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Ideafix: a decision tree-based method for the refinement of variants in FFPE DNA sequencing data.

Maitena Tellaetxe-AbeteBorja CalvoCharles Lawrie
Published in: NAR genomics and bioinformatics (2021)
Increasingly, treatment decisions for cancer patients are being made from next-generation sequencing results generated from formalin-fixed and paraffin-embedded (FFPE) biopsies. However, this material is prone to sequence artefacts that cannot be easily identified. In order to address this issue, we designed a machine learning-based algorithm to identify these artefacts using data from >1 600 000 variants from 27 paired FFPE and fresh-frozen breast cancer samples. Using these data, we assembled a series of variant features and evaluated the classification performance of five machine learning algorithms. Using leave-one-sample-out cross-validation, we found that XGBoost (extreme gradient boosting) and random forest obtained AUC (area under the receiver operating characteristic curve) values >0.86. Performance was further tested using two independent datasets that resulted in AUC values of 0.96, whereas a comparison with previously published tools resulted in a maximum AUC value of 0.92. The most discriminating features were read pair orientation bias, genomic context and variant allele frequency. In summary, our results show a promising future for the use of these samples in molecular testing. We built the algorithm into an R package called Ideafix (DEAmination FIXing) that is freely available at https://github.com/mmaitenat/ideafix.
Keyphrases
  • machine learning
  • big data
  • copy number
  • artificial intelligence
  • deep learning
  • electronic health record
  • climate change
  • single molecule
  • circulating tumor
  • single cell
  • young adults
  • rna seq
  • current status