A gene expression assay for simultaneous measurement of microsatellite instability and anti-tumor immune activity

Abstract Background Clinical benefit from checkpoint inhibitors has been associated in a tumor-agnostic manner with two main tumor traits. The first is tumor antigenicity, which is typically measured by tumor mutation burden, microsatellite instability (MSI), or Mismatch Repair Deficiency using gene...

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Main Authors: Patrick Danaher, Sarah Warren, SuFey Ong, Nathan Elliott, Alessandra Cesano, Sean Ferree
Format: Article
Language:English
Published: BMJ Publishing Group 2019-01-01
Series:Journal for ImmunoTherapy of Cancer
Subjects:
MSI
TIS
Online Access:http://link.springer.com/article/10.1186/s40425-018-0472-1
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spelling doaj-6bc20fbb53a1452c80c8676d768857642020-11-25T00:41:49ZengBMJ Publishing GroupJournal for ImmunoTherapy of Cancer2051-14262019-01-017111210.1186/s40425-018-0472-1A gene expression assay for simultaneous measurement of microsatellite instability and anti-tumor immune activityPatrick Danaher0Sarah Warren1SuFey Ong2Nathan Elliott3Alessandra Cesano4Sean Ferree5NanoString Technologies®, IncNanoString Technologies®, IncNanoString Technologies®, IncNanoString Technologies®, IncNanoString Technologies®, IncNanoString Technologies®, IncAbstract Background Clinical benefit from checkpoint inhibitors has been associated in a tumor-agnostic manner with two main tumor traits. The first is tumor antigenicity, which is typically measured by tumor mutation burden, microsatellite instability (MSI), or Mismatch Repair Deficiency using gene sequence platforms and/or immunohistochemistry. The second is the presence of a pre-existing adaptive immune response, typically measured by immunohistochemistry (e.g. single analyte PD-L1 expression) and/or gene expression signatures (e.g. tumor “inflamed” phenotype). These two traits have been shown to provide independent predictive information. Here we investigated the potential of using gene expression to predict tumor MSI, thus enabling the measurement of both tumor antigenicity and the level of tumor inflammation in a single assay, possibly reducing sample requirement, turn-around time, and overall cost. Methods Using The Cancer Genome Atlas RNA-seq datasets with the greatest MSI-H incidence, i.e. those from colon (n = 208), stomach (n = 269), and endometrial (n = 241) cancers, we trained an algorithm to predict tumor MSI from under-expression of the mismatch repair genes MLH1, PMS2, MSH2, and MSH6 and from 10 additional genes with strong pan-cancer associations with tumor hypermutation. The algorithms were validated on the NanoString nCounter™ platform in independent cohorts of colorectal (n = 52), endometrial (n = 11), and neuroendocrine (n = 4) tumors pre-characterized using the MMR immunohistochemistry assay. Results In the validation cohorts, the algorithm showed high prediction accuracy of tumor MSI status, with sensitivity of at least 88% attained at thresholds chosen to achieve 100% specificity. Furthermore, MSI status was compared to the Tumor Inflammation Signature (TIS), an analytically validated diagnostic assay which measures a suppressed adaptive immune response in the tumor and enriches for response to immune checkpoint blockade. TIS score was largely independent of MSI status, suggesting that measuring both parameters may identify more patients that would respond to immune checkpoint blockade than either assay alone. Conclusions Development of a gene expression signature of MSI status raises the possibility of a combined diagnostic assay on a single platform which measures both tumor antigenicity and presence of a suppressed adaptive immune response. Such an assay would have significant advantages over multi-platform assays for both ease of use and turnaround time and could lead to a diagnostic test with improved clinical performance.http://link.springer.com/article/10.1186/s40425-018-0472-1MMRdMSIBiomarkerDiagnosticCheckpoint inhibitorsTIS
collection DOAJ
language English
format Article
sources DOAJ
author Patrick Danaher
Sarah Warren
SuFey Ong
Nathan Elliott
Alessandra Cesano
Sean Ferree
spellingShingle Patrick Danaher
Sarah Warren
SuFey Ong
Nathan Elliott
Alessandra Cesano
Sean Ferree
A gene expression assay for simultaneous measurement of microsatellite instability and anti-tumor immune activity
Journal for ImmunoTherapy of Cancer
MMRd
MSI
Biomarker
Diagnostic
Checkpoint inhibitors
TIS
author_facet Patrick Danaher
Sarah Warren
SuFey Ong
Nathan Elliott
Alessandra Cesano
Sean Ferree
author_sort Patrick Danaher
title A gene expression assay for simultaneous measurement of microsatellite instability and anti-tumor immune activity
title_short A gene expression assay for simultaneous measurement of microsatellite instability and anti-tumor immune activity
title_full A gene expression assay for simultaneous measurement of microsatellite instability and anti-tumor immune activity
title_fullStr A gene expression assay for simultaneous measurement of microsatellite instability and anti-tumor immune activity
title_full_unstemmed A gene expression assay for simultaneous measurement of microsatellite instability and anti-tumor immune activity
title_sort gene expression assay for simultaneous measurement of microsatellite instability and anti-tumor immune activity
publisher BMJ Publishing Group
series Journal for ImmunoTherapy of Cancer
issn 2051-1426
publishDate 2019-01-01
description Abstract Background Clinical benefit from checkpoint inhibitors has been associated in a tumor-agnostic manner with two main tumor traits. The first is tumor antigenicity, which is typically measured by tumor mutation burden, microsatellite instability (MSI), or Mismatch Repair Deficiency using gene sequence platforms and/or immunohistochemistry. The second is the presence of a pre-existing adaptive immune response, typically measured by immunohistochemistry (e.g. single analyte PD-L1 expression) and/or gene expression signatures (e.g. tumor “inflamed” phenotype). These two traits have been shown to provide independent predictive information. Here we investigated the potential of using gene expression to predict tumor MSI, thus enabling the measurement of both tumor antigenicity and the level of tumor inflammation in a single assay, possibly reducing sample requirement, turn-around time, and overall cost. Methods Using The Cancer Genome Atlas RNA-seq datasets with the greatest MSI-H incidence, i.e. those from colon (n = 208), stomach (n = 269), and endometrial (n = 241) cancers, we trained an algorithm to predict tumor MSI from under-expression of the mismatch repair genes MLH1, PMS2, MSH2, and MSH6 and from 10 additional genes with strong pan-cancer associations with tumor hypermutation. The algorithms were validated on the NanoString nCounter™ platform in independent cohorts of colorectal (n = 52), endometrial (n = 11), and neuroendocrine (n = 4) tumors pre-characterized using the MMR immunohistochemistry assay. Results In the validation cohorts, the algorithm showed high prediction accuracy of tumor MSI status, with sensitivity of at least 88% attained at thresholds chosen to achieve 100% specificity. Furthermore, MSI status was compared to the Tumor Inflammation Signature (TIS), an analytically validated diagnostic assay which measures a suppressed adaptive immune response in the tumor and enriches for response to immune checkpoint blockade. TIS score was largely independent of MSI status, suggesting that measuring both parameters may identify more patients that would respond to immune checkpoint blockade than either assay alone. Conclusions Development of a gene expression signature of MSI status raises the possibility of a combined diagnostic assay on a single platform which measures both tumor antigenicity and presence of a suppressed adaptive immune response. Such an assay would have significant advantages over multi-platform assays for both ease of use and turnaround time and could lead to a diagnostic test with improved clinical performance.
topic MMRd
MSI
Biomarker
Diagnostic
Checkpoint inhibitors
TIS
url http://link.springer.com/article/10.1186/s40425-018-0472-1
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