Literature DB >> 32036085

Analytical Performance of an Immunoprofiling Assay Based on RNA Models.

Ian Schillebeeckx1, Jon R Armstrong2, Jason T Forys1, Jeffrey Hiken1, Jon Earls1, Kevin C Flanagan1, Tiange Cui1, Jarret I Glasscock1, David N Messina1, Eric J Duncavage3.   

Abstract

As immuno-oncology drugs grow more popular in the treatment of cancer, better methods are needed to quantify the tumor immune cell component to determine which patients are most likely to benefit from treatment. Methods such as flow cytometry can accurately assess the composition of infiltrating immune cells; however, they show limited use in formalin-fixed, paraffin-embedded (FFPE) specimens. This article describes a novel hybrid-capture RNA sequencing assay, ImmunoPrism, that estimates the relative percentage abundance of eight immune cell types in FFPE solid tumors. Immune health expression models were generated using machine learning methods and used to uniquely identify each immune cell type using the most discriminatively expressed genes. The analytical performance of the assay was assessed using 101 libraries from 40 FFPE and 32 fresh-frozen samples. With defined samples, ImmunoPrism had a precision of ±2.72%, a total error of 2.75%, and a strong correlation (r2 = 0.81; P < 0.001) to flow cytometry. ImmunoPrism had similar performance in dissociated tumor cell samples (total error of 8.12%) and correlated strongly with immunohistochemistry (CD8: r2 = 0.83; P < 0.001) in FFPE samples. Other performance metrics were determined, including limit of detection, reportable range, and reproducibility. The approach used for analytical validation is shared here so that it may serve as a helpful framework for other laboratories when validating future complex RNA-based assays.
Copyright © 2020 Association for Molecular Pathology and American Society for Investigative Pathology. Published by Elsevier Inc. All rights reserved.

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Year:  2020        PMID: 32036085     DOI: 10.1016/j.jmoldx.2020.01.009

Source DB:  PubMed          Journal:  J Mol Diagn        ISSN: 1525-1578            Impact factor:   5.568


  2 in total

1.  T cell subtype profiling measures exhaustion and predicts anti-PD-1 response.

Authors:  Ian Schillebeeckx; Jon Earls; Kevin C Flanagan; Jeffrey Hiken; Alex Bode; Jon R Armstrong; David N Messina; Douglas Adkins; Jessica Ley; Ilaria Alborelli; Philip Jermann; Jarret I Glasscock
Journal:  Sci Rep       Date:  2022-01-25       Impact factor: 4.379

2.  CD4+ T cell and M2 macrophage infiltration predict dedifferentiated liposarcoma patient outcomes.

Authors:  Brett A Schroeder; Natalie A LaFranzo; Bonnie J LaFleur; Rachel M Gittelman; Marissa Vignali; Shihong Zhang; Kevin C Flanagan; Julie Rytlewski; Laura Riolobos; Brian C Schulte; Teresa S Kim; Eleanor Chen; Kimberly S Smythe; Michael J Wagner; Jose G Mantilla; Jean S Campbell; Robert H Pierce; Robin L Jones; Lee D Cranmer; Seth M Pollack
Journal:  J Immunother Cancer       Date:  2021-08       Impact factor: 13.751

  2 in total

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