| Literature DB >> 23590835 |
Yi-Chiung Hsu1, Hsuan-Yu Chen, Shinsheng Yuan, Sung-Liang Yu, Chia-Hung Lin, Guani Wu, Pan-Chyr Yang, Ker-Chau Li.
Abstract
BACKGROUND: Chemosensitivity and tumor metastasis are two primary issues in cancer management. Cancer cells often exhibit a wide range of sensitivity to anti-cancer compounds. To gain insight on the genetic mechanism of drug sensitivity, one powerful approach is to employ the panel of 60 human cancer cell lines developed by the National Cancer Institute (NCI). Cancer cells also show a broad range of invasion ability. However, a genome-wide portrait on the contributing molecular factors to invasion heterogeneity is lacking.Entities:
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Year: 2013 PMID: 23590835 PMCID: PMC3635895 DOI: 10.1186/1741-7015-11-106
Source DB: PubMed Journal: BMC Med ISSN: 1741-7015 Impact factor: 8.775
Figure 1A schematic diagram illustrating the design of this study.
Figure 2Invasion profiling of NCI60 cancer cell lines. Cell lines are divided into groups by their tissue origin. Each dot in each tissue group gives the invaded cell counts by the matrigel invasion assay for one cell line (n = 3). Dotted lines indicate the mean of invasion cell counts for all cell lines in each tissue group.
Figure 3Heat map for the expression of IA genes. Cell lines are ordered according to the invasion ability (measured by ICC) with the highest ICC placed leftmost. The genes in the top panel have negative correlations with invasion while the genes in the bottom panel have positive correlations.
Figure 4The distribution of drug-sensitivity-correlated IA probes. (A) The number of IA probes with significant (P <0.05) gene-drug correlation with each anti-cancer compound is plotted according to the grouping of the drug mechanism. The dotted line gives the mean of the probe counts in each group. (B) The numbers of significant IA probes in tubulin-binding agents and targeted therapy agents.
Figure 5Heatmap of gene-drug correlation. (A) Heatmap showing the gene-drug correlations for tubulin-binding and targeted therapy agents. (B) The specific pattern for the eight-gene signature enlarged from A. Blue, negative correlation; red, positive correlation.
Figure 6Plots of the eight-gene risk scores between drug-sensitive and drug-resistant groups of cell lines. The dotted line indicated the mean of each group.
Figure 7Kaplan–Meier survival curves for survival analysis of the eight-predicted genes in (A) lung cancer and (B) breast cancer cohorts.
Multivariate Cox regression analysis of the eight-gene signature for predicting relapse-free survival in cancer patients
| | | | |
| Eight-gene signature | 5.33 | 1.76 to 16.1 | |
| Age | 1.05 | 1.00 to 1.11 | 0.060 |
| Gender (Male vs Female) | 1.33 | 0.48 to 3.68 | 0. 581 |
| Stage (1 vs 2) | 2.69 | 1.12 to 6.45 | |
| Histology Type | 1.45 | 0.56 to 3.73 | 0.443 |
| Eight-gene signature | 1.81 | 1.19 to 2.76 | |
| Age (>50 vs ≦50) | 1.04 | 0.70 to 1.56 | 0.834 |
| Clinical nodal status (positive vs negative) | 2.47 | 1.45 to 4.18 | |
| Clinical tumor stage (T3 or T4 vs T1 or T2) | 1.80 | 1.20 to 2.70 | |
| ER status (IHC positive vs negative) | 0.44 | 0.29 to 0.67 | |
* A total of 46 patients were excluded from the multivariate analysis due to incomplete data in the breast cancer cohort.