Chudasama Vaishali L, Ovacik Meric A, Abernethy Darrell R, Mager Donald E
Department of Pharmaceutical Sciences, University at Buffalo, State University of New York, Buffalo, New York (V.L.C., M.A.O., D.E.M.); and Office of Clinical Pharmacology, Food and Drug Administration, Silver Springs, Maryland (D.R.A.).
Department of Pharmaceutical Sciences, University at Buffalo, State University of New York, Buffalo, New York (V.L.C., M.A.O., D.E.M.); and Office of Clinical Pharmacology, Food and Drug Administration, Silver Springs, Maryland (D.R.A.)
J Pharmacol Exp Ther. 2015 Sep;354(3):448-58. doi: 10.1124/jpet.115.224766. Epub 2015 Jul 10.
Systems models of biological networks show promise for informing drug target selection/qualification, identifying lead compounds and factors regulating disease progression, rationalizing combinatorial regimens, and explaining sources of intersubject variability and adverse drug reactions. However, most models of biological systems are qualitative and are not easily coupled with dynamical models of drug exposure-response relationships. In this proof-of-concept study, logic-based modeling of signal transduction pathways in U266 multiple myeloma (MM) cells is used to guide the development of a simple dynamical model linking bortezomib exposure to cellular outcomes. Bortezomib is a commonly used first-line agent in MM treatment; however, knowledge of the signal transduction pathways regulating bortezomib-mediated cell cytotoxicity is incomplete. A Boolean network model of 66 nodes was constructed that includes major survival and apoptotic pathways and was updated using responses to several chemical probes. Simulated responses to bortezomib were in good agreement with experimental data, and a reduction algorithm was used to identify key signaling proteins. Bortezomib-mediated apoptosis was not associated with suppression of nuclear factor κB (NFκB) protein inhibition in this cell line, which contradicts a major hypothesis of bortezomib pharmacodynamics. A pharmacodynamic model was developed that included three critical proteins (phospho-NFκB, BclxL, and cleaved poly (ADP ribose) polymerase). Model-fitted protein dynamics and cell proliferation profiles agreed with experimental data, and the model-predicted IC50 (3.5 nM) is comparable to the experimental value (1.5 nM). The cell-based pharmacodynamic model successfully links bortezomib exposure to MM cellular proliferation via protein dynamics, and this model may show utility in exploring bortezomib-based combination regimens.
生物网络的系统模型有望为药物靶点选择/鉴定、确定先导化合物和调节疾病进展的因素、使联合用药方案合理化以及解释个体间差异和药物不良反应的来源提供信息。然而,大多数生物系统模型都是定性的,并且不容易与药物暴露-反应关系的动力学模型相结合。在这项概念验证研究中,使用U266多发性骨髓瘤(MM)细胞中信号转导通路的基于逻辑的建模来指导一个简单动力学模型的开发,该模型将硼替佐米暴露与细胞结果联系起来。硼替佐米是MM治疗中常用的一线药物;然而,调节硼替佐米介导的细胞毒性的信号转导通路的知识并不完整。构建了一个包含66个节点的布尔网络模型,该模型包括主要的生存和凋亡通路,并使用对几种化学探针的反应进行更新。对硼替佐米的模拟反应与实验数据高度吻合,并使用一种约简算法来识别关键信号蛋白。在该细胞系中,硼替佐米介导的凋亡与核因子κB(NFκB)蛋白抑制的抑制无关,这与硼替佐米药效学的一个主要假设相矛盾。开发了一个药效学模型,该模型包括三种关键蛋白(磷酸化NFκB、BclxL和裂解的聚(ADP核糖)聚合酶)。模型拟合的蛋白动力学和细胞增殖曲线与实验数据一致,并且模型预测的IC50(3.5 nM)与实验值(1.5 nM)相当。基于细胞的药效学模型通过蛋白动力学成功地将硼替佐米暴露与MM细胞增殖联系起来,并且该模型可能在探索基于硼替佐米的联合用药方案中显示出实用性。