| Literature DB >> 26681397 |
Karen A Ryall, Jihye Kim, Peter J Klauck, Jimin Shin, Minjae Yoo, Anastasia Ionkina, Todd M Pitts, John J Tentler, Jennifer R Diamond, S Gail Eckhardt, Lynn E Heasley, Jaewoo Kang, Aik Choon Tan.
Abstract
BACKGROUND: Triple-Negative Breast Cancer (TNBC) is an aggressive disease with a poor prognosis. Clinically, TNBC patients have limited treatment options besides chemotherapy. The goal of this study was to determine the kinase dependency in TNBC cell lines and to predict compounds that could inhibit these kinases using integrative bioinformatics analysis.Entities:
Mesh:
Substances:
Year: 2015 PMID: 26681397 PMCID: PMC4682411 DOI: 10.1186/1471-2164-16-S12-S2
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Figure 1Integrative bioinformatics research strategyto dissect kinase dependency in TNBC. The Kinase Addiction Ranker (KAR) algorithm integrates gene expression, drug screen, and quantitative kinase-drug binding data to predict kinase dependence in TNBC cell lines. The top ranking kinases by KAR are then queried by K-Map to predict effective compounds. These predictions are then validated experimentally or in literature.
Top 5 kinases ranked by KAR for the 12 TNBC lines.
| TNBC Cell Line | Top 5 Kinases (Score, p-value) ranked by KAR | ||||
|---|---|---|---|---|---|
| (Number of significant kinases, p < 0.05) | Rank 1 | Rank 2 | Rank 3 | Rank 4 | Rank 5 |
| BT20 | |||||
| (9) | (160, 0.0095) | (150, 0.0095) | (155, 0.016) | (160, 0.0257) | (90, 0.039) |
| BT549 | |||||
| (42) | (115, 1.1 × 10-5) | (80, 7.1 × 10-5) | (95, 0.0001) | (120, 0.0002) | (110, 0.0002) |
| CAL148 | |||||
| (14) | (75, 0.0029) | (65, 0.0073) | (60, 0.0073) | (40, 0.0084) | (95, 0.0108) |
| HCC38 | |||||
| (43) | (85, 1.79 × 10-5) | (95, 5.73 × 10-5) | (85, 5.73 × 10-5) | (100, 8.05 × 10-5) | (85, 9,47 × 10-5) |
| HCC70 | |||||
| (24) | (90, 0.0015) | (100, 0.0031) | (75, 0.0115) | (65, 0.0127) | (45, 0.0129) |
| HCC1143 | |||||
| (46) | (45, 0.0005) | (40, 0.0005) | (30, 0.0041) | (30, 0.0041) | (10, 0.0041) |
| HCC1187 | |||||
| (13) | (60, 0.0182) | (50, 0.0182) | (45, 0.0182) | (85, 0.0197) | (85, 0.0229) |
| HCC1806 | |||||
| (23) | (195, 0.0004) | (180, 0.0004) | (125, 0.0041) | (170, 0.0058) | (130, 0.0072) |
| HS578T | |||||
| (22) | (60, 0.0005) | (50, 0.0022) | (70, 0.0024) | (60, 0.0024) | (30, 0.0037) |
| MDA-MB-231 | |||||
| (32) | (40, 0.0007) | (40, 0.0007) | (25, 0.0007) | (35, 0.0013) | (25, 0.0039) |
| MDA-MB-468 | |||||
| (10) | (95, 0.0047) | (95, 0.0047) | (155, 0.0062) | (155, 0.0062) | (90, 0.0164) |
| MFM-223 | |||||
| (13) | (50, 0.0043) | (45, 0.0043) | (35, 0.0043) | (40, 0.0126) | (25, 0.0171) |
Figure 2KAR identifies relationships in kinase dependency in TNBC. A. Hierarchical clustering ofTNBC cell lines and kinases based on scaled kinase dependency scores. Each column was normalized to give a mean of 0 and a standard definition of 1. Red indicates that a cell line has a high dependence on a given kinase and blue indicates low dependence. Mutation and subtype information are also provided [1]. B. Hierarchical clustering of TNBC cell lines based on kinase inhibitor sensitivity data (from [23]). Clustering based on kinase inhibitor sensitivity resulted in different groupings compared to kinase dependency score. Red indicates that a cell line has higher sensitivity to a particular kinase inhibitor (lower IC50) and blue indicates lower sensitivity (higher IC50).
To 5 kinase inhibitors predicted by K-Map for the 12 TNBC lines.
| Top 5 Drugs (Score) ranked by K-Map | |||||
|---|---|---|---|---|---|
| TNBC Cell Line | Rank 1 | Rank 2 | Rank 3 | Rank 4 | Rank 5 |
| BT20 | Staurosporine | Bosutinib | Go 6976 | TWS119 | PKR Inhibitor |
| (1.00) | (0.976) | (0.972) | (0.963) | (0.953) | |
| BT549 | Staurosporine | K-252a | SB 218078 | CDK1/2 Inhibitor III | Go 6976 |
| (1.00) | (1.00) | (0.997) | (0.995) | (0.995) | |
| CAL148 | Lestaurtinib | K-252a | Staurosporine | JAK3 Inhibitor VI | CDK1/2 Inhibitor III |
| (1.00) | (1.00) | (1.00) | (0.996) | (0.994) | |
| HCC38 | Staurosporine | K-252a | CDK1/2 Inhibitor III | SB 218078 | Go 6976 |
| (1.00) | (1.00) | (0.995) | (0.991) | (0.989) | |
| HCC70 | Lestaurtinib | Staurosporine | CDK1/2 Inhibitor III | K-252a | SB 218078 |
| (1.00) | (1.00) | (0.998) | (0.998) | (0.983) | |
| HCC1143 | JNK Inhibitor II | CDK4 Inhibitor III | CDK4 Inhibitor II | VEGFR Receptor Inhibitor II | CHK2 Inhibitor II |
| (0.977) | (0.943) | (0.938) | (0.936) | (0.929) | |
| HCC1187 | Staurosporine | CDK1/2 Inhibitor III | JAK3 Inhibitor VI | JNJ-7706621 | PKR Inhibitor |
| (1.00) | (0.998) | (0.990) | (0.973) | (0.971) | |
| HCC1806 | Bosutinib | TWS119 | Staurosporine | Dasatinib | WHI-P154 |
| (1.00) | (0.990) | (0.98) | (0.966) | (0.956) | |
| HS578T | Staurosporine | SU11652 | K-252a | Sunitinib | Dorsomorphin |
| (1.00) | (0.992) | (0.986) | (0.984) | (0.982) | |
| MDA-MB-231 | CDK1/2 Inhibitor III | Indirubin Derivative E804 | Sunitinib | Aminopurvalanol A | CDK2 Inhibitor IV |
| (1.00) | (0.975) | (0.956) | (0.949) | (0.94) | |
| MDA-MB-468 | Lestaurtinib | Staurosporine | CDK1/2 Inhibitor III | K-252a | JAK3 Inhibitor VI |
| (1.00) | (1.00) | (0.998) | (0.998) | (0.99) | |
| MFM-223 | Staurosporine | CDK1/2 Inhibitor III | K-252a | JAK3 Inhibitor VI | SYK Inhibitor |
| (1.00) | (1.00) | (0.99) | (0.974) | (0.972) | |
Figure 3Validation of bosutinib and erlotinib in TNBC cell line HCC1806. A. Cell viability (mean +/- SE) dose response for bosutinib and erlotinib in HCC1806. B. Estimation of the IC50 for bosutinib and erlotinib in HCC1806. HCC1806 was much more sensitive to bosutinib than erlotinib. While both compounds target EGFR (KAR rank = 3), bosutinib targets other top ranking kinases by KAR: YES1, TNK2, MAP4K4, and LYN.