Department of Mathematics, 340 Rowland Hall, University of California, Irvine, CA 92697, USA.
J Theor Biol. 2010 Apr 21;263(4):530-43. doi: 10.1016/j.jtbi.2010.01.009. Epub 2010 Jan 18.
Replicating oncolytic viruses are able to infect and lyse cancer cells and spread through the tumor, while leaving normal cells largely unharmed. This makes them potentially useful in cancer therapy, and a variety of viruses have shown promising results in clinical trials. Nevertheless, consistent success remains elusive and the correlates of success have been the subject of investigation, both from an experimental and a mathematical point of view. Mathematical modeling of oncolytic virus therapy is often limited by the fact that the predicted dynamics depend strongly on particular mathematical terms in the model, the nature of which remains uncertain. We aim to address this issue in the context of ODE modeling, by formulating a general computational framework that is independent of particular mathematical expressions. By analyzing this framework, we find some new insights into the conditions for successful virus therapy. We find that depending on our assumptions about the virus spread, there can be two distinct types of dynamics. In models of the first type (the "fast spread" models), we predict that the viruses can eliminate the tumor if the viral replication rate is sufficiently high. The second type of models is characterized by a suboptimal spread (the "slow spread" models). For such models, the simulated treatment may fail, even for very high viral replication rates. Our methodology can be used to study the dynamics of many biological systems, and thus has implications beyond the study of virus therapy of cancers.
复制型溶瘤病毒能够感染并裂解癌细胞,并在肿瘤内传播,同时使正常细胞基本不受伤害。这使得它们在癌症治疗中有很大的应用潜力,并且各种病毒在临床试验中都显示出了很有前景的结果。然而,一致的成功仍然难以实现,成功的相关因素一直是实验和数学两个方面的研究课题。溶瘤病毒治疗的数学建模通常受到这样一个事实的限制,即预测的动力学强烈依赖于模型中的特定数学项,而这些数学项的性质仍然不确定。我们旨在通过制定一个独立于特定数学表达式的通用计算框架,在 ODE 建模的背景下解决这个问题。通过分析这个框架,我们对成功的病毒治疗的条件有了一些新的认识。我们发现,根据我们对病毒传播的假设,可能会有两种不同类型的动力学。在第一类模型(“快速传播”模型)中,如果病毒的复制率足够高,我们预测病毒可以消除肿瘤。第二类模型的特点是传播不理想(“缓慢传播”模型)。对于这类模型,即使病毒的复制率非常高,模拟治疗也可能失败。我们的方法可以用于研究许多生物系统的动力学,因此除了癌症的病毒治疗研究之外,还有更广泛的意义。