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Abstract The global surge in cancer cases, with a staggering 20 million new instances reported in 2023 alone, underscores an urgent demand for advanced and reliable cancer therapeutics. Immunotherapies centered around neoantigens have emerged as a promising avenue for enhancing treatment efficacy and have become a focal point in cancer research. We hypothesize that the tumor cells present a rich neoantigenic repertoire and the immunogenic neoantigens arising from the junctions of proteins translated from chimeric RNAs present viable targets for peptide and mRNA vaccines, offering a promising approach to impede tumor progression. To validate our hypothesis, we acquired a dataset of RNA fusions detected through RNAseq of tissue extracted from patient-derived xenograft (PDX) models established by XenoSTART, a global non clinical oncology contract research organization. This comprehensive dataset encompassed 985 PDX models across 27 cancer types, revealing three fusions associated with the neuregulin-1 (NRG1) gene. NRG1 gene fusions have been identified as a clinically actionable target for multiple solid tumors as they result in ErbB-mediated pathway activation. CD74-NRG1 has emerged as the most frequently reported NRG1 fusion across many cancers such as pancreatic ductal adenocarcinoma, triple negative breast cancer and ovarian cancer. The CD74-NRG1 fusion was identified in two PDX models harboring lung cancer (ST2891 and ST3204) and in an ovarian cancer model (ST088). The lung cancer PDXs displayed a notable abundance of fusion junction-crossing reads. We generated the CD74 (Exon 1-6) -NRG1 (Exon 6-12) fusion transcript model, where the first 6 exons of CD74 fused to exon 6 of NRG1 leading to an in-frame fusion. Validation of this fusion in PDX tissue was accomplished through PCR and Sanger sequencing of the PCR product. We assessed the affinity of the 9-mer neo peptide sequences formed by the translated junction of CD74-NRG1 to Major Histocompatibility Complex (MHC) Class I molecules using the in-silico prediction pipelines MHCNuggets and MixMHCPred-2 and found HLA-A*68: 23 to be the MHC allele with highest binding affinity. HLA-Arena was used to investigate the binding affinity between the peptides and the MHC molecules via molecular docking, which revealed 4 peptides to be strong binders to HLA-A*68: 23. The immunogenicity of these neoantigenic peptides to HLA-A*68: 23 matched Peripheral Blood Mononuclear Cells (PBMCs) will be assessed by the IFN-γ Enzyme Linked Immunosorbent Spot (ELISpot) assay. To elucidate the specific T-cell clonotypes responding to the neo peptides, the 10X Genomics single-cell 5’ Gene Expression Assay, coupled with T Cell Receptor mapping, will be employed. The objective of the study is to establish a robust combinatorial therapeutic strategy leveraging peptide and mRNA vaccine technology to support an effective framework for personalized cancer treatment. Citation Format: Sakuni Rankothgedera, Micah Castillo, Shiyanth Thevasagayampillai, Cole Woody, Aaranyah Kandasamy, Armando Diaz, Michael Wick, Preethi Gunaratne. Discovery of immunogenic neo-peptides from actionable RNA fusions for developing cancer vaccines abstract. In: Proceedings of the American Association for Cancer Research Annual Meeting 2024; Part 1 (Regular Abstracts) ; 2024 Apr 5-10; San Diego, CA. Philadelphia (PA): AACR; Cancer Res 2024;84 (6Suppl): Abstract nr 5006.
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Rankothgedera et al. (Fri,) studied this question.
synapsesocial.com/papers/68e72ceab6db6435876a70c1 — DOI: https://doi.org/10.1158/1538-7445.am2024-5006
Sakuni Rankothgedera
University of Houston
Micah Castillo
University of Houston
Shiyanth Thevasagayampillai
University of Houston
Cancer Research
University of Houston
South Texas Accelerated Research Therapeutics
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