Department of Systems Biology and Engineering, Silesian University of Technology, ul. Akademicka 16, 44-100 Gliwice, Poland.
Int J Mol Sci. 2023 Sep 25;24(19):14516. doi: 10.3390/ijms241914516.
The paper presents a review of models that can be used to describe dynamics of lung cancer growth and its response to treatment at both cell population and intracellular processes levels. To address the latter, models of signaling pathways associated with cellular responses to treatment are overviewed. First, treatment options for lung cancer are discussed, and main signaling pathways and regulatory networks are briefly reviewed. Then, approaches used to model specific therapies are discussed. Following that, models of intracellular processes that are crucial in responses to therapies are presented. The paper is concluded with a discussion of the applicability of the presented approaches in the context of lung cancer.
本文综述了可用于描述肺癌生长及其对细胞群体和细胞内过程水平的治疗反应的动力学的模型。为了解决后者,本文综述了与细胞对治疗的反应相关的信号通路模型。首先,讨论了肺癌的治疗选择,并简要回顾了主要的信号通路和调控网络。然后,讨论了用于模拟特定治疗方法的方法。之后,介绍了对治疗反应至关重要的细胞内过程模型。本文最后讨论了所提出方法在肺癌中的适用性。
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