Glycomics meets artificial intelligence - Potential of glycan analysis for identification of seropositive and seronegative rheumatoid arthritis patients revealed

Clin Chim Acta. 2018 Jun:481:49-55. doi: 10.1016/j.cca.2018.02.031. Epub 2018 Feb 25.

Abstract

In this study, one hundred serum samples from healthy people and patients with rheumatoid arthritis (RA) were analyzed. Standard immunoassays for detection of 10 different RA markers and analysis of glycan markers on antibodies in 10 different assay formats with several lectins were applied for each serum sample. A dataset containing 2000 data points was data mined using artificial neural networks (ANN). We identified key RA markers, which can discriminate between healthy people and seropositive RA patients (serum containing autoantibodies) with accuracy of 83.3%. Combination of RA markers with glycan analysis provided much better discrimination accuracy of 92.5%. Immunoassays completely failed to identify seronegative RA patients (serum not containing autoantibodies), while glycan analysis correctly identified 43.8% of these patients. Further, we revealed other critical parameters for successful glycan analysis such as type of a sample, format of analysis and orientation of captured antibodies for glycan analysis.

Keywords: Biomarker; Feedforward artificial neural network; Glycan; Glycoprotein; Immunoassay; Lectin; Machine learning algorithm; Rheumatoid arthritis.

MeSH terms

  • Arthritis, Rheumatoid / blood*
  • Artificial Intelligence*
  • Autoantibodies / blood
  • Biomarkers / blood
  • Female
  • Glycomics*
  • Humans
  • Male
  • Middle Aged
  • Polysaccharides / blood*
  • Rheumatoid Factor / blood*

Substances

  • Autoantibodies
  • Biomarkers
  • Polysaccharides
  • Rheumatoid Factor