Successive next generation sequencing strategy for optimal fusion gene detection in non-small-cell lung cancer in clinical practice

Simon Garinet, Audrey Lupo,Thomas Denize, Romain Loyaux, Sarah Timsit, Benoit Gazeau, Elizabeth Fabre, Zineb Maaradji,Laure Gibault, Etienne Giroux-Leproeir, Boris Duchemann,Isabelle Monnet, Stéphane Jouveshomme,Mihaela Aldea, Benjamin Besse,Françoise Le Pimpec-Barthes, Karen Leroy,Marie Wislez,Hélène Blons

Pathology(2024)

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摘要
Metastatic non-small-cell lung cancer (NSCLC) displays various molecular alterations in the RAS-MAPK pathway. In particular, NSCLCs show high rates of targetable gene fusion in ALK, RET, ROS1, NRG1 and NTRK, or MET exon14 skipping. Rapid and accurate detection of gene fusion along EGFR/KRAS/BRAF mutations is important for treatment selection especially for first-line indications. RNA-based next generation sequencing (NGS) panels appear to be the most appropriate as all targets are multiplexed in a single run. While comprehensive NGS panels remain costly for daily practice, optimal sequencing strategies using targeted DNA/RNA panel approaches need to be validated. Here, we describe our lung cancer screening strategy using DNA and RNA targeted approaches in a real-life cohort of 589 NSCLC patients addressed for molecular testing. Gene fusions were analysed in 174 patients negative for oncogene driver mutations or ALK immunohistochemistry in a two-step strategy. Targetable alterations were identified in 28% of contributive samples. Non-smokers had a 63.7% probability to have a targetable alteration as compared to 21.5% for smokers. Overall survival was significantly higher (p=0.03) for patients who received a molecularly matched therapy. Our study shows the feasibility in routine testing of NSCLC DNA/RNA molecular screening for all samples in a cost- and time-controlled manner. The significant high fusion detection rate in patients with wild-type RAS-MAPK tumours highlights the importance of amending testing strategies in NSCLC.
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关键词
NSCLC,fusion transcripts,molecular testing
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