| Literature DB >> 22248814 |
Nancy Liu-Sullivan1, Jianping Zhang, Amy Bakleh, John Marchica, Jinyu Li, Despina Siolas, Sylvie Laquerre, Yan Y Degenhardt, Richard Wooster, Kenneth Chang, Gregory F Hannon, Scott Powers.
Abstract
RNAi screening holds the promise of systemizing the search for combination therapeutic strategies. Here we performed a pooled shRNA library screen to look for promising targets to inhibit in combination with inhibition of the mitotic regulator polo-like kinase (PLK1). The library contained ~4,500 shRNAs targeting various signaling and cancer-related genes and was screened in four lung cancer cell lines using both high (IC80) and low (IC20) amounts of the PLK1 inhibitor GSK461364. The relative abundance of cells containing individual shRNAs following drug treatment was determined by microarray analysis, using the mock treatment replicates as the normalizing reference. Overall, the inferred influences of individual shRNAs in both high and low drug treatment were remarkably similar in all four cell lines and involved a large percentage of the library. To investigate which functional categories of shRNAs were most prominent in influencing drug response, we used statistical analysis of microarrays (SAM) in combination with a filter for genes that had two or more concordant shRNAs. The most significant functional categories that came out of this analysis included receptor tyrosine kinases and nuclear hormone receptors. Through individual validation experiments, we determined that the two shRNAs from the library targeting the nuclear retinoic acid receptor gene RARA did indeed silence RARA expression and as predicted conferred resistance to GSK461364. This led us to test whether activation of RARA receptor with retinoids could sensitize cells to GSK461364. We found that retinoids did increase the drug sensitivity and enhanced the ability of PLK1 inhibition to induce mitotic arrest and apoptosis. These results suggest that retinoids could be used to enhance the effectiveness of GSK461364 and provide further evidence that RNAi screens can be effective tools to identify combination target strategies.Entities:
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Year: 2011 PMID: 22248814 PMCID: PMC3282082 DOI: 10.18632/oncotarget.406
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1Schematic of the pooled shRNA screening methodology
Shown in the blue box insert are features of the MLP retroviral vector including the two PCR primers that are used to amplify the shRNA and its linked barcode. Shown in the upper left is a representation of the relative abundance of individual shRNAs in the library as it is prepared in E. coli. Following transfection into mammalian cells and selection for stable integration, the relative abundance of individual shRNA changes, as it does following mock treatment or treatment with an inhibitory drug.
Figure 2Schematic of the array protocol followed to readout the relative abundance of individual shRNAs following treatment
The barcoded shRNA inserts from mock or drug treated cells are labeled with Cy3-nucleotides and used as probes in a competitive two-color hybridization with Cy5-labeled probe generated from the barcoded shRNA inserts amplified from the E. coli generated library.
Figure 3Heatmap of the relative abundance of 3,003 shRNAs in the genomic DNA isolated from mock-treated or GSK461364A-treated lung cancer cell lines
Both individual shRNAs (rows) and individual cell line treatments (columns) were hierarchically clustered based on the measured abundance of shRNAs relative to the average of mock treatments. The color key indicating relative abundance is on a log2 scale. The mock treatments formed one cluster and each of the GSK461364A treatments clustered according to cell line identity but irrespective of low (IC20) or high (IC80) drug treatment (indicated by L and H at the bottom of the heatmap). The five clusters of shRNAs that are highlighted are described in the text.
Figure 4Heatmap display of the relative abundance of the 201 shRNAs chosen by SAM and independent shRNA concordance
A two-class comparison (all mock treatments versus all GSK461364A treatments) by the statistical method SAM pinpointed 816 shRNAs that were significantly different. From this group of 816, 201 shRNAs showed concordance defined by targeting the same gene and showing consistently lower relative abundance or higher relative abundance. The shRNAs (rows) of the heatmap were not clustered but were ordered as a group based on relative gain or loss and within that group ordered alphabetically by gene name. Individual cell line treatments (columns) were hierarchically clustered as in Figure 4.
Functional classification of the 97 genes associated with response to GSK461364A
The DAVID Gene Functional Classification Tool was used to analyze the 97 genes targeted by the 201 shRNAs associated with response to GSK461364A. The resultant groupings and 50 genes are listed here, together with the average shRNA relative abundance (drug treatment vs. mock treatment) on a log2 scale.
| Grouped Genes | Description | shRNA effect |
|---|---|---|
| Cell surface receptor linked signal transduction | ||
| colony stimulating factor 1 receptor | −0.30 | |
| discoidin domain receptor tyrosine kinase 1 | −0.41 | |
| epidermal growth factor receptor | −0.50 | |
| guanylate cyclase 2D, membrane | −0.46 | |
| insulin-like growth factor 1 receptor | −0.28 | |
| proto-oncogene tyrosine-protein kinase Kit | −0.45 | |
| transforming growth factor, beta receptor 1 | −0.54 | |
| tyrosine kinase with immunoglobulin-and EGF-like domains | −0.52 | |
| BMX non-receptor tyrosine kinase | −0.86 | |
| calmodulin-dependent protein kinase kinase | −0.86 | |
| cell division cycle 7 homolog (S. cerevisiae) | −0.39 | |
| cyclin-dependent kinase 7 | −0.34 | |
| colony stimulating factor 1 receptor | −0.29 | |
| casein kinase 1, gamma 1 | −0.55 | |
| casein kinase 2, alpha prime polypeptide | −0.44 | |
| discoidin domain receptor tyrosine kinase 1 | −0.41 | |
| dual-specificity tyrosine-(Y)-phosphoryl. regulated kinase 4 | −0.47 | |
| eukaryotic translation initiation factor 2-alpha kinase 2 | −0.25 | |
| intestinal cell (MAK-like) kinase | −0.42 | |
| LATS, large tumor suppressor, homolog 2 (Drosophila) | −0.54 | |
| mitogen-activated protein kinase kinase 6 | 0.61 | |
| mitogen-activated protein kinase kinase 7 | −0.23 | |
| mitogen-activated protein kinase kinase kinase 13 | 1.11 | |
| mitogen-activated protein kinase 10 | −0.87 | |
| mitogen-activated protein kinase 14 | −0.16 | |
| mitogen-activated protein kinase 15 | −0.39 | |
| microtubule associated serine/threonine kinase 4 | −0.82 | |
| phosphofructokinase, platelet | 0.46 | |
| SCY1-like 3 (S. cerevisiae) | −0.86 | |
| serum/glucocorticoid regulated kinase 3 | 0.24 | |
| STE20-like kinase (yeast) | −0.36 | |
| TAO kinase 2 | −0.87 | |
| tyrosine kinase with immunoglobulin-and EGF-like domains | −0.52 | |
| anaphase promoting complex subunit 5 | −0.36 | |
| cell division cycle 16 homolog (S. cerevisiae) | −0.53 | |
| cell division cycle 20 homolog (S. cerevisiae) | −0.56 | |
| cell division cycle 27 homolog (S. cerevisiae) | −0.44 | |
| nuclear receptor subfamily 1, group I, member 3 | −1.28 | |
| nuclear receptor subfamily 2, group C, member 1 | −0.75 | |
| nuclear receptor subfamily 2, group C, member 2 | −0.65 | |
| nuclear receptor subfamily 2, group E, member 3 | −0.65 | |
| nuclear receptor subfamily 3, group C, member 2 | −0.47 | |
| nuclear receptor subfamily 4, group A, member 2 | −1.39 | |
| nuclear receptor subfamily 4, group A, member 3 | 0.71 | |
| nuclear receptor subfamily 5, group A, member 1 | −0.87 | |
| retinoic acid receptor, alpha | 0.62 | |
| deleted in colorectal carcinoma | 0.79 | |
| protein tyrosine phosphatase, receptor type, D | −0.72 | |
| protein tyrosine phosphatase, receptor type, F | −0.64 | |
| protein tyrosine phosphatase, receptor type, G | −0.47 | |
Figure 5Validation of shRNAs targeting RARA and the effect of retinoids on the response of lung cancer cells to GSK461364A
Panel A. Confirmation that the two shRNAs directed against RARA knockdown protein expression. NCI-H460 cells were stably infected with control vector (lane 1) or the two different shRNAs (lanes 2 and 3), and extracts were immunoblotted with anti-RARα antibody. Panel B. Dose-response curves showing the sensitivity of NCI-H460 cells to growth inhibition by GSK461364A that had been previously transduced with either control vector (blue line) or the two different shRNAs directed against RARA (red lines; each shRNA is shown in a separate graph). Panel C. Dose-response curves showing the sensitivity of four different lung cancer cell lines to varying concentrations of GSK461364A in the presence (red) or absence (blue) of 1 micromolar ATRA and 1 micromolar 9-cis-retinoic acid. 1,000-3,000 cells were plated in 96-well plates and assayed for growth inhibition as described in Methods.