| Literature DB >> 27585722 |
Yu-Ching Hsu1, Yu-Chiao Chiu1,2, Yidong Chen3,4, Tzu-Hung Hsiao5, Eric Y Chuang6,7.
Abstract
BACKGROUND: The advance in targeted therapy has greatly increased the effectiveness of clinical cancer therapy and reduced the cytotoxicity of treatments to normal cells. However, patients still suffer from cancer relapse due to the occurrence of drug resistance. It is of great need to explore potential combinatorial drug therapy since individual drug alone may not be sufficient to inhibit continuous activation of cancer-addicted genes or pathways. The DREAM challenge has confirmed the potentiality of computational methods for predicting synergistic drug combinations, while the prediction accuracy can be further improved.Entities:
Keywords: Drug combination; Gene set enrichment analysis; Synergy prediction
Mesh:
Year: 2016 PMID: 27585722 PMCID: PMC5009556 DOI: 10.1186/s12918-016-0310-3
Source DB: PubMed Journal: BMC Syst Biol ISSN: 1752-0509
Fig. 1Overall design of this study. The study was aimed to test the hypothesis that synergy of two drugs can be determined by regulating a common pool of functions and/or genes. Addressing the hypothesis, three prediction methods were devised. We used the DREAM gold standard dataset to validate the methods. After confirming the hypothesis, we then employed the best-performing method to investigate synergistic effects over a wider collection of drugs using the Connectivity Map (CMap) dataset
Fig. 2Flowchart of the three scoring methods. We devised three scores to rank the drug combinations in terms of synergy according to the gene expression profiles obtained from individual treatments. Two of the scores (co-gene and co-GS) were computed by the degree of overlap in disturbed genes or enriched gene sets between two drugs. Here activities and significance of changes in gene sets were modeled by a gene set enrichment analysis. For the co-gene/GS score of a drug pair, we computed an average percentage of overlapped genes across all commonly enriched gene sets. Drug pairs were ranked based on each of the prediction scores
Performance of prediction scores in the DREAM dataset
| Scoring methods | PC-index |
| |
|---|---|---|---|
| Co-gene score |
| 0.648 | <0.0001 |
| Co-GS score |
| 0.589 | 0.0036 |
| Co-gene/GS score |
| 0.663 | <0.0001 |
Notations: , number of commonly regulated genes between drugs and ; , total number of genes; , number of gene sets with significant enrichment in both drugs; , total number of gene sets; , number of genes with significantly changes in both drug treatments within a co-enriched gene set l
Fig. 3Evaluation of the co-gene/GS prediction score. a Scatter plot of the co-gene/GS prediction scores and excess over Bliss (EOB) values, which measures the experimentally assessed synergy of drugs. A significant positive correlation was identified between the two scores. b Box plots of EOB values between the top 15 predicted drug pairs and others. A significant rise in EOB was observed in the top pairs. The P-value was assessed by a one-tailed t-test
Top 15 synergistic drug pairs predicted by the co-gene/GS score in the DREAM dataset
| Drug pair | Co-gene/GS score | Predicted rank | Gold-standard rank |
|---|---|---|---|
| Camptothecin & Mitomycin C | 0.084 | 1 | 5 |
| Camptothecin & Doxorubicin | 0.036 | 2 | 16 |
| H-7 & Mitomycin C | 0.032 | 3 | 2 |
| Methotrexate & Mitomycin C | 0.030 | 4 | 28 |
| Doxorubicin & Mitomycin C | 0.027 | 5 | 4 |
| Cycloheximide & H-7 | 0.027 | 6 | 9 |
| Camptothecin & Etoposide | 0.025 | 7 | 15 |
| H-7 & Trichostatin A | 0.019 | 8 | 19 |
| H-7 & Rapamycin | 0.017 | 9 | 27 |
| Camptothecin & H-7 | 0.015 | 10 | 10 |
| Etoposide & Mitomycin C | 0.015 | 11 | 3 |
| H-7 & Vincristine | 0.012 | 12 | 43 |
| H-7 & Monastrol | 0.012 | 13 | 14 |
| Cycloheximide & Methotrexate | 0.011 | 14 | 64 |
| Doxorubicin & H-7 | 0.011 | 15 | 1 |
Fig. 4Receiver operating characteristic (ROC) curves for drug synergy and antagonism prediction. a ROC curve for drug synergy prediction. The area under the ROC curve (AUC) is 0.87. b ROC curve for drug antagonism prediction. The AUC is 0.36
Top 10 predicted drug combinations in the CMap dataset
| Drug combination | Co-gene/GS score | Rank |
|---|---|---|
| Prestwick-682 & MG-262 | 0.667 | 1 |
| Cefazolin & Nocodazole | 0.667 | 2 |
| Anisomycin & Prednisolone | 0.625 | 3 |
| Lisinopril & Suramin sodium | 0.600 | 4 |
| Iopanoic acid & Butacaine | 0.563 | 5 |
| Alpha-ergocryptine & Clofazimine | 0.529 | 6 |
| Alpha-ergocryptine & Diloxanide | 0.524 | 7 |
| LM-1685 & Mepyramine | 0.512 | 8 |
| Genistein & Etoposide | 0.504 | 9 |
| Acetohexamide & Benzthiazide | 0.500 | 10 |
Commonly enriched gene sets of doxorubicin and H-7 in the DREAM dataset
| Gene set | MSigDB category |
|---|---|
| NEWMAN_ERCC6_TARGETS_DN | Chemical and genetic perturbations |
| LEE_NEURAL_CREST_STEM_CELL_DN | Chemical and genetic perturbations |
| ODONNELL_METASTASIS_UP | Chemical and genetic perturbations |
| CERVERA_SDHB_TARGETS_2 | Chemical and genetic perturbations |
| OSADA_ASCL1_TARGETS_UP | Chemical and genetic perturbations |
| YAUCH_HEDGEHOG_SIGNALING_PARACRINE_UP | Chemical and genetic perturbations |
| HINATA_NFKB_TARGETS_KERATINOCYTE_DN | Chemical and genetic perturbations |
| TAVAZOIE_METASTASIS | Chemical and genetic perturbations |
| VALK_AML_CLUSTER_7 | Chemical and genetic perturbations |
| MIKKELSEN_NPC_ICP_WITH_H3K27ME3 | Chemical and genetic perturbations |
| HOELZEL_NF1_TARGETS_UP | Chemical and genetic perturbations |
| PTEN_DN.V2_UP | Oncogenic signatures |
| KRAS.DF.V1_DN | Oncogenic signatures |
| Response to wounding | Gene ontology terms |
Commonly enriched gene sets of genistein and etoposide in the CMap dataset
| Gene set | MSigDB category |
|---|---|
| DE_YY1_TARGETS_DN | Chemical and genetic perturbations |
| Peptide transporter activity | Gene ontology terms |
| TAP1 binding | Gene ontology terms |