| Literature DB >> 21858063 |
Shang-Gin Wu1, Yih-Leong Chang, Jou-Wei Lin, Chen-Tu Wu, Hsuan-Yu Chen, Meng-Feng Tsai, Yung-Chie Lee, Chong-Jen Yu, Jin-Yuan Shih.
Abstract
Epidermal growth factor receptor (EGFR) is a novel target for therapy in subsets of non-small cell lung cancer, especially adenocarcinoma. Tumors with EGFR mutations showed good response to EGFR tyrosine kinase inhibitors (TKIs). We aimed to identify the discriminating capacity of immunohistochemical (IHC) scoring to detect L858R and E746-A750 deletion mutation in lung adenocarcinoma patients and predict EGFR TKIs response. Patients with surgically resected lung adenocarcinoma were enrolled. EGFR mutation status was genotyped by PCR and direct sequencing. Mutation-specific antibodies for L858R and E746-A750 deletion were used for IHC staining. Receiver operating characteristic (ROC) curves were used to determine the capacity of IHC, including intensity and/or quickscore (Q score), in differentiating L858R and E746-A750 deletion. We enrolled 143 patients during September 2000 to May 2009. Logistic-regression-model-based scoring containing both L858R Q score and total EGFR expression Q score was able to obtain a maximal area under the curve (AUC: 0.891) to differentiate the patients with L858R. Predictive model based on IHC Q score of E746-A750 deletion and IHC intensity of total EGFR expression reached an AUC of 0.969. The predictive model of L858R had a significantly higher AUC than L858R intensity only (p = 0.036). Of the six patients harboring complex EGFR mutations with classical mutation patterns, five had positive IHC staining. For EGFR TKI treated cancer recurrence patients, those with positive mutation-specific antibody IHC staining had better EGFR TKI response (p = 0.008) and longer progression-free survival (p = 0.012) than those without. In conclusion, total EGFR expression should be included in the IHC interpretation of L858R. After adjusting for total EGFR expression, the scoring method decreased the false positive rate and increased diagnostic power. According to the scoring method, the IHC method is useful to predict the clinical outcome and refine personalized therapy.Entities:
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Year: 2011 PMID: 21858063 PMCID: PMC3153495 DOI: 10.1371/journal.pone.0023303
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Clinical characteristics and EGFR DNA sequencing results.
| Variable | Total patients | (%) | |
|
| 143 | 100 | |
|
| 65.2 | ||
|
| (27.2–86.9) | ||
|
| |||
|
| 72 | 50.3 | |
|
| 71 | 49.7 | |
|
| |||
|
| 94 | 65.7 | |
|
| 49 | 34.3 | |
|
| |||
|
| 74 | 51.7 | |
|
| 21 | 14.7 | |
|
| 46 | 32.2 | |
|
| 2 | 1.4 | |
|
| |||
|
| 31 | 21.7 | |
|
| 10 | 7.0 | |
|
| 43 | 30.1 | |
|
| 8 | 5.6 | |
|
| 50 | 35.0 |
*Including: two L858R+V834L, one L858R+E709V, one L858R+T790M and one L858R+ K757N.
#Including: two L861Q, one E709K+G719A, one E709K+G719S, one G719A+L861Q, one N771-H773 dupNPH, one K860I+861Q, and one R831C+L861R.
<$>\raster="rg1"<$>Two patients received cranial tumor excision for solitary brain metastasis and lobectomy for a pulmonary nodule.
Figure 1Immunohistochemical stain of lung adenocarcinoma.
Control pan-cytokeratin antibody stains all tissue samples regardless of EGFR mutation status. Case 1. A sample with wild-type EGFR was not stained with total EGFR, L858R and delE746-A750 antibodies. Case 2. A sample with delE746-A750 was stained with both total EGFR and delE746-A750 specific antibody. Case 3. A sample with L858R was stained with both total EGFR and L858R specific antibody. Case 4. A sample with wild-type EGFR was stained with moderate intensity of total EGFR and mild intensity of L858R specific antibody.
The diagnostic power of immunohistochemical scoring methods for predicting L858R and E746-A750 deletion by EGFR mutation-specific antibodies.
| Item | ROC area (95% CI) | Optimal cut-off point | ||||||
| Sensitivity | Specificity | PPV | NPV | LR+ | LR- | Diagnosticaccuracy | ||
|
| 0.853(0.785–0.922) | 76.7% | 82.0% | 64.7% | 89.1% | 4.261 | 0.284 | 80.4% |
|
| 0.867(0.801–0.933) | 81.4% | 78.0% | 61.4% | 90.7% | 3.700 | 0.238 | 79.0% |
|
| 0.859(0.788–0.931) | 79.1% | 80.0% | 63.0% | 89.9% | 3.955 | 0.261 | 79.7% |
|
| 0.876(0.811–0.941) | 86.0% | 78.0% | 62.7% | 92.9% | 3.909 | 0.179 | 80.4% |
|
| 0.862(0.790–0.934) | 88.4% | 76.0% | 61.3% | 93.8% | 3.683 | 0.153 | 79.7% |
|
| 0.891(0.830–0.953) | 88.4% | 77.0% | 62.3% | 93.9% | 3.843 | 0.151 | 80.4% |
|
| 0.958(0.000–1.000) | 93.5% | 94.6% | 82.9% | 98.1% | 17.315 | 0.069 | 94.4% |
|
| 0.960(0.000–1.000) | 93.5% | 94.6% | 82.9% | 98.1% | 17.315 | 0.069 | 94.4% |
|
| 0.950(0.871–1.000) | 93.5% | 95.5% | 85.3% | 98.2% | 20.778 | 0.068 | 95.1% |
|
| 0.958(0.897–1.000) | 93.5% | 95.5% | 85.3% | 98.2% | 20.778 | 0.068 | 95.1% |
|
| 0.969(0.915–1.000) | 93.5% | 94.6% | 82.9% | 98.1% | 17.315 | 0.069 | 94.4% |
|
| 0.959(0.890–1.000) | 93.5% | 95.5% | 85.3% | 98.2% | 20.778 | 0.068 | 95.1% |
ROC = receiver operating characteristic, CI = confidence interval, PPV = positive predictive value, NPV = negative predictive value, LR+ = positive likelihood ratio, LR- = negative likelihood ratio.
The optimal cut-off point was defined as the one with the least (1 - sensitivity)2 + (1 - specificity)2.
*Logistic regression model to evaluate the predicted probability of the interaction between the two IHC scoring system.
Comparison of results of EGFR mutation-specific antibodies and DNA direct sequencing.
| IHC for L858R and E746-A750 (N = 143) | |||
| IHC L858R | DNA sequencing for L858R | ||
| L858R | Non-L858R | Total | |
|
| 38 | 23 | 61 |
|
| 5 | 77 | 82 |
|
| 43 | 100 | 143 |
The detection accuracy for the EGFR mutation-specific antibodies.
| Genotype | Sensitivity (%) | Specificity (%) | PPV(%) | NPV(%) |
|
| 88.4% | 77.0% | 62.3% | 93.9% |
|
| 93.5% | 94.6% | 82.9% | 98.1% |
|
| 73.2% | 95.1% | 85.7% | 89.8% |
|
| 90.5% | 73.9% | 78.8% | 87.9% |
|
| 83.3% | 74.6% | 82.4% | 75.9% |
PPV: positive predictive value; NPV: negative predictive value.
Figure 2Receiver–operator characteristic (ROC) curve of EGFR mutation-specific antibodies IHC in predicting L858R or E746-A750.
(A) AUC for the logistic regression model based on L858R Q score and total EGFR expression Q score was higher than that for L858R intensity only (0.891 vs. 0.853; p = 0.036). (B) the logistic regression model based on delE746-A750 Q score and total EGFR expression intensity had a trend of higher AUC than that for delE746-A750 intensity only (0.969 vs. 0.958; p = 0.087). AUC: area under the ROC curve.
Figure 3Kaplan-Meier survival curve of progression-free survival after EGFR TKIs.
The patients with tumors with positive stains of EGFR mutation (solid line, N = 22) had a longer progression-free survival than those with negative stains of EGFR mutation (dashed, N = 17) (median, 12.0 months vs. 4.7 months; p = 0.012, by the log-rank test).
Multivariate analysis of progression-free survival of the 37 adenocarcinoma patients treated with EGFR TKIs.
| Factors | PatientNumber | Univariate analysis | Multivariate analysis | |
|
| HR(95% CI) |
| ||
|
| ||||
|
| 19 | |||
|
| 18 | 0.841 | 1.04(0.22–4.88) | 0.963 |
|
| ||||
|
| 23 | |||
|
| 14 | 0.776 | 0.88(0.17–4.46) | 0.873 |
|
| ||||
|
| 28 | |||
|
| 9 | 0.001 | 5.52(2.04–14.95) | 0.001 |
|
| ||||
|
| 15 | |||
|
| 22 | 0.012 | 0.29(0.12–0.68) | 0.004 |
|
| ||||
|
| 7 | |||
| ≥ | 30 | 0.939 | 2.27(0.80–6.48) | 0.126 |
EGFR = epidermal growth factor receptor, ECOG PS = Eastern Cooperative Oncology Group performance status, HR = hazard ratio, CI = confidence interval.
*Positive of EGFR IHC was according to our scoring method with the best AUC.