Combining gene expression profiling and machine learning to diagnose B-cell non-Hodgkin lymphoma.

Journal: Blood cancer journal
PMID:

Abstract

Non-Hodgkin B-cell lymphomas (B-NHLs) are a highly heterogeneous group of mature B-cell malignancies. Their classification thus requires skillful evaluation by expert hematopathologists, but the risk of error remains higher in these tumors than in many other areas of pathology. To facilitate diagnosis, we have thus developed a gene expression assay able to discriminate the seven most frequent B-cell NHL categories. This assay relies on the combination of ligation-dependent RT-PCR and next-generation sequencing, and addresses the expression of more than 130 genetic markers. It was designed to retrieve the main gene expression signatures of B-NHL cells and their microenvironment. The classification is handled by a random forest algorithm which we trained and validated on a large cohort of more than 400 annotated cases of different histology. Its clinical relevance was verified through its capacity to prevent important misclassification in low grade lymphomas and to retrieve clinically important characteristics in high grade lymphomas including the cell-of-origin signatures and the MYC and BCL2 expression levels. This accurate pan-B-NHL predictor, which allows a systematic evaluation of numerous diagnostic and prognostic markers, could thus be proposed as a complement to conventional histology to guide the management of patients and facilitate their stratification into clinical trials.

Authors

  • Victor Bobée
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France.
  • Fanny Drieux
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France.
  • Vinciane Marchand
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France.
  • Vincent Sater
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France.
  • Liana Veresezan
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France.
  • Jean-Michel Picquenot
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France.
  • Pierre-Julien Viailly
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France.
  • Marie-Delphine Lanic
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France.
  • Mathieu Viennot
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France.
  • Elodie Bohers
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France.
  • Lucie Oberic
    Department of Hematology, IUCT - Oncopole, Toulouse, France.
  • Christiane Copie-Bergman
    Department of Pathology, Henri Mondor Hospital, APHP, Paris Est-Créteil (UPEC) University Faculty, UMR-S 955, INSERM, Créteil, France.
  • Thierry Jo Molina
    Department of Pathology, Necker-Enfants Malades Hospital, AP-HP, Centre-Université de Paris, Paris, France.
  • Philippe Gaulard
    Department of Pathology, Henri Mondor Hospital, APHP, Paris Est-Créteil (UPEC) University Faculty, UMR-S 955, INSERM, Créteil, France.
  • Corinne Haioun
    Department of Hematology, Henri Mondor University Hospital, APHP, Creteil, France.
  • Gilles Salles
    Hospices Civils de Lyon, Department of Hematology, Université de Lyon, INSERM 1052, Lyon, France.
  • Hervé Tilly
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France.
  • Fabrice Jardin
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France.
  • Philippe Ruminy
    INSERM U1245, Centre Henri Becquerel, UNIROUEN, University of Normandie, Rouen, France. philippe.ruminy@chb.unicancer.fr.