| Literature DB >> 30053901 |
Sohini Sengupta1,2, Sam Q Sun1,2, Kuan-Lin Huang1,2, Clara Oh1,2, Matthew H Bailey1,2, Rajees Varghese3, Matthew A Wyczalkowski1,2, Jie Ning3, Piyush Tripathi3, Joshua F McMichael2, Kimberly J Johnson4, Cyriac Kandoth5, John Welch1, Cynthia Ma1,6, Michael C Wendl1,2,7,6, Samuel H Payne8, David Fenyö9,10, Reid R Townsend1,11, John F Dipersio1,11, Feng Chen12,13, Li Ding14,15,16,17.
Abstract
BACKGROUND: Although large-scale, next-generation sequencing (NGS) studies of cancers hold promise for enabling precision oncology, challenges remain in integrating NGS with clinically validated biomarkers.Entities:
Keywords: Cancer and druggability; Cancer genomics; Multi-omics; Precision medicine; Proteogenomics
Mesh:
Substances:
Year: 2018 PMID: 30053901 PMCID: PMC6064051 DOI: 10.1186/s13073-018-0564-z
Source DB: PubMed Journal: Genome Med ISSN: 1756-994X Impact factor: 11.117
Fig. 1DEPO database. a The methodology supporting curation of the drug-variant depository, which we refer to as DEPO, or Database of Evidence for Precision Oncology, and its use in determining the “druggable” landscape of TCGA tumors. b The composition of sensitive variants in DEPO by variant type. For each variant type, only unique variants were counted even if a given variant is associated with multiple levels of evidence, multiple drugs, and/or multiple cancer types. “CNV” (copy number variation) corresponds to “CNA” (copy number amplification) and “CNL” (copy number loss) entries in DEPO; this includes genes for which CNA or CNL is associated with drug response, respectively. “Expression” refers to genes whose elevated and reduced expression is associated with drug response. “Mutations” refers to missense, nonsense, in-frame indels, and frameshift mutations. c Number of uniquely drug-associated mutations in DEPO by gene, sorted by evidence level: FDA approved, clinical trials, case reports, and preclinical
Fig. 2Drug-associated mutations across cancer types. Both a and b can be broken down into cancer-type-specific and cancer-type-non-specific settings. a Fraction of tumors (y-axis) for a given cancer type (x-axis) that have at least one drug-associated mutation. Both bar graphs are sorted by evidence level. For the cancer-type-specific graph, only the cancer types with the highest level of evidence per mutation are shown. For the cancer-type-non-specific graph, the highest level of evidence available for each mutation independent of cancer type is used, which is derived from the cancer-type-specific setting. b Fraction of tumors (intensity of shading) for a given cancer type containing a drug-associated mutation from a specific gene (y-axis). Only the top 20 genes with drug-associated mutations present in the largest number of tumor samples across the TCGA cohort are displayed
Fig. 3Repurposing of drugs using common mutations associated with drug sensitivity. Cancer-type-specific mutations (blue) and cancer-type-non-specific mutations (red) are distinguished. Intensity of shading corresponds to the fraction of tumors for a given cancer type (x-axis) that contain a specific drug-associated mutation (y-axis). Drug classes associated with each cancer-type-specific mutation from DEPO are shown in the right panel. Only drug-associated mutations present in the largest number of tumor samples across the TCGA cohort are displayed
Fig. 4Protein structure-based analysis of drug-associated mutations. a The number of known drug-associated mutations that can be mapped onto PDB structures, the number of known drug-associated mutations that are found in HotSpot3D clusters, and the number of putative druggable mutations are shown, both in aggregate and for specific genes (x-axis). b Protein structure views of one HotSpot3D cluster in BRAF (PDB: 4MBJ). Known and putative druggable mutations are distinguished by different colors in mutation labels. A drug molecule in the binding pocket is indicated in blue. c Western blot for BRAF mutation cluster found in b. HEK293T cells were transiently transfected with wild-type (WT) or mutant BRAF constructs and were cultured in 0.5% calf serum for 24 h before treatment with Dabrafenib (0-1uM) for 6 h. BRAF activity was analyzed by quantifying phosphorylation changes in MEK1/2. To normalize for transfection and loading variations, pMEK levels were divided by BRAF levels and then by GAPDH levels to produce the normalized relative intensities of pMEK/BRAF/GAPDH. This was then normalized to the WT sample without drug treatment that was set as 1. The error bars represent biological replicates
Fig. 5Druggable gene and protein expression outliers. Outlier expression analysis for mRNA (a) and protein and phosphoproteins (b) in TCGA tumors. Intensity of shading corresponds to percentage of tumor samples in a specific cancer type (x-axis) that has outlier expression in a specific gene (y-axis). The scale is limited to 30%; any percentage higher than this will be displayed as the same color. The bar graphs show how many tumors have outlier expression in each specific gene. Blue refers to potential druggable cancer-type-specific tumors and maroon refers to potential druggable “cancer-type-non-specific” tumors. In b, protein and phosphoproteins are represented, with phosphoproteins distinguished by a “:” followed by the phosphorylation site
Fig. 6Integrative omics analysis of druggability. a TCGA tumor samples are sorted by completeness of DNA/RNA/protein profiling, number of variant types supporting druggability, number of drug classes, and number of druggable genes. Of the 3121 tumor samples with complete profiling, 1003 are potentially druggable based on > 1 variant types (mutational, RNA expression, protein expression) and are represented in b. b Multi-drug and multi-omic relationships within tumor samples. Ten outer sectors separate samples according to biomarkers associated with sensitivity to one of ten FDA-approved drug classes. Each outer sector consists of three tracks: DNA mutation (inner), RNA expression (middle), and protein expression (outer). Different colored bands within these tracks represent different genes whose variants implicate druggability in a single tumor sample. The genes represented in each sector vary according to drug class; adjacent to each sector is a legend indicating represented genes. The total number of unique samples is labeled under each sector. A gray link (between wedges) represents a single tumor with biomarkers associated with sensitivity to multiple drug classes. A green link (within a wedge) represents a single tumor with multiple biomarkers of the same variant type associated with sensitivity to a single drug class (e.g., a single tumor with RNA expression in ESR1 and PGR)
Fig. 7Cell line-based validation. a Violin plots show the distribution of drug response (y-axis) of cell lines with drug-associated mutations compared to the background distribution (dark yellow). The type of distribution is indicated in the top gray bar of the panel with distributions of the background, cell lines with mutations in DEPO (Mutational Evidence), and cell lines with putative functional mutations as predicted by HotSpot3D (HotSpot3D). Sensitive and resistant mutations in DEPO are indicated by a green and pink fill color, respectively. Violin plots outlined in a bold black color indicate the cancer-type-specific distribution. The bottom gray bar indicates sample size and P value (Mann-Whitney U test) for the distribution when compared to the background. b The distribution of drug response (y-axis) for three BRAF inhibitors (PLX4720 (1), PLX4720 (2), and dabrafenib) are shown. For each drug, the background distribution and drug response for cell lines with the BRAF V600E mutation in the cancer-type-specific setting and non-specific setting are shown. c Expression outlier scores for genes (y-axis) with significant negative correlation with a paired drug (x-axis) are shown. The intensity of shading corresponds to the number of probes that registered as significant for a gene-drug pair. d Scatter plots of the drug response (y-axis) of Nutlin-3a and expression outlier scores (x-axis) are shown for three different probes of MDM2. The best fit line and P values for the linear regression are also shown. e Scatter plots of the drug response (y-axis) to three different drugs (erlotinib, lapatinib, and afatinib) and expression outlier scores (x-axis) are shown for 1 probe of EGFR. The best fit line and P values for the linear regression are also shown
Fig. 8Summary of multi-omics-based druggability. Bar graphs show the percentages of tumor samples with a drug-associated variant type (mutation, mRNA expression, protein expression) in the cancer-type-specific and cancer-type-non-specific settings. The circular display shows cumulative percentages of tumor samples with drug-associated biomarkers of successively decreasing levels of evidence