Objective
To determine if a combination of CT and demographic features can predict EGFR mutation status in bronchogenic carcinoma.
Methods
We reviewed demographic and CT features for patients with molecular profiling for resected non-small cell lung carcinoma. Using multivariate logistic regression, we identified features predictive of EGFR mutation. Prognostic factors identified from the logistic regression model were then used to build a more practical scoring system.
Results
A scoring system awarding 5 points for no or minimal smoking history, 3 points for tumours with ground glass component, 3 points for airbronchograms, 2 points for absence of preoperative evidence of nodal enlargement or metastases and 1 point for doubling time of more than a year, resulted in an AUROC of 0.861. A total score of at least 8 yielded a specificity of 95 %. On multivariate analysis sex was not found to be predictor of EGFR status.
Conclusions
A weighted scoring system combining imaging and demographic data holds promise as a predictor of EGFR status. Further studies are necessary to determine reproducibility in other patient groups. A predictive score may help determine which patients would benefit from molecular profiling and may help inform treatment decisions when molecular profiling is not possible.
Key points• EGFR mutation-targeted chemotherapy for bronchogenic carcinoma has a high success rate.
• Mutation testing is not possible in all patients.
• EGFR associations include subsolid density, slow tumour growth and minimal/no smoking history.
• Demographic or imaging features alone are weak predictors of EGFR status.
• A scoring system, using imaging and demographic features, is more predictive.