Comparing modeling strategies combining changes in multiple serum tumor biomarkers for early prediction of immunotherapy non-response in non-small cell lung cancer

Author:

van Delft Frederik A.1ORCID,Schuurbiers Milou M.F.2,Muller Mirte3,Burgers Sjaak A.3,van Rossum Huub H.4,IJzerman Maarten J.1567ORCID,van den Heuvel Michel M.2,Koffijberg Hendrik1

Affiliation:

1. Health Technology and Services Research Department, Technical Medical Centre, University of Twente, Enschede, The Netherlands

2. Department of Respiratory Diseases, Radboud University Medical Center, Nijmegen, the Netherlands

3. Department of Thoracic Oncology, Netherlands Cancer Institute, Amsterdam, The Netherlands

4. Department of Laboratory Medicine, Netherlands Cancer Institute, Amsterdam, The Netherlands

5. Erasmus School of Health Policy and Management, Rotterdam, The Netherlands

6. Centre for Cancer Research and Centre for Health Policy, University of Melbourne, Parkville, Melbourne, Australia

7. Peter MacCallum Cancer Centre, Parkville, Melbourne, Australia

Abstract

BACKGROUND: Patients treated with immune checkpoint inhibitors (ICI) are at risk of adverse events (AEs) even though not all patients will benefit. Serum tumor markers (STMs) are known to reflect tumor activity and might therefore be useful to predict response, guide treatment decisions and thereby prevent AEs. OBJECTIVE: This study aims to compare a range of prediction methods to predict non-response using multiple sequentially measured STMs. METHODS: Nine prediction models were compared to predict treatment non-response at 6-months (n = 412) using bi-weekly CYFRA, CEA, CA-125, NSE, and SCC measurements determined in the first 6-weeks of therapy. All methods were applied to six different biomarker combinations including two to five STMs. Model performance was assessed based on sensitivity, while model training aimed at 95% specificity to ensure a low false-positive rate. RESULTS: In the validation cohort, boosting provided the highest sensitivity at a fixed specificity across most STM combinations (12.9% –59.4%). Boosting applied to CYFRA and CEA achieved the highest sensitivity on the validation data while maintaining a specificity >95%. CONCLUSIONS: Non-response in NSCLC patients treated with ICIs can be predicted with a specificity >95% by combining multiple sequentially measured STMs in a prediction model. Clinical use is subject to further external validation.

Publisher

IOS Press

Subject

General Medicine

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