Directed evolution as a means of identifying novel oncolytic Semliki Forest virus genotypes

dc.contributor.authorTaylor, Ian Rossen
dc.contributor.committeechairWeger, James Daviden
dc.contributor.committeememberRomero-Masters, James Catarinoen
dc.contributor.committeememberLamouille, Samyen
dc.contributor.committeememberDuggal, Nishaen
dc.contributor.departmentBiomedical and Veterinary Sciencesen
dc.date.accessioned2026-05-29T08:00:17Zen
dc.date.available2026-05-29T08:00:17Zen
dc.date.issued2026-05-28en
dc.description.abstractGlioblastoma (GBM) is the most common, aggressive form of primary malignant brain cancer in adults. While patient life expectancy with many other cancers has improved in recently, GBM prognosis remains poor. Current standard therapies (surgical resection, radiotherapy and temozolomide) grant GBM patients a median survival of 14.6 months. Alternative therapies are necessary to improve patient outcomes. Oncolytic virus (OV) therapy, the use of viruses to selectively kill cancer cells and stimulate anti-tumor immune responses, shows promise for many cancers. Several OVs have been approved worldwide, demonstrating improved patient survival without significant systemic disease. However, many candidate anti-GBM OV clinical trials do not achieve stable outcomes. More effective OVs are needed to improve outcomes. Semliki Forest virus (SFV; Family: Togaviridae; Genus Alphavirus) strain A774 (SFV-A774) is safe in mammals, crosses the blood-brain barrier (BBB) – a major roadblock for GBM therapies – and shows promise in treating some preclinical GBM models. However, while SFV kills GBM cells in vitro, it falls short in immunocompetent mouse models. To improve SFV oncolysis, we developed SFV strains with increased cytotoxicity to GBM cells without increasing cytotoxicity to healthy brain cells. We used directed evolution, repeatedly passaging SFV to allow for adaptation using two GBM models: GL-261 murine glioma cells, which are refractory to SFV in vivo, and a 3D patient-derived human glioma tumor microenvironment (TME) model containing glioma stem-like cells, healthy astrocytes, and microglia, to identify mutations that increase SFV's oncolytic efficacy. Following virus passaging, we evaluated oncolysis by the adapted populations by measuring cell death of the target cancer cells, identifying a population of interest from each model. To identify oncolytic mutations, we sequenced the populations, finding a non-synonymous mutation in each model. GL-261 passage produced a mutation in the viral E1 protein, D327G. 3D TME model passage produced a mutation in nsP2, A614T. We constructed these mutants with reverse genetics. These mutants increased cell death and potential immune stimulation in multiple glioma models. Mechanistically, SFV E1 D327G increased binding to GL-261 cells compared to WT SFV-A774, suggesting increased cancer targeting. SFV nsP2 A614T led to reduced interferon-β release, suggesting that this mutant may antagonize antiviral responses more efficiently. In future studies, we will test mutant efficacy in immunocompetent GBM mouse models and in patient-derived human glioma TME models. Overall, we identified SFV variants with improved oncolytic efficacy, underscoring directed evolution's potential to generate novel GBM therapeutics.en
dc.description.abstractgeneralGlioblastoma is the most common and deadly form of cancer that starts in the brain in adults. While life expectancy for patients with other cancers has improved in recent years, glioblastoma remains a terminal diagnosis with few treatment options. One promising approach is oncolytic (cancer killing) viral therapy, which uses viruses to selectively destroy cancer cells; however, current candidates have shown limited success. Better options are urgently needed. In this study, we used Semliki Forest virus (SFV) strain A774. SFV-A774 is safe, can cross the blood-brain barrier – a physical barrier that blocks many brain cancer treatments – and has shown promise in treating glioblastoma in some animal models, while other remain resistant. We sought to improve this by "training" SFV to better target glioblastoma cells. To do this, we repeatedly infected two glioblastoma models with SFV-A774: mouse glioblastoma cells and a more complex human tumor model containing multiple cell types. This allowed the virus to acquire mutations that improve its cancer-killing ability. We identified one key mutation from each model. Importantly, these mutations did not increase the virus's ability to harm healthy brain cells; one variant was actually less toxic, suggesting both variants remain safe. Both mutations increase the release of immune signals in cancer cells, suggesting they may stimulate a stronger anti-cancer immune response – a critical factor in successful treatment. One showed improved binding to cancer cells, while the other better evaded cellular defenses that typically block oncolytic viruses, potentially allowing it to persist longer in tumors. In future studies, we will test these variants in mice with brain tumors and in human glioma samples collected from patients. Overall, we identified SFV-A774 variants with improved cancer-killing efficacy, underscoring the promise of adaptive evolution as a strategy to develop novel therapeutics for glioblastoma.en
dc.description.degreeMaster of Scienceen
dc.format.mediumETDen
dc.identifier.othervt_gsexam:46872en
dc.identifier.urihttps://hdl.handle.net/10919/143186en
dc.language.isoenen
dc.publisherVirginia Techen
dc.rightsCreative Commons Attribution-ShareAlike 4.0 Internationalen
dc.rights.urihttp://creativecommons.org/licenses/by-sa/4.0/en
dc.subjectOncolytic virusen
dc.subjectSemliki Forest virus (SFV)en
dc.subjectglioblastoma (GBM)en
dc.subjectgliomaen
dc.subjectdirected evolutionen
dc.titleDirected evolution as a means of identifying novel oncolytic Semliki Forest virus genotypesen
dc.typeThesisen
thesis.degree.disciplineBiomedical and Veterinary Sciencesen
thesis.degree.grantorVirginia Polytechnic Institute and State Universityen
thesis.degree.levelmastersen
thesis.degree.nameMaster of Scienceen

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