Tserunyan Vardges, Finley Stacey
Department of Quantitative and Computational Biology, University of Southern California, Los Angeles, CA, USA.
Alfred E. Mann Department of Biomedical Engineering, University of Southern California, Los Angeles, CA, USA.
bioRxiv. 2023 Jun 10:2023.06.09.544433. doi: 10.1101/2023.06.09.544433.
Systems biology utilizes computational approaches to examine an array of biological processes, such as cell signaling, metabolomics and pharmacology. This includes mathematical modeling of CAR T cells, a modality of cancer therapy by which genetically engineered immune cells recognize and combat a cancerous target. While successful against hematologic malignancies, CAR T cells have shown limited success against other cancer types. Thus, more research is needed to understand their mechanisms of action and leverage their full potential. In our work, we set out to apply information theory on a mathematical model of cell signaling of CAR-mediated activation following antigen encounter. First, we estimated channel capacity for CAR-4-1BB-mediated NFκB signal transduction. Next, we evaluated the pathway's ability to distinguish contrasting "low" and "high" antigen concentration levels, depending on the amount of intrinsic noise. Finally, we assessed the fidelity by which NFκB activation reflects the encountered antigen concentration, depending on the prevalence of antigen-positive targets in tumor population. We found that in most scenarios, fold change in the nuclear concentration of NFκB carries a higher channel capacity for the pathway than NFκB's absolute response. Additionally, we found that most errors in transducing the antigen signal through the pathway skew towards underestimating the concentration of encountered antigen. Finally, we found that disabling IKKβ deactivation could increase signaling fidelity against targets with antigen-negative cells. Our information-theoretic analysis of signal transduction can provide novel perspectives on biological signaling, as well as enable a more informed path to cell engineering.
系统生物学利用计算方法来研究一系列生物过程,如细胞信号传导、代谢组学和药理学。这包括对嵌合抗原受体(CAR)T细胞的数学建模,CAR T细胞是一种癌症治疗方式,通过基因工程改造的免疫细胞识别并对抗癌靶标。虽然CAR T细胞在治疗血液系统恶性肿瘤方面取得了成功,但在治疗其他癌症类型时效果有限。因此,需要更多的研究来了解其作用机制并充分发挥其潜力。在我们的工作中,我们着手将信息论应用于抗原接触后CAR介导激活的细胞信号传导数学模型。首先,我们估计了CAR-4-1BB介导的NFκB信号转导的通道容量。接下来,我们评估了该信号通路根据内在噪声量区分“低”和“高”抗原浓度水平差异的能力。最后,我们根据肿瘤群体中抗原阳性靶标的流行程度,评估了NFκB激活反映所遇到抗原浓度的保真度。我们发现,在大多数情况下,NFκB核浓度的倍数变化比NFκB的绝对反应对该信号通路具有更高的通道容量。此外,我们发现,通过该信号通路转导抗原信号时的大多数误差倾向于低估所遇到抗原的浓度。最后,我们发现禁用IKKβ失活可以提高针对带有抗原阴性细胞的靶标的信号保真度。我们对信号转导的信息论分析可以为生物信号传导提供新的视角,并为细胞工程提供更明智的途径。