Sainte-Justine University Hospital Research Centre, Montreal, Quebec, Canada.
Department of Mathematics and Statistics, Université de Montréal, Montreal, Quebec, Canada.
J Immunother Cancer. 2021 Feb;9(2). doi: 10.1136/jitc-2020-001387.
Immunotherapies, driven by immune-mediated antitumorigenicity, offer the potential for significant improvements to the treatment of multiple cancer types. Identifying therapeutic strategies that bolster antitumor immunity while limiting immune suppression is critical to selecting treatment combinations and schedules that offer durable therapeutic benefits. Combination oncolytic virus (OV) therapy, wherein complementary OVs are administered in succession, offer such promise, yet their translation from preclinical studies to clinical implementation is a major challenge. Overcoming this obstacle requires answering fundamental questions about how to effectively design and tailor schedules to provide the most benefit to patients.
We developed a computational biology model of combined oncolytic vaccinia (an enhancer virus) and vesicular stomatitis virus (VSV) calibrated to and validated against multiple data sources. We then optimized protocols in a cohort of heterogeneous virtual individuals by leveraging this model and our previously established in silico clinical trial platform.
Enhancer multiplicity was shown to have little to no impact on the average response to therapy. However, the duration of the VSV injection lag was found to be determinant for survival outcomes. Importantly, through treatment individualization, we found that optimal combination schedules are closely linked to tumor aggressivity. We predicted that patients with aggressively growing tumors required a single enhancer followed by a VSV injection 1 day later, whereas a small subset of patients with the slowest growing tumors needed multiple enhancers followed by a longer VSV delay of 15 days, suggesting that intrinsic tumor growth rates could inform the segregation of patients into clinical trials and ultimately determine patient survival. These results were validated in entirely new cohorts of virtual individuals with aggressive or non-aggressive subtypes.
Based on our results, improved therapeutic schedules for combinations with enhancer OVs can be studied and implemented. Our results further underline the impact of interdisciplinary approaches to preclinical planning and the importance of computational approaches to drug discovery and development.
免疫疗法通过免疫介导的抗肿瘤作用,为改善多种癌症类型的治疗提供了巨大的潜力。确定既能增强抗肿瘤免疫又能限制免疫抑制的治疗策略,对于选择能提供持久治疗效果的治疗组合和方案至关重要。相继给予互补溶瘤病毒(OV)的联合溶瘤病毒治疗具有这样的前景,但将其从临床前研究转化为临床实施是一个主要挑战。克服这一障碍需要回答如何有效地设计和定制方案以最大程度地为患者带来益处的基本问题。
我们开发了一种联合溶瘤痘苗(增强病毒)和水疱性口炎病毒(VSV)的计算生物学模型,该模型经过校准并针对多个数据源进行了验证。然后,我们通过利用该模型和我们之前建立的计算机临床试验平台,在一组异质虚拟个体中优化方案。
增强倍数对治疗的平均反应几乎没有影响。然而,VSV 注射滞后时间的长短对生存结果具有决定性影响。重要的是,通过个体化治疗,我们发现最佳联合方案与肿瘤侵袭性密切相关。我们预测,侵袭性肿瘤患者需要单次增强后再注射 VSV 1 天,而一小部分生长最慢的肿瘤患者需要多次增强后再延迟 15 天注射 VSV,这表明内在肿瘤生长速度可以为患者分组入组临床试验提供信息,并最终决定患者的生存。这些结果在具有侵袭性或非侵袭性亚型的全新虚拟个体队列中得到了验证。
基于我们的结果,可以研究和实施具有增强型 OV 的联合治疗的改进治疗方案。我们的结果进一步强调了跨学科方法在临床前规划中的作用,以及计算方法在药物发现和开发中的重要性。