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Diagnostic and Economic Value of Biomarker Testing for Targetable Mutations in Non-Small-cell Lung Cancer: a Literature Review

Ying Zheng,Helene Vioix,Frank X. Liu,Barinder Singh, Sakshi Sharma, Deepti Sharda

FUTURE ONCOLOGY(2022)

EMD Serono Inc

Cited 19|Views8
Abstract
We aimed to assess the diagnostic and economic value of next-generation sequencing (NGS) versus single-gene testing, and of liquid biopsy (LBx) versus tissue biopsy (TBx) in non-small-cell lung cancer biomarker testing through literature review. Embase and MEDLINE were searched to identify relevant studies (n = 43) from 2015 to 2020 in adults with advanced non-small-cell lung cancer. For NGS versus single-gene testing, concordance was 70-99% and sensitivity was 86-100%. For LBx versus TBx, specificity was 43-100% and sensitivity was ≥60%. Turnaround times were longer for NGS versus single-gene testing (but not vs sequential testing) and faster for LBx versus TBx. NGS was cost-effective, and LBx reduced US per-patient costs. NGS versus single-gene testing and LBx versus TBx were concordant. NGS and LBx may be cost-effective for initial screening.
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Key words
biomarker testing,cancer mutation,diagnostic value,economic value,literature review,non-small-cell lung cancer
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