DeltaMSI: artificial intelligence-based modeling of microsatellite instability scoring on next-generation sequencing data.

Journal: BMC bioinformatics
PMID:

Abstract

BACKGROUND: DNA mismatch repair deficiency (dMMR) testing is crucial for detection of microsatellite unstable (MSI) tumors. MSI is detected by aberrant indel length distributions of microsatellite markers, either by visual inspection of PCR-fragment length profiles or by automated bioinformatic scoring on next-generation sequencing (NGS) data. The former is time-consuming and low-throughput while the latter typically relies on simplified binary scoring of a single parameter of the indel distribution. The purpose of this study was to use machine learning to process the full complexity of indel distributions and integrate it into a robust script for screening of dMMR on small gene panel-based NGS data of clinical tumor samples without paired normal tissue.

Authors

  • Koen Swaerts
    Department of Laboratory Medicine, AZ Delta General Hospital, Deltalaan 1, 8800, Roeselare, Belgium.
  • Franceska Dedeurwaerdere
    Department of Pathology, AZ Delta General Hospital, Roeselare, Belgium.
  • Dieter De Smet
    Department of Laboratory Medicine, AZ Delta General Hospital, Deltalaan 1, 8800, Roeselare, Belgium.
  • Peter De Jaeger
    RADar Innovation Center, AZ Delta General Hospital, Roeselare, Belgium.
  • Geert A Martens
    Department of Laboratory Medicine, AZ Delta General Hospital, Deltalaan 1, 8800, Roeselare, Belgium. geert.martens@azdelta.be.