| Literature DB >> 27756306 |
Bernard Omolo1, Mingli Yang2, Fang Yin Lo3, Michael J Schell4, Sharon Austin3, Kellie Howard3, Anup Madan3, Timothy J Yeatman5.
Abstract
BACKGROUND: The KRAS gene is mutated in about 40 % of colorectal cancer (CRC) cases, which has been clinically validated as a predictive mutational marker of intrinsic resistance to anti-EGFR inhibitor (EGFRi) therapy. Since nearly 60 % of patients with a wild type KRAS fail to respond to EGFRi combination therapies, there is a need to develop more reliable molecular signatures to better predict response. Here we address the challenge of adapting a gene expression signature predictive of RAS pathway activation, created using fresh frozen (FF) tissues, for use with more widely available formalin fixed paraffin-embedded (FFPE) tissues.Entities:
Keywords: Colorectal cancer; FF (fresh-frozen); FFPE (formalin-fixed; Microarray; NanoString; Paraffin embedded); RAS pathway signature; RNASeq
Mesh:
Substances:
Year: 2016 PMID: 27756306 PMCID: PMC5069826 DOI: 10.1186/s12920-016-0225-2
Source DB: PubMed Journal: BMC Med Genomics ISSN: 1755-8794 Impact factor: 3.063
Fig. 1Flow-chart of the procedure followed in the pre-processing and analysis of the data. Six datasets (1 FF and 5 FFPE, each with 54 samples and 18 genes) underwent quality control procedures before analysis. Thirty-nine [39] “good” samples and 16 “good” genes were retained. Correlation analyses were performed using mean scores from the sample pairs. The predictive ability of the 16–gene set was validated using the Affymetrix FF, Affymetrix FFPE and NanoString gene expression data, by the PAM method
Spearman correlations for the 18-gene RAS signature scores among six datasets, including Affy_FF, NanoS_FFPE, RNA-Acc_FFPE, t-RNA_FFPE, and rRNA_ FFPE on 54 and 39 samples
| Mean Score | Affy FF | Affy FFPE | NanoS FFPE | RNA-Acc FFPE | t-RNA FFPE | rRNA FFPE |
|---|---|---|---|---|---|---|
| A. 54 samples | ||||||
| Affy FF | 1 | 0.233 (0.090) | 0.608 (<0.0001) | 0.175 (0.207) | −0.237 (0.085) | −0.012 (0.934) |
| Affy FFPE | 1 | 0.399 (0.003) | 0.760 (<0.0001) | 0.278 (0.042) | 0.260 (0.058) | |
| NanoS FFPE | 1 | 0.473 (0.0003) | −0.207 (0.134) | 0.033 (0.814) | ||
| RNA-Acc FFPE | 1 | 0.262 (0.056) | 0.225 (0.102) | |||
| t-RNA FFPE | 1 | 0.142 (0.306) | ||||
| rRNA FFPE | 1 | |||||
| B. 39 samples | ||||||
| Affy FF | 1 | 0.556 (0.0002) | 0.631 (<0.0001) | 0.261 (0.109) | −0.287 (0.076) | 0.123 (0.455) |
| Affy FFPE | 1 | 0.832 (<0.0001) | 0.778 (<0.0001) | 0.006 (0.973) | 0.091 (0.581) | |
| NanoS FFPE | 1 | 0.733 (<0.0001) | −0.177 (0.282) | 0.099 (0.551) | ||
| RNA-Acc FFPE | 1 | 0.043 (0.797) | 0.090 (0.587) | |||
| t-RNA FFPE | 1 | −0.071 (0.668) | ||||
| rRNA FFPE | 1 | |||||
Fig. 2Scatterplot of the second vs. first principal component (PC2 vs PC1) for the 54 Affymetrix FFPE samples. The 15 “bad” samples (with low PC1 scores) are colored red and were excluded from subsequent analyses. Each sample was labeled using the last 3 digits of its name (barcode)
Fig. 3Scatterplots of the Affymetrix FF vs. Affymetrix FFPE (a) and NanoString FFPE (b) mean scores for the 54 samples. The red circles represent the 15 samples with “poor” RNA quality
Spearman correlations for the 16-gene RAS signature scores among six datasets, including Affy_FF, NanoS_FFPE, RNA-Acc_FFPE, rRNA_FFPE, and t-RNA_ FFPE on 54 and 39 samples
| Mean Score | AffyFF | Affy FFPE | NanoS FFPE | RNA-Acc FFPE | t-RNA FFPE | rRNA FFPE |
|---|---|---|---|---|---|---|
| A. 54 samples | ||||||
| Affy FF | 1 | 0.300 (0.028) | 0.707 (<0.0001) | 0.264 (0.054) | −0.195 (0.157) | 0.019 (0.890) |
| Affy FFPE | 1 | 0.361 (0.007) | 0.773 (<0.0001) | 0.296 (0.030) | 0.369 (0.006) | |
| NanoS FFPE | 1 | 0.487 (0.0002) | −0.155 (0.264) | 0.039 (0.779) | ||
| RNA-Acc FFPE | 1 | 0.262 (0.056) | 0.295 (0.031) | |||
| t-RNA FFPE | 1 | 0.194 (0.159) | ||||
| rRNA FFPE | 1 | |||||
| B. 39 samples | ||||||
| Affy FF | 1 | 0.672 (<0.0001) | 0.738 (<0.0001) | 0.483 (0.002) | −0.228 (0.163) | 0.174 (0.290) |
| Affy FFPE | 1 | 0.845 (<0.0001) | 0.754 (<0.0001) | 0.014 (0.934) | 0.170 (0.301) | |
| NanoS FFPE | 1 | 0.802 (<0.0001) | −0.096 (0.560) | 0.150 (0.361) | ||
| RNA-Acc FFPE | 1 | 0.053 (0.750) | 0.182 (0.269) | |||
| t-RNA FFPE | 1 | −0.018 (0.915) | ||||
| rRNA FFPE | 1 | |||||
Performance of the 16-gene PAM classifier on the 54 samples
| Validation dataset | Class | Sensitivitya | Specificityb | LOOCV error rate |
|---|---|---|---|---|
| Affy FF | Mut | 0.852 = 23/27 | 0.778 = 21/27 | 19 % |
| NanoS_FFPE | Mut | 0.704 = 19/27 | 0.741 = 20/27 | 28 % |
| Affy_FFPE | Mut | 0.519 = 14/27 | 0.889 = 24/27 | 30 % |
Note: Samples were classified as either KRAS/BRAF mutant (Mut, n = 27) or KRAS/BRAF wild-type (WT, n = 27). Class prediction was performed using the Affy_FF, Affy_FFPE and NanoS_FFPE samples sets
a = number of predicted mutants divided by number of true mutants
b = number of predicted WT divided by number of true WT
Genes in the predictive models of the 54-tissue PAM analyses
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| NanoS_FFPE |
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| Affy_FFPE |
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Note: DUSP4 and ETV5 are the most common genes in the predictive models