Department of Mathematics and Statistics, Université de Montréal, Quebec, Canada.
Sainte-Justine University Hospital Research Centre, Montréal, Québec, Canada.
Cancer Biol Ther. 2023 Dec 31;24(1):2283926. doi: 10.1080/15384047.2023.2283926. Epub 2023 Nov 27.
The development of new cancer therapies requires multiple rounds of validation from and experiments before they can be considered for clinical trials. Mathematical models assist in this preclinical phase by combining experimental data with human parameters to provide guidance about potential therapeutic regimens to bring forward into trials. However, granulosa cell tumors of the ovary lack a relevant mouse model, complexifying preclinical drug development for this rare tumor. To bridge this gap, we established a mathematical model as a framework to explore the potential of using a tumor necrosis factor-related apoptosis-inducing ligand (TRAIL)-producing oncolytic vaccinia virus in combination with the chemotherapeutic agent first procaspase activating compound (PAC-1). We have previously shown that TRAIL and PAC-1 act synergistically on granulosa tumor cells. In line with our previous results, our current model predicts that, although it is unable to stop the tumor from growing in its current form, combination oral PAC-1 with oncolytic virus (OV) provides the best result compared to monotherapies. Encouragingly, our results suggest that increases to the OV infection rate can lead to the success of this combination therapy within a year. The model developed here can continue to be improved as more data become available, allowing for regimen-tailoring via virtual clinical trials, ultimately shepherding effective regimens into trials.
新癌症疗法的开发需要经过 和 实验的多轮验证,才能考虑进行临床试验。数学模型通过将实验数据与人体参数相结合,在临床前阶段提供有关潜在治疗方案的指导,从而协助这一过程。然而,卵巢颗粒细胞瘤缺乏相关的小鼠模型,这使得针对这种罕见肿瘤的临床前药物开发变得复杂。为了弥补这一差距,我们建立了一个数学模型作为框架,探索使用产生肿瘤坏死因子相关凋亡诱导配体(TRAIL)的溶瘤痘苗病毒与化疗药物前半胱氨酸天冬氨酸蛋白酶激活化合物(PAC-1)联合应用的潜力。我们之前已经表明,TRAIL 和 PAC-1 对颗粒细胞瘤协同作用。与我们之前的结果一致,我们目前的模型预测,尽管它无法阻止肿瘤以其现有形式生长,但与单药治疗相比,口服 PAC-1 联合溶瘤病毒(OV)的联合治疗效果最佳。令人鼓舞的是,我们的结果表明,增加 OV 感染率可以在一年内实现这种联合治疗的成功。随着更多数据的出现,这里开发的模型可以继续得到改进,从而通过虚拟临床试验进行方案定制,最终将有效的方案推进临床试验。