2023
DOI: 10.1093/bioinformatics/btad694
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Improving the filtering of false positive single nucleotide variations by combining genomic features with quality metrics

Kazım Kıvanç Eren,
Esra Çınar,
Hamza U Karakurt
et al.

Abstract: Motivation Technical errors in sequencing or bioinformatics steps and difficulties in alignment at some genomic sites result in false positive (FP) variants. Filtering based on quality metrics is a common method for detecting FP variants, but setting thresholds to reduce FP rates may reduce the number of true positive variants by overlooking the more complex relationships between features. The goal of this study is to develop a machine learning-based model for identifying FPs that integrates … Show more

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