Modeling Macrophage Polarization and Its Effect on Cancer Treatment Success.

免疫学期刊(英文) Pub Date : 2018-06-01 Epub Date: 2018-06-29 DOI:10.4236/oji.2018.82004
Valentin Morales, Luis Soto-Ortiz
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引用次数: 8

Abstract

Positive feedback loops drive immune cell polarization toward a pro-tumor phenotype that accentuates immunosuppression and tumor angiogenesis. This phenotypic switch leads to the escape of cancer cells from immune destruction. These positive feedback loops are generated by cytokines such as TGF-β, Interleukin-10 and Interleukin-4, which are responsible for the polarization of monocytes and M1 macrophages into pro-tumor M2 macrophages, and the polarization of naive helper T cells intopro-tumor Th2 cells. In this article, we present a deterministic ordinary differential equation (ODE) model that includes key cellular interactions and cytokine signaling pathways that lead to immune cell polarization in the tumor microenvironment. The model was used to simulate various cancer treatments in silico. We identified combination therapies that consist of M1 macrophages or Th1 helper cells, coupled with an anti-angiogenic treatment, that are robust with respect to immune response strength, initial tumor size and treatment resistance. We also identified IL-4 and IL-10 as the targets that should be neutralized in order to make these combination treatments robust with respect to immune cell polarization. The model simulations confirmed a hypothesis based on published experimental evidence that a polarization into the M1 and Th1 phenotypes to increase the M1-to-M2 and Th1-to-Th2 ratios plays a significant role in treatment success. Our results highlight the importance of immune cell reprogramming as a viable strategy to eradicate a highly vascularized tumor when the strength of the immune response is characteristically weak and cell polarization to the pro-tumor phenotype has occurred.

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巨噬细胞极化模型及其对肿瘤治疗成功的影响。
正反馈回路驱动免疫细胞向促肿瘤表型极化,强化免疫抑制和肿瘤血管生成。这种表型转换导致癌细胞逃避免疫破坏。这些正反馈回路是由TGF-β、白细胞介素-10和白细胞介素-4等细胞因子产生的,它们负责单核细胞和M1巨噬细胞极化为促肿瘤的M2巨噬细胞,以及幼稚辅助T细胞极化为促肿瘤的Th2细胞。在这篇文章中,我们提出了一个确定性的常微分方程(ODE)模型,其中包括导致肿瘤微环境中免疫细胞极化的关键细胞相互作用和细胞因子信号通路。该模型被用于在计算机上模拟各种癌症治疗。我们确定了由M1巨噬细胞或Th1辅助细胞组成的联合疗法,加上抗血管生成治疗,在免疫反应强度、初始肿瘤大小和治疗耐药性方面都是稳健的。我们还确定了IL-4和IL-10作为应该被中和的靶标,以使这些联合治疗在免疫细胞极化方面稳健。模型模拟证实了一个基于已发表的实验证据的假设,即M1和Th1表型的极化增加M1- m2和Th1- th2比率在治疗成功中起着重要作用。我们的研究结果强调了免疫细胞重编程作为一种可行的策略的重要性,当免疫反应的强度是典型的弱,细胞极化到促肿瘤表型已经发生时,可以根除高度血管化的肿瘤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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