| Literature DB >> 29383145 |
Fan Wang1, Jeremy T-H Chang2, Zhenyu Zhang3, Gladys Morrison1, Aritro Nath1,4, Steven Bhutra1, Rong Stephanie Huang1,4.
Abstract
Ovarian cancer accounts for the highest mortality among gynecologic cancers, mainly due to intrinsic or acquired chemoresistance. While mechanistic-based methods have been used to identify compounds that can overcome chemoresistance, an effective comprehensive drug screening has yet to be developed. We applied a transcriptome based drug sensitivity prediction method, to the Cancer Genome Atlas (TCGA) ovarian cancer dataset to impute patient tumor response to over 100 different drugs. By stratifying patients based on their predicted response to standard of care (SOC) chemotherapy, we identified drugs that are likely more sensitive in SOC resistant ovarian tumors. Five drugs (ABT-888, BIBW2992, gefitinib, AZD6244 and lenalidomide) exhibit higher efficacy in SOC resistant ovarian tumors when multi-platform of transcriptome profiling methods were employed. Additional in vitro and clinical sample validations were carried out and verified the effectiveness of these agents. Our candidate drugs hold great potential to improve clinical outcome of chemoresistant ovarian cancer.Entities:
Keywords: TCGA; chemoresistance; drug repurposing; ovarian cancer; pharmacogenomics
Year: 2017 PMID: 29383145 PMCID: PMC5777757 DOI: 10.18632/oncotarget.22870
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1Predicted paclitaxel IC50s are correlated with the patients’ survival outcomes (Student’s t-test P=0.032)
Predicted drug IC50 is lower (more sensitive to paclitaxel) in alive group.
Figure 2TCGA ovarian cancer patients were subgrouped into SOC responders and SOC non-responders
SOC, standard of care.
Summary of the predicted drug IC50 for candidate drugs in SOC responders and non-responders analyzed using different expression profiling platforms
| TCGA discovery datasets | Validation dataset | ||||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Affymetrix | Agilent | RNA-Seq | RNA-Seq V2 | CTRP v2 | |||||||||||
| Predicted drug IC50 | Student’s | Predicted drug IC50 | Student’s | Predicted drug IC50 | Student’s | Predicted drug IC50 | Student’s | P value | Correlation analysis | ||||||
| SOC Res-ponders | SOC Non-responders | SOC Res-ponders | SOC Non-responders | SOC Res-ponders | SOC Non-responders | SOC Res-ponders | SOC Non-responders | Spearman | Pearson | ||||||
| 5.35 | 5.27 | 3.17×10−5 | 5.34 | 5.30 | 7.69×10−3 | 5.35 | 5.26 | 1.26×10−4 | 5.35 | 5.25 | 1.17×10−3 | 0.011 | R= −0.119, P= 0.023 | R= −0.112, P= 0.029 | |
| 2.27 | 2.14 | 7.95×10−4 | 2.28 | 2.18 | 2.63×10−11 | 2.28 | 2.19 | 1.82×10−7 | 2.28 | 2.19 | 3.57×10−5 | 0.031 | R= −0.318, P< 0.0001 | R= −0.276, P< 0.0001 | |
| 2.05 | 1.79 | 8.92×10−8 | 2.04 | 1.84 | 1.00×10−6 | 2.03 | 1.90 | 6.62×10−3 | 2.05 | 1.85 | 1.02×10−3 | 0.383 | R= −0.302, P< 0.0001 | R= −0.273, P< 0.0001 | |
| 3.05 | 2.73 | 2.73×10−6 | 3.04 | 2.80 | 3.74×10−4 | 3.06 | 2.72 | 7.44×10−6 | 3.07 | 2.68 | 7.77×10−5 | 0.338 | R= −0.272, P< 0.0001 | R= −0.259, P< 0.0001 | |
| 5.40 | 5.30 | 2.71×10−8 | 5.39 | 5.35 | 1.57×10−3 | 5.39 | 5.32 | 1.04×10−4 | 5.39 | 5.33 | 8.82×10−3 | NA | R= −0.142, P=0.008 | R= −0.139, P=0.009 | |
P value was calculated from Student’s t-test by comparing Predicted drug IC50 between SOC responders and non-responders.
Correlation analysis was performed between predicted SOC IC50 and candidate drug IC50.
Figure 3The opposite effect patterns between candidate drugs and SOC
(A) Significant negative Pearson correlation between the ranking of SOC and ABT-888 (Rp= −0.164, Pp= 0.0002). (B) Significant negative Pearson correlation between the ranking of SOC and BIBW2992 (Rp= −0.148, Pp= 0.0007).
Figure 4ABT-888 and BIBW2992 are more sensitive in SOC resistant ovarian cancer cell lines tested in CTRP v2
In vitro measured drug sensitivities (AUC) in CTRP v2 are compared between SOC sensitive and resistant cell lines. The higher the AUC, the more resistance the cell line has for a given drug. (A) ABT-888 showed significant lower AUC in SOC resistant group (Student’s t-test P=0.011). (B) BIBW2992 showed significant lower AUC in SOC resistant group (Student’s t-test P=0.031).
Summary of enriched KEGG pathways that were significantly correlated with resistance of SOC and sensitiveness of candidate drugs
| Positively correlated (desensitize tumor to drug) | Negatively correlated (sensitize tumor to drug) | ||||||
|---|---|---|---|---|---|---|---|
| SOC | ABT-888 | BIBW2992 | Gefitinib | AZD6244 | Lenalidomide | ||
| Allograft rejection | 0.45 | −0.861 | −0.808 | −0.797 | −0.755 | −0.602 | |
| Graft versus host disease | 0.4 | −0.847 | −0.827 | −0.808 | −0.761 | −0.542 | |
| Type I diabetes mellitus | 0.389 | −0.803 | −0.736 | −0.774 | −0.708 | −0.515 | |
| Antigen processing and presentation | 0.372 | −0.736 | −0.68 | −0.683 | −0.63 | −0.453 | |
| RIG I like receptor signaling pathway | 0.364 | −0.597 | −0.543 | −0.453 | −0.521 | −0.235 | |
| Autoimmune thyroid disease | 0.354 | −0.819 | −0.689 | −0.742 | −0.695 | −0.517 | |
| Apoptosis | 0.311 | −0.517 | −0.519 | −0.488 | −0.503 | −0.185 | |
| Asthma | 0.302 | −0.79 | −0.72 | −0.767 | −0.715 | −0.414 | |
| Intestinal immune network for IGA production | 0.291 | −0.795 | −0.633 | −0.742 | −0.66 | −0.575 | |
| TOLL like receptor signaling pathway | 0.27 | −0.626 | −0.539 | −0.549 | −0.585 | −0.22 | |
| Leishmania infection | 0.26 | −0.712 | −0.614 | −0.7 | −0.661 | −0.223 | |
| NOD like receptor signaling pathway | 0.232 | −0.677 | −0.565 | −0.586 | −0.631 | −0.29 | |
| Cytosolic DNA sensing pathway | 0.216 | −0.686 | −0.576 | −0.538 | −0.588 | −0.31 | |
| Natural killer cell mediated cytotoxicity | 0.159 | −0.668 | −0.515 | −0.622 | −0.611 | −0.404 | |
The numbers in this table indicated the Enrichment Score (ESs).