Author:
Jongbloed Elisabeth M.,Jansen Maurice P. H. M.,de Weerd Vanja,Helmijr Jean A.,Beaufort Corine M.,Reinders Marcel J. T.,van Marion Ronald,van IJcken Wilfred F. J.,Sonke Gabe S.,Konings Inge R.,Jager Agnes,Martens John W. M.,Wilting Saskia M.,Makrodimitris Stavros
Abstract
AbstractNext generation sequencing of cell-free DNA (cfDNA) is a promising method for treatment monitoring and therapy selection in metastatic breast cancer (MBC). However, distinguishing tumor-specific variants from sequencing artefacts and germline variation with low false discovery rate is challenging when using large targeted sequencing panels covering many tumor suppressor genes. To address this, we built a machine learning model to remove false positive variant calls and augmented it with additional filters to ensure selection of tumor-derived variants. We used cfDNA of 70 MBC patients profiled with both the small targeted Oncomine breast panel (Thermofisher) and the much larger Qiaseq Human Breast Cancer Panel (Qiagen). The model was trained on the panels’ common regions using Oncomine hotspot mutations as ground truth. Applied to Qiaseq data, it achieved 35% sensitivity and 36% precision, outperforming basic filtering. For 20 patients we used germline DNA to filter for somatic variants and obtained 245 variants in total, while our model found seven variants, of which six were also detected using the germline strategy. In ten tumor-free individuals, our method detected in total one (potentially germline) variant, in contrast to 521 variants detected without our model. These results indicate that our model largely detects somatic variants.
Funder
Dutch CAA Foundation
Breast Cancer Now’s Catalyst Programme
Convergence Health and Technology program of Erasmus University Medical Center and Delft University of Technology
Publisher
Springer Science and Business Media LLC
Cited by
1 articles.
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