| Literature DB >> 26788324 |
Jianda Yuan1, Priti S Hegde2, Raphael Clynes3, Periklis G Foukas4, Alexandre Harari5, Thomas O Kleen6, Pia Kvistborg7, Cristina Maccalli8, Holden T Maecker9, David B Page10, Harlan Robins11, Wenru Song12, Edward C Stack13, Ena Wang14, Theresa L Whiteside15, Yingdong Zhao16, Heinz Zwierzina17, Lisa H Butterfield18, Bernard A Fox10.
Abstract
The culmination of over a century's work to understand the role of the immune system in tumor control has led to the recent advances in cancer immunotherapies that have resulted in durable clinical responses in patients with a variety of malignancies. Cancer immunotherapies are rapidly changing traditional treatment paradigms and expanding the therapeutic landscape for cancer patients. However, despite the current success of these therapies, not all patients respond to immunotherapy and even those that do often experience toxicities. Thus, there is a growing need to identify predictive and prognostic biomarkers that enhance our understanding of the mechanisms underlying the complex interactions between the immune system and cancer. Therefore, the Society for Immunotherapy of Cancer (SITC) reconvened an Immune Biomarkers Task Force to review state of the art technologies, identify current hurdlers, and make recommendations for the field. As a product of this task force, Working Group 2 (WG2), consisting of international experts from academia and industry, assembled to identify and discuss promising technologies for biomarker discovery and validation. Thus, this WG2 consensus paper will focus on the current status of emerging biomarkers for immune checkpoint blockade therapy and discuss novel technologies as well as high dimensional data analysis platforms that will be pivotal for future biomarker research. In addition, this paper will include a brief overview of the current challenges with recommendations for future biomarker discovery.Entities:
Keywords: Bioinformatics; Biomarkers; Cancer immunotherapy; Immune checkpoint blockade; Immune monitoring; Task Force; Technology
Year: 2016 PMID: 26788324 PMCID: PMC4717548 DOI: 10.1186/s40425-016-0107-3
Source DB: PubMed Journal: J Immunother Cancer ISSN: 2051-1426 Impact factor: 13.751
Fig. 1High-throughput immune assessment for biomarker discovery and personalized cancer immunotherapy. Immunologically-ignorant and immunologically-responsive tumors are classified by the presence of immune cells in the tumor microenvironment. Potential biomarkers identified from high-throughput technologies can further differentiate these tumors by the mutation load, gene/protein/antibody signature profile, phenotype and function of immune cells, and can also provide clinical strategies for personalized cancer immunotherapies. The new and innovative technologies that can be utilized to identify potential biomarkers include whole exome sequencing, gene signature, epigenetic modification, protein microarray, B/T cell receptor repertoire, flow/mass cytometry and multicolor IHC. Arrows indicate a decrease (↓) or increase (↑)
Summary of novel technologies
| Technology | Suggestions and potential biomarkers | Sample preparation | Bioinformatic tools | References and recommended reading |
|---|---|---|---|---|
| Whole exome sequencing for neoantigen discovery | • Mutation load for CTLA-4 and PD-1 blockade therapy | DNA from tumor and normal cells | EBcall, JointSNVMix, MuTect, SomaticSniper, Strelka, VarScan 2, BIMAS, RNAKPER SYFPEITHI, IDEB, NetMCHpan, TEPITOPEpan, PickPocket, Multipred2, MultiRTA | Van Buuren et al., 2014 [ |
| Gene signature and pattern | • MAGE-A3 gene signature | DNA and RNA from tumor, lymph node and PBMCs | BRB-ArrayTools, LIMMA, SAM, PAM, Partek, Genomic Suite, GSEA, Ingenuity IPA | Quackenbush et al., 2002 [ |
| Epigenetic-differentiation based immune cell quantification | • Immune cell lineage specific epigenetic modification | Genomic DNA from fresh or frozen whole blood, PBMC, lymph node and fresh tissue or FFPE tissue and blood clots | HOMER package Motif Finder algorithm findMotifGenome.pl, MatInspector (Genomatix), Mendelian randomization | Wieczorek et al., 2009 [ |
| Protein microarray (seromics) | • TAA antibody response | Fresh or frozen serum and plasma | Prospector, LIMMA package, PAA package, Spotfire package | Gnjatic et al., 2009 [ |
| Flow Cytometry and Mass Cytometry | • Use best flow practices and recommended flow panels | Whole blood; Fresh or frozen PBMCs and TILs; Fresh or frozen cells from ascites or pleural effusion | Computational algorithm-driven analysis for MDSC, Cytobank, FlowJo, SPADE, PhenoGraph, PCA, viSNE, Citrus, ACCENSE, Isomap, 3D visualization | Maecker et al., 2010 [ |
| T and B cell receptor deep sequencing | • CD3 T cell count | DNA from FFPE; Frozen cells from tumor, lymph node or PBMCs; Fresh or frozen cells from ascites or pleural effusion | Shannon Entropy, Morisita’s distance, Estimated TCR gene rearrangements per diploid genomes, Clonality, ImmuneID, Adaptive ImmunoSeq software | Cha et al., 2014 [ |
| Multicolor IHC staining | • CD3 Immune score | FFPE tissue; Fresh or frozen tissue | TissueGnostic system, PerkinElmer system | Galon et al., 2006 [ |
Abbreviations: PBMC peripheral blood mononuclear cells, TAA tumor associated antigen, MDSC myeloid derived suppressor cells, TILs tumor infiltrating lymphocytes, IHC immunohistochemical staining, TCR T cell receptor, FFPE formalin-fixed, paraffin-embedded, PD-1 programmed cell death-1, PD-L1 programmed cell death ligand −1