULL, writing output to tempdir()
## loading whole octad expression data for 369 samples
## computing correlation between cell lines and selected samples
## see ?octad.db and browseVignettes('octad.db') for documentation
## loading from cache
## see ?octad.db and browseVignettes('octad.db') for documentation
## loading from cache
#please note, if \code{output = TRUE}, \code{outputFolder} variable must be specified, otherwise it will be written to \code{tempdir()}
head(cell_line_computed)
## medcor
## HEPG2 0.4997406
## HEC108 0.3828849
## A549 0.3168699
## HS578T 0.2975901
## COV644 0.2901484
## NCIH508 0.2779563
computeCellLine
will produce an object with correlation scores for every cell line and case samples (stored as CellLineCorrelations.csv).
data("sRGES_example") #load example sRGES from octad.db
#please note, if \code{outputFolder=NULL}, output it will be written to \code{tempdir()}
topLineEval(topline = 'HEPG2',mysRGES = sRGES_example)
## outputFolder is NULL, writing output to tempdir()
## see ?octad.db and browseVignettes('octad.db') for documentation
## loading from cache
## see ?octad.db and browseVignettes('octad.db') for documentation
## loading from cache
## `geom_smooth()` using formula = 'y ~ x'
## `geom_smooth()` using formula = 'y ~ x'
topLineEval
will produce CellLineEval*_drug_sensitivity_insilico_results.txt and two .html documents: 1. *_auc_insilico_validation.html (correlation between drug AUC in the specified cell line and sRGES) 2. *_ic50_insilico_validation.html (correlation between drug IC50 in the specified cell line and sGRES)
After calculation of sRGES on the LINCS L1000 compound dataset, perform drug enrichment analysis to identify interesting drug classes whose member drugs are significantly enriched at the top of the prediction. Example drug classes include anti-inflammatories, EGFR inhibitors, and dipines (calcium channel blockers). OCTAD provides MESH, CHEMBL, and CHEM_CLUSTER for MeSH term enrichment, target enrichment, and chemical structure enrichment, respectively. The enrichment score is calculated using ssGSEA and its significance is computed by a permutation test.
data("sRGES_example")
octadDrugEnrichment(sRGES = sRGES_example, target_type='chembl_targets')
## outputFolder is NULL, writing output to tempdir()
## see ?octad.db and browseVignettes('octad.db') for documentation
## loading from cache
## Running enrichment for chembl_targets
## see ?octad.db and browseVignettes('octad.db') for documentation
## loading from cache
## ! 12442 genes with constant values throughout the samples
## ! Some gene sets have size one. Consider setting minSize > 1
## Done forchembl_targetsfor22genes
#please note, if \code{outputFolder=NULL}, output it will be written to \code{tempdir()}
This analysis provides much information for following candidate selection and experiment design. First, the candidates selected from the same enriched class (i.e., MeSH term, target) are more likely to be true positive than those randomly selected from the top list. Second, when the ideal candidate is not available, it is reasonable to choose an alternative from the same class. Sometimes, it is necessary to choose a new drug for testing (e.g., a second generation of one inhibitor for the same target). Lastly, since many compounds have multiple MOAs, this analysis would help interpret the MOA of promising compounds.
To use the whole OCTAD dataset from octad.counts.and.tpm.h5 as input, make sure the required .h5 file is downloaded and stored in the R working directory or the whole path to the file is specified:
get_ExperimentHub_data('EH7277')
res=diffExp(case_id,control_id,source='octad.whole',
output=FALSE,n_topGenes=10000,file='octad.counts.and.tpm.h5')
We can also perform DE analysis using an external dataset. Below is an example to perform DE analysis between tumor and non-tumor samples using the count data downloaded from GEO GSE144269.
data=data.table::fread(('https://ftp.ncbi.nlm.nih.gov/geo/series/GSE144nnn/GSE144269/suppl/GSE144269_RSEM_GeneCounts.txt.gz'),header=TRUE)
row.names(data)=data$entrez_id
data$entrez_id=NULL
samples=colnames(data) #define the case and control cohorts, A samples were obtained from tumors, B samples were obtained from adjacent tissue
case_id=samples[grepl('A_S',samples)]
control_id=samples[grepl('B_S',samples)]
res=diffExp(case_id,control_id,source='side',output=FALSE,outputFolder=tempdir(),n_topGenes=10000,
expSet=log2(as.matrix(data)+1),annotate=FALSE) #compute DE
The diffExp
function will produce data.frame
with DE results. Please note that option annotate
is not required to be TRUE
, but in this case annotation will be performed. If using custom expression matrix, please make sure expSet row.names
contains Ensembl IDs that are used to assign gene names and gene descriptions.
Alternatively the database and the pipeline is available via website of the OCTAD project: http://octad.org/. If you use our work, please cite the OCTAD paper. Both OCTAD package and website was developed by Bin Chen laboratory. octad package is github available via link After the package will be accepted to the bioconductor, it will be available on the bioconductor
Here is the output of sessionInfo on the system where this document was compiled:
sessionInfo()
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## [69] prettyunits_1.2.0 htmlwidgets_1.6.4
## [71] S4Arrays_1.6.0 pkgconfig_2.0.3
## [73] gtable_0.3.6 blob_1.2.4
## [75] hwriter_1.3.2.1 SingleCellExperiment_1.28.0
## [77] htmltools_0.5.8.1 GSEABase_1.68.0
## [79] scales_1.3.0 png_0.1-8
## [81] SpatialExperiment_1.16.0 knitr_1.48
## [83] reshape2_1.4.4 rjson_0.2.23
## [85] nlme_3.1-166 curl_5.2.3
## [87] cachem_1.1.0 stringr_1.5.1
## [89] BiocVersion_3.20.0 parallel_4.4.1
## [91] AnnotationDbi_1.68.0 restfulr_0.0.15
## [93] pillar_1.9.0 grid_4.4.1
## [95] vctrs_0.6.5 BiocSingular_1.22.0
## [97] beachmat_2.22.0 xtable_1.8-4
## [99] evaluate_1.0.1 GenomicFeatures_1.58.0
## [101] magick_2.8.5 cli_3.6.3
## [103] locfit_1.5-9.10 compiler_4.4.1
## [105] rlang_1.1.4 crayon_1.5.3
## [107] labeling_0.4.3 interp_1.1-6
## [109] aroma.light_3.36.0 plyr_1.8.9
## [111] stringi_1.8.4 viridisLite_0.4.2
## [113] deldir_2.0-4 munsell_0.5.1
## [115] lazyeval_0.2.2 Matrix_1.7-1
## [117] hms_1.1.3 sparseMatrixStats_1.18.0
## [119] bit64_4.5.2 Rhdf5lib_1.28.0
## [121] KEGGREST_1.46.0 statmod_1.5.0
## [123] highr_0.11 memoise_2.0.1
## [125] bslib_0.8.0 bit_4.5.0