| Literature DB >> 29026541 |
Mahya Mehrmohamadi1,2,3,4, Seong Ho Jeong4, Jason W Locasale1,2,3.
Abstract
BACKGROUND: Antimetabolite chemotherapeutic agents that target cellular metabolism are widely used in the clinic and are thought to exert their anti-cancer effects mainly through non-specific cytotoxic effects. However, patients vary dramatically with respect to treatment outcome, and the sources of heterogeneity remain largely unknown.Entities:
Keywords: 5-fluorouracil; Antimetabolite chemotherapies; Gemcitabine; Molecular determinants of response to chemotherapy
Year: 2017 PMID: 29026541 PMCID: PMC5627437 DOI: 10.1186/s40170-017-0170-3
Source DB: PubMed Journal: Cancer Metab ISSN: 2049-3002
Fig. 1Combined gene expression signatures of response to 5-FU in colon cancer identify novel subgroups. a Schematic of the step-wise filtering used for gene selection in colon cancer (TCGA COAD). b Hierarchical clustering of heatmap of the discretized gene favorability scores. Columns represent genes and rows represent individuals. Favorable scores are shown by the color red (F = 1), unfavorable by blue (F = − 1), and neutral by yellow (F = 0) (see the “Methods” section). c Pathways enriched in the unfavorable gene set. Enrichment p values are calculated using Fisher’s exact test (see the “Methods” section)
Fig. 3Combined gene expression signatures of response to Gemcitabine in pancreatic cancer identify novel subgroups. a Schematic of the step-wise filtering used for gene selection in pancreatic cancer (TCGA PAAD). b Hierarchical clustering of heatmap of the discretized gene favorability scores. Columns represent genes and rows represent individuals. Favorable scores are shown by the color red (F = 1), unfavorable by blue (F = − 1), and neutral by yellow (F = 0) (see the “Methods” section). c Pathways enriched in the unfavorable gene set. Enrichment p values are calculated using Fisher’s exact test. d Kaplan-Meier plot showing the progression free survival in the two tumor subgroups identified in part (b)
Fig. 2Relationship between target enzyme expression and response to 5-FU in colon cancer. a Kaplan-Meier plot showing progression free survival in the two tumor subgroups identified in Fig. 1b. b Kaplan-Meier plot compares progression free survival in high-TYMS expression vs. low-TYMS expression subgroups of TCGA COAD patients. c Kaplan-Meier plot compares progression free survival in high-TYMS expression vs. low-TYMS expression subgroups of stage III TCGA COAD patients
Fig. 4Combined gene expression signatures of response to 5-FU across colon cancer cell lines identify novel subgroups. a Schematic of the step-wise filtering used for gene selection in colon cancer (COSMIC COAD-READ). b Hierarchical clustering of heatmap of the discretized gene favorability scores. Columns represent genes and rows represent individuals. Favorable scores are shown by the color red (F = 1), unfavorable by blue (F = − 1), and neutral by yellow (F = 0) (see the “Methods” section). c Box-plots comparing the resistance to 5-FU (log IC-50 values) between the two cell line subgroups identified in part (b) (error bars show the range of the data points in each group)
Fig. 5Analysis of additional determinants of sensitivity to antimetabolite agents demonstrates variability among these agents. a The significance of association between metabolic profiles (consumption and release rates (CORE)) and sensitivity to drugs (− log (IC-50)) was assessed using Spearman correlations (SC) across the NCI-60 cell line panel. The y-axis shows negative log-10 of the corresponding correlation p values for only the significant associations found (q value < 0.05). b Hierarchical clustering of the Pearson similarity matrix between the IC-50 values of 17 antimetabolite agents across the NCI-60 panel. The diagonal shows correlation of each drug with itself (= 1). The yellow boxes show three distinct clusters of drugs. c Spearman correlation coefficient (SCC) between proliferation rate (kp) and sensitivity to each drug (− log (IC-50)) is shown. Solid bars show significant correlations (FDR-corrected q value < 0.05). d Spearman correlation coefficient (SCC) between cell volume (V) and sensitivity to each drug (− log (IC-50)) is shown. Solid bars show significant correlations (FDR-corrected q value < 0.05). e Spearman correlation coefficient (SCC) between growth rate (kg) and sensitivity to each drug (− log (IC-50)) is shown. Solid bars show significant correlations (FDR-corrected q-value < 0.05)