Abstract

BackgroundBronchoscopy for suspected lung cancer has low diagnostic sensitivity, rendering many inconclusive results. The Bronchial Genomic Classifier (BGC) was developed to help with patient management by identifying those with low risk of lung cancer when bronchoscopy is inconclusive. The BGC was trained and validated on patients in the Airway Epithelial Gene Expression in the Diagnosis of Lung Cancer (AEGIS) trials. A modern patient cohort, the BGC Registry, showed differences in key clinical factors from the AEGIS cohorts, with less smoking history, smaller nodules and older age. Additionally, we discovered interfering factors (inhaled medication and sample collection timing) that impacted gene expressions and potentially disguised genomic cancer signals.MethodsIn this study, we leveraged multiple cohorts and next generation sequencing technology to develop a robust Genomic Sequencing Classifier (GSC). To address demographic composition shift and interfering factors, we synergized three algorithmic strategies: 1) ensemble of clinical dominant and genomic dominant models; 2) development of hierarchical regression models where the main effects from clinical variables were regressed out prior to the genomic impact being fitted in the model; and 3) targeted placement of genomic and clinical interaction terms to stabilize the effect of interfering factors. The final GSC model uses 1232 genes and four clinical covariates – age, pack-years, inhaled medication use, and specimen collection timing.ResultsIn the validation set (N = 412), the GSC down-classified low and intermediate pre-test risk subjects to very low and low post-test risk with a specificity of 45% (95% CI 37–53%) and a sensitivity of 91% (95%CI 81–97%), resulting in a negative predictive value of 95% (95% CI 89–98%). Twelve percent of intermediate pre-test risk subjects were up-classified to high post-test risk with a positive predictive value of 65% (95%CI 44–82%), and 27% of high pre-test risk subjects were up-classified to very high post-test risk with a positive predictive value of 91% (95% CI 78–97%).ConclusionsThe GSC overcame the impact of interfering factors and achieved consistent performance across multiple cohorts. It demonstrated diagnostic accuracy in both down- and up-classification of cancer risk, providing physicians actionable information for many patients with inconclusive bronchoscopy.

Highlights

  • Bronchoscopy for suspected lung cancer has low diagnostic sensitivity, rendering many inconclusive results

  • The Genomic Sequencing Classifier (GSC) overcame the impact of interfering factors and achieved consistent performance across multiple cohorts

  • A total of 1718 subjects with a suspicious lung nodule were enrolled in the AEGI S study and 576 subjects were enrolled in the Bronchial Genomic Classifier (BGC) Registry study (Additional file 1 Fig. S1) at the time of algorithm development

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Summary

Introduction

Bronchoscopy for suspected lung cancer has low diagnostic sensitivity, rendering many inconclusive results. The Bronchial Genomic Classifier (BGC) was developed to help with patient management by identifying those with low risk of lung cancer when bronchoscopy is inconclusive. The BGC was trained and validated on patients in the Airway Epithelial Gene Expression in the Diagnosis of Lung Cancer (AEGIS) trials. Using a microarray-based gene expression platform, the Bronchial Genomic Classifier (BGC) was originally developed to assess the risk of lung cancer in current and former smokers with a nondiagnostic bronchoscopy [4, 5]. Test performance was validated in two independent cohorts [4, 5]; and clinical utility of the BGC was demonstrated in the same cohorts [8] by modeling the potential reduction in invasive procedures among patients who were down-classified from intermediate pre-test to low post-test risk of lung cancer

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