| Literature DB >> 33950415 |
Weijie Ma1, Brian Pham1, Tianhong Li2,3.
Abstract
Immune checkpoint inhibitors (ICIs) targeting the cytotoxic T-lymphocyte-associated protein-4 (CTLA-4) and programed cell death protein 1 (PD-1) or its ligand PD-L1 have increased the survival and cure rates for patients with many cancer types in various disease settings. However, only 10-40% of cancer patients benefited from these ICIs, of whom ~ 20% have treatment interruption or discontinuation due to immune-related adverse events that can be severe and even fatal. Current efforts in precision immunotherapy are focused on improving biomarker-based patient selection for currently available ICIs and exploring rationale combination and novel strategies to expand the benefit of immunotherapy to more cancer patients. Neoantigens arise from ~ 10% of the non-synonymous somatic mutations in cancer cells, are important targets of T cell-mediated anti-tumor immunity for individual patients. Advances in next generation sequencing technology and computational bioinformatics have enable the identification of genomic alterations, putative neoantigens, and gene expression profiling in individual tumors for personal oncology in a rapid and cost-effective way. Among the genomic biomarkers, defective mismatch DNA repair (dMMR), microsatellite instability high (MSI-H) and high tumor mutational burden (H-TMB) have received FDA approvals for selecting patients for ICI treatment. All these biomarkers measure high neoantigen load and tumor antigenicity, supporting the current development of neoantigen-based personalized cancer vaccines for patients with high TMB tumor. Several studies have shown neoantigen vaccines are feasible, safe and have promising clinical activity in patients with high TMB tumors in both metastatic and adjuvant settings. This review summarizes the emerging data and technologies for neoantigen-based personalized immunotherapy.Entities:
Keywords: (4–6) Cancer neoantigen; Cancer vaccine; Personalized immunotherapy; Tumor genomic profiling; Tumor mutational burden
Mesh:
Substances:
Year: 2021 PMID: 33950415 PMCID: PMC8097110 DOI: 10.1007/s10585-021-10091-1
Source DB: PubMed Journal: Clin Exp Metastasis ISSN: 0262-0898 Impact factor: 5.150
Summary of genomic biomarkers for ICIs
| Biomarker | Diagnostics | Tumor Types | Agents |
|---|---|---|---|
| dMMR | Companion | Pan tumor types | Pembrolizumab |
| MSI-H | Companion | Pan tumor types | Pembrolizumab |
| TMB | Companion | Pan tumor types | Pembrolizumab |
| bTMB | Companion (pending) | Selected tumor types | Atezolizumab |
| GEP | Under development | Pan tumor types | Pembrolizumab, nivolumab |
dMMR deficient mismatch repair; TMB tumor mutation burden; MSI-H microsatellite instability high; GEP gene expression profiling
Fig. 1Summary of biomarkers for immune checkpoint inhibitors. The tumor microenvironment can be examined via histopathology and molecular studies. The relationship between tumor and immune cells can be evaluated by immunohistochemistry and molecular or genetic profiling analysis. Known biomarkers for immune checkpoint inhibitors characterize the properties of either tumor genomics (a) or tumor microenvironment (b). a Next generation sequencing (NGS) and bioinformatics identify genomic alterations in tumor cells, which include somatic mutations, fusions, deletions, amplifications, dMMR, MSI-H and H-TMB. Among these genomic biomarkers, TMB best measures the neoantigen load and reflects the tumor antigenicity. b TME includes tumor cells and its surrounding blood vessels, fibroblasts, immune cells (e.g., lymphocytes), bone marrow-derived suppressed cells, extracellular matrix (ECM), and signaling molecules (e.g., interleukin (IL)-1, interferon-gamma (IFN-γ). Tumor cells escape immune surveillance via PD-L1 expression. The combination of PD-L1 IHC and GEP better characterizes the immune escape and immune cell activity in TME. dMMR deficient mismatch repair; H-TMB high tumor mutation burden; MSI-H microsatellite instability high; GEP gene expression profiling; PD-L1 programmed death-ligand 1; IHC immunohistochemistry
Fig. 2Schema for generating personalized neoantigen vaccines. Six key steps to manufacture personalized neoantigen vaccines include: (1) tumor sampling, (2) DNA and RNA sequencing for tumor-specific mutations, (3) bioinformatic analysis for target discovery, (4) in silico analysis for putative neoantigens, (5) neoantigen vaccine production under good manufacture practice (GMP), (6) assessment of T cell recognition and binding, and (7) evaluation of neoantigen vaccine effect in antigen-specific immunity, antitumor activity, memory, adaptability, and autoimmunity in different disease settings. DNA deoxyribonucleic acid; RNA ribonucleic acid
Reported clinical trials of neoantigen-based cancer vaccines with anti-PD1 therapy
| NCT numbers (reference) | Cancer vaccine | Phase | Patients | Tumor type | Combination | Outcomes |
|---|---|---|---|---|---|---|
| NCT02529072 [ | DC vaccines | I | 6 | Recurrent grade III and grade IV brain tumors | Nivolumab | NA |
| NCT02981524 [ | GVAX colon vaccine | II | 17 | MMR-p advanced colorectal cancer | Pembrolizumab | Failed to meet its primary objective |
| NCT02879760 [ | Oncolytic MG1-MAGEA3 with Ad-MAGEA3 vaccine | I–II | 16 | NSCLC | Pembrolizumab | NA |
| NCT02515227 [ | 6MHP helper peptide vaccine | I–II | 22 | Melanoma | Pembrolizumab | NA |
| NCT02775292 [ | Peptide-pulsed autologous dendritic cell vaccine | I | 1 | Solid tumors | Nivolumab | NA |
| NCT02574533 [ | Vigil™ autologous vaccine | I | 2 | Advanced melanoma | Pembrolizumab | NA |
| NCT02897765 [ | NEO-PV-01 (personalized neoantigen vaccine) | Ib | 82 | Melanoma, NSCLC, bladder cancer | Nivolumab | Melanoma: ORR 59%, mPFS 23.5 mos; NSCLC: ORR 39%, mPFS 8.5 mos; bladder cancer: ORR 27%, mPFS 5.8 mos) |
| NCT01970358 [ | NeoVax (personalized neoantigen vaccine) | I | 8 | Melanoma | PD-1 inhibitor | 75% of patients were without evidence of active disease at a median of 4-year follow-up |
| NCT01970358 [ | mRNA 4257 | I | 10 | HNSCC | Pembrolizumab | ORR 50%; mPFS 9.8 mos |
NSCLC non-small cell lung cancer; HNSCC head and neck squamous cell carcinoma; mos months; mPFS median progression free survival; ORR overall response rate