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Computational Drug Discovery Approach Based on Nuclear Factor-KB Pathway Dynamics

机译:基于核因子-KB途径动力学的计算药物发现方法

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摘要

The NF-kB system of transcription factors plays a crucial role in inflammatory diseases, making it an important drug target. We combined quantitative structure activity relationships for predicting the activity of new compounds and quantitative dynamic models for the NF-kB network with intracellular concentration models. GFA-MLR QSAR analysis was employed to determine the optimal QSAR equation. To validate the predictability of the IKKp QSAR model for an external set of inhibitors, a set of ordinary differential equations and mass action kinetics were used for modeling the NF-kB dynamic system. The reaction parameters were obtained from previously reported research. In the IKKb QSAR model, good cross-validated q~2 (0.782) and conventional r (0.808) values demonstrated the correlation between the descriptors and each of their activities and reliably predicted the IKKP activities. Using a developed simulation model of the NF-kB signaling pathway, we demonstrated differences in IkB mRNA expression between normal and different inhibitory states. When the inhibition efficiency increased, inhibitor 1 (PS-1145) led to long-term oscillations. The combined computational modeling and NF-kB dynamic simulations can be used to understand the inhibition mechanisms and thereby result in the design of mechanism-based inhibitors.
机译:转录因子的NF-kB系统在炎性疾病中起关键作用,使其成为重要的药物靶标。我们结合定量结构活性关系来预测新化合物的活性,并结合细胞内浓度模型对NF-kB网络的定量动力学模型。使用GFA-MLR QSAR分析确定最佳QSAR方程。为了验证IKKp QSAR模型对于一组外部抑制剂的可预测性,使用一组常微分方程和质量作用动力学对NF-kB动力学系统进行建模。反应参数是从先前报道的研究中获得的。在IKKb QSAR模型中,良好的交叉验证q〜2(0.782)和常规r(0.808)值证明了描述符与其各项活动之间的相关性,并可靠地预测了IKKP活动。使用开发的NF-kB信号通路的仿真模型,我们证明了正常和不同抑制状态之间IkB mRNA表达的差异。当抑制效率增加时,抑制剂1(PS-1145)导致长期振荡。组合的计算模型和NF-kB动态模拟可用于了解抑制机理,从而设计出基于机理的抑制剂。

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