Literature DB >> 30179888

nCounter NanoString Assay Shows Variable Concordance With Immunohistochemistry-based Algorithms in Classifying Cases of Diffuse Large B-Cell Lymphoma According to the Cell-of-Origin.

Ali G Saad1, Zakaria Grada2, Barbara Bishop3, Hend Abulsayen4, Mohamed Hassan5, Adolfo Firpo-Betancourt6, Julie Teruya-Feldstein6, Mostafa Fraig3, Siraj M El Jamal6.   

Abstract

Classifying diffuse large B-cell lymphoma (DLBCL) according to the cell-of-origin (COO) was first proposed using gene expression profiling; accordingly, DLBCL is classified into germinal-center B-cell type and activated B-cell type. Immunohistochemistry (IHC)-based classification using different algorithms is used widely due to the ability to use formalin-fixed paraffin-embedded tissue. Recently, newer techniques using RNA expression from formalin-fixed paraffin-embedded were introduced including the nCounter NanoString platform assay. In this brief report, we study the degree of concordance between the NanoString assay and 6 commonly utilized IHC-based algorithms to classify DLBCL cases by COO. Stains for CD10, BCL2, BCL6, FOXP-1, MUM-1, and LOM2 were used to classify a cohort of DLBCL by COO according to the respective IHC-algorithms. Then, RNA was extracted from the same cases for NanoString assay classification. The degree of concordance was calculated between the NanoString classification and each IHC-algorithm as well as among the different IHC-algorithm themselves. The concordance in COO classification of DLBCL between NanonoString assay and IHC-based algorithms is variable depending on the used IHC-algorithm; the highest concordance is seen with the Visco algorithm (κ=0.69; P=0.001). Therefore, discrepancies between the recently introduced NanoString assay and the commonly utilized IHC-algorithms are expected to some extent and should be taken into consideration when interpreting conflicting results.

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Year:  2019        PMID: 30179888     DOI: 10.1097/PAI.0000000000000696

Source DB:  PubMed          Journal:  Appl Immunohistochem Mol Morphol        ISSN: 1533-4058


  2 in total

1.  A refined cell-of-origin classifier with targeted NGS and artificial intelligence shows robust predictive value in DLBCL.

Authors:  Zijun Y Xu-Monette; Hongwei Zhang; Feng Zhu; Alexandar Tzankov; Govind Bhagat; Carlo Visco; Karen Dybkaer; April Chiu; Wayne Tam; Youli Zu; Eric D Hsi; Hua You; Jooryung Huh; Maurilio Ponzoni; Andrés J M Ferreri; Michael B Møller; Benjamin M Parsons; J Han van Krieken; Miguel A Piris; Jane N Winter; Fredrick B Hagemeister; Babak Shahbaba; Ivan De Dios; Hong Zhang; Yong Li; Bing Xu; Maher Albitar; Ken H Young
Journal:  Blood Adv       Date:  2020-07-28

2.  Cell-of-origin determined by both gene expression profiling and immunohistochemistry is the strongest predictor of survival in patients with diffuse large B-cell lymphoma.

Authors:  Maysaa Abdulla; Peter Hollander; Tatjana Pandzic; Larry Mansouri; Susanne Bram Ednersson; Per-Ola Andersson; Magnus Hultdin; Maja Fors; Martin Erlanson; Sofie Degerman; Helga Munch Petersen; Fazila Asmar; Kirsten Grønbaek; Gunilla Enblad; Lucia Cavelier; Richard Rosenquist; Rose-Marie Amini
Journal:  Am J Hematol       Date:  2019-11-07       Impact factor: 10.047

  2 in total

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