| Literature DB >> 27036028 |
Yao-Yu Hsieh1,2, Tsui-Chin Huang1,3, Hsiang-Ling Lo1,3, Jyun-Yan Jhan1,3, Shui-Tein Chen1,4, Pei-Ming Yang1,3.
Abstract
Polypharmacology (the ability of a drug to affect more than one molecular target) is considered a basic property of many therapeutic small molecules. Herein, we used a chemical genomics approach to systematically analyze polypharmacology by integrating several analytical tools, including the LINCS (Library of Integrated Cellular Signatures), STITCH (Search Tool for Interactions of Chemicals), and WebGestalt (WEB-based GEne SeT AnaLysis Toolkit). We applied this approach to identify functional disparities between two cytidine nucleoside analogs: azacytidine (AZA) and decitabine (DAC). AZA and DAC are structurally and mechanistically similar DNA-hypomethylating agents. However, their metabolism and destinations in cells are distinct. Due to their differential incorporation into RNA or DNA, functional disparities between AZA and DAC are expected. Indeed, different cytotoxicities of AZA and DAC toward human colorectal cancer cell lines were observed, in which cells were more sensitive to AZA. Based on a polypharmacological analysis, we found that AZA transiently blocked protein synthesis and induced an acute apoptotic response that was antagonized by concurrently induced cytoprotective autophagy. In contrast, DAC caused cell cycle arrest at the G2/M phase associated with p53 induction. Therefore, our study discriminated functional disparities between AZA and DAC, and also demonstrated the value of this chemical genomics approach that can be applied to discover novel drug action mechanisms.Entities:
Keywords: DNMT inhibitor; colorectal cancer; drug repurposing; polypharmacology; systems pharmacology
Mesh:
Substances:
Year: 2016 PMID: 27036028 PMCID: PMC5053656 DOI: 10.18632/oncotarget.8455
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1Workflow for the integrated chemical genomics approach
Figure 2Different effects of azacytidine (AZA) and decitabine (DAC) on the cell viability of human colorectal cancer cells
(A) Chemical structures of cytidine, AZA, and DAC, and the metabolic pathways of AZA (5-Aza-CR) and DAC (5-Aza-CdR). MP, DP, and TP, mono-, di-, and triphosphate, respectively; PPase, phosphatase; UrdK/CydK, uridine/cytidine kinase; dCydk, deoxycytidine kinase. (B) HCT116 cells were treated with different doses of AZA or DAC for 24 and 72 h. The cell viability at 72 h was analyzed by an MTT assay (upper part). Whole-cell lysates at 24 h were subjected to a Western blot analysis using antibodies against DNMT1 or GAPDH (lower part). (C) RKO, LoVo, HCT-15, DLD-1, and HT-29 cells were treated with different doses of AZA or DAC for 72 h, and the cell viability was analyzed by an MTT assay.
50% inhibitory concentration (IC50) values of azacytidine (AZA) and decitabine (DAC) against colorectal carcinoma (CRC) cell lines
| IC50 of AZA (μM) | IC50 of DAC (μM) | |
|---|---|---|
| HCT116 | 38.2 | ND |
| RKO | 28.7 | ND |
| LoVo | 12.5 | ND |
| HCT-15 | 34.4 | ND |
| DLD-1 | 32.8 | ND |
| HT-29 | 104.3 | ND |
ND, not determined due to the low cytotoxicity of DAC.
Figure 3Prediction of compounds similar to azacytidine (AZA) by STITCH
Chemical connectivity analysis was performed using the STITCH database as described in “Materials and Methods”. In (A), a diagram shows compounds connected to AZA. In (B), a table shows connectivity scores of compounds linked to AZA, and their functional descriptions.
Gene set enrichment analysis (GSEA) for KEGG pathways enriched (p < 0.01) in consensus knockdown genes connected to azacytidine (AZA) or decitabine (DAC)
| Pathways | Genes | No. of genes in pathway | No. of differentially expressed pathway genes (% of total) | ||
|---|---|---|---|---|---|
| Aminoacyl-tRNA biosynthesis | EPRS, MARS, LARS, WARS2, IARS2 | 63 | 5 (7.94%) | 7.66e–07 | |
| Metabolic pathways | CAT, SRM, EPRS, CYP27B1, ALDH3B1, TSTA3, NME4, CBR3, ALDH18A1, ARG1, PMM2, SDHA, FAH | 1130 | 13 (0.53%) | 2.22e–06 | |
| Pathways in cancer | JUN, RB1, PIAS1, IGF1R, PPARG, CDK4, RET, PIAS2, HDAC1, SMAD4, FADD, FAS | 326 | 12 (3.68%) | 3.53e–11 | |
| Cell cycle | RB1, CDK4, PRKDC, ATM, HDAC1, CHEK1, CHEK2, CCNB1, SMAD4 | 124 | 9 (7.26%) | 3.53e–11 | |
| p53 signaling pathway | ATM, CHEK1, CHEK2, CCNB1, CDK4, FAS, THBS1 | 68 | 7 (10.29%) | 4.50e–10 | |
| Metabolic pathways | SUCLA2, PDHA1, ENPP1, GRHPR, GBGT1, AGPAT2, PGK1, PAH, PAICS, CDO1, ACLY, AK4, UQCRC1, OGDH, ACACA | 1130 | 15 (1.33%) | 4.48e–08 | |
| T cell receptor signaling pathway | JUN, MAPK13, LCK, MAPK14, CDK4, MALT1 | 108 | 6 (5.56%) | 2.47e–07 | |
| Epithelial cell signaling in Helicobacter pylori infection | JUN, MAPK13, CSK, MAPK14, LYN | 68 | 5 (7.35%) | 5.04e–07 | |
| Neurotrophin signaling pathway | IRS1, JUN, MAPK13, CSK, MAPK14, PRKCD | 127 | 6 (4.72%) | 5.04e–07 | |
| Chagas disease (American trypanosomiasis) | JUN, MAPK13, MAPK14, FADD, FAS | 104 | 5 (4.81%) | 3.66e–06 | |
| Osteoclast differentiation | JUN, MAPK13, LCK, PPARG, MAPK14 | 128 | 5 (3.91%) | 8.98e–06 |
Consensus knockdown genes with a rank of < 100 and/or a Score-best6 of > 60 were analyzed by a web-based enrichment analytical tool WebGestalt (http://bioinfo.vanderbilt.edu/webgestalt/).
Figure 4Effects of azacytidine (AZA) and decitabine (DAC) on protein synthesis and stability
(A) HCT116 cells were treated with 5 μg/mL cycloheximide (CHX), or different doses of AZA or DAC for 6 and 24 h, and protein synthesis was examined by a puromycin-incorporation assay as described in “Materials and Methods”. Upper part: ponceau S staining of nitrocellulose membranes. Lower part: Western blots of puromycin. (B) HCT116 and RKO cells were treated with 5 μg/mL CHX, 50 μM AZA, or 50 μM DAC for the indicated time intervals, and whole-cell lysates were subjected to a Western blot analysis using antibodies against c-MYC or GAPDH.
Figure 5Effects of azacytidine (AZA) and decitabine (DAC) on the cell cycle and p53 expression
(A) HCT116 cells were treated the different doses of AZA or DAC for 24 and 48 h, and the cell cycle was analyzed by flow cytometry as described in “Materials and Methods”. (B) HCT116 cells were treated the different doses of AZA or DAC for 24 h, and whole-cell lysates were subjected to a Western blot analysis using antibodies against p53, p53R2, γH2AX, or GAPDH.
Figure 6Effects of azacytidine (AZA) and decitabine (DAC) on caspase-3/7 activity
HCT116 cells were treated with different doses of AZA or DAC, or 0.5 μM doxorubicin for 24 and 48 h, and the caspase-3/7 activity was analyzed by flow cytometry as described in “Materials and Methods”.
Figure 7The relationship between apoptosis and autophagy induced by azacytidine (AZA)
(A) HCT116 cells were treated with different doses of doxorubicin for 72 h, and the cell viability was analyzed by an MTT assay. (B) HCT116 cells were treated with different doses of AZA or decitabine (DAC), or 0.5 μM doxorubicin for 24 and 48 h, and whole-cell lysates were subjected to a Western blot analysis using antibodies against PARP1, LC3B, or GAPDH. (C) HCT116 cells were pretreated with 5 mM 3-MA or 50 μM Z-DEVD-FMK for 1 h and then exposed to 50 μM AZA for 24 h. Whole-cell lysates were subjected to a Western blot analysis using antibodies against PARP1, LC3B, or GAPDH. (D) ATG7-WT and ATG7-KO DLD-1 cells were treated with different doses of AZA for 72 h, and cell viability was analyzed by an MTT assay.