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Predictive computational modeling to define effective treatment strategies for bone metastatic prostate cancer

机译:预测性计算模型来定义骨转移性前列腺癌的有效治疗策略

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摘要

The ability to rapidly assess the efficacy of therapeutic strategies for incurable bone metastatic prostate cancer is an urgent need. Pre-clinical in vivo models are limited in their ability to define the temporal effects of therapies on simultaneous multicellular interactions in the cancer-bone microenvironment. Integrating biological and computational modeling approaches can overcome this limitation. Here, we generated a biologically driven discrete hybrid cellular automaton (HCA) model of bone metastatic prostate cancer to identify the optimal therapeutic window for putative targeted therapies. As proof of principle, we focused on TGFβ because of its known pleiotropic cellular effects. HCA simulations predict an optimal effect for TGFβ inhibition in a pre-metastatic setting with quantitative outputs indicating a significant impact on prostate cancer cell viability, osteoclast formation and osteoblast differentiation. In silico predictions were validated in vivo with models of bone metastatic prostate cancer (PAIII and C4-2B). Analysis of human bone metastatic prostate cancer specimens reveals heterogeneous cancer cell use of TGFβ. Patient specific information was seeded into the HCA model to predict the effect of TGFβ inhibitor treatment on disease evolution. Collectively, we demonstrate how an integrated computational/biological approach can rapidly optimize the efficacy of potential targeted therapies on bone metastatic prostate cancer.
机译:快速评估不能治愈的骨转移性前列腺癌的治疗策略的有效性的能力是迫切需要的。临床前的体内模型在定义治疗方法对癌症-骨骼微环境中同时发生的多细胞相互作用的时间效应方面的能力有限。整合生物学和计算建模方法可以克服此限制。在这里,我们生成了骨转移性前列腺癌的生物驱动的离散混合细胞自动机(HCA)模型,以为推定的靶向治疗确定最佳治疗窗口。作为原理的证明,我们专注于TGFβ,因为它具有已知的多效性细胞效应。 HCA模拟预测在转移前环境中TGFβ抑制的最佳效果,定量输出表明对前列腺癌细胞的生存能力,破骨细胞形成和成骨细胞分化有显着影响。在计算机上使用骨转移性前列腺癌(PAIII和C4-2B)模型验证了预测。对人体骨转移性前列腺癌标本的分析揭示了TGFβ使用异质癌细胞的情况。将患者的特定信息植入HCA模型中,以预测TGFβ抑制剂治疗对疾病进展的影响。总的来说,我们证明了集成的计算/生物学方法如何能够快速优化潜在的靶向治疗骨转移性前列腺癌的功效。

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