Shockey W Andrew, Kieslich Christopher A, Wilder Catera L, Watson Valencia, Platt Manu O
Wallace H. Coulter Department of Biomedical Engineering at Georgia Institute of Technology & Emory University, 950 Atlantic Drive, Suite 3015, Atlanta, GA 30332 USA.
Cell Mol Bioeng. 2019 Jun 19;12(4):275-288. doi: 10.1007/s12195-019-00580-5. eCollection 2019 Aug.
Cysteine cathepsins are implicated in breast cancer progression, produced by both transformed epithelial cells and infiltrated stromal cells in tumors, but to date, no cathepsin inhibitor has been approved for clinical use due to unexpected side effects. This study explores cellular feedback to cathepsin inhibitors that might yield non-intuitive responses, and uses computational models to determine underlying cathepsin-inhibitor dynamics.
MDA-MB-231 cells treated with E64 were tested by multiplex cathepsin zymography and immunoblotting to quantify total, active, and inactive cathepsins S and L. This data was used to parameterize mathematical models of intracellular free and inhibited cathepsins, and then applied to a dynamic model predicting cathepsin responses to other classes of cathepsin inhibitors that have also failed clinical trials.
E64 treated cells exhibited increased amounts of active cathepsin S and reduced amount of active cathepsin L, although E64 binds tightly to both. This inhibitor response was not unique to cancer cells or any one cell type, suggesting an underlying fundamental mechanism of E64 preserving activity of cathepsin S, but not cathepsin L. Computational models were able to predict and differentiate between inhibitor-bound, active, and inactive cathepsin species and demonstrate how different classes of cathepsin inhibitors can have drastically divergent effects on active cathepsins located in different intracellular compartments.
Together, this work has important implications for the development of mathematical model systems for protease inhibition in tissue destructive diseases, and consideration of preservation mechanisms by inhibitors that could alter perceived benefits of these treatment modalities.
半胱氨酸组织蛋白酶与乳腺癌进展有关,由肿瘤中转化的上皮细胞和浸润的基质细胞产生,但迄今为止,由于意外的副作用,尚无组织蛋白酶抑制剂被批准用于临床。本研究探索了细胞对组织蛋白酶抑制剂的反馈,这种反馈可能产生非直观的反应,并使用计算模型来确定潜在的组织蛋白酶-抑制剂动力学。
用E64处理的MDA-MB-231细胞通过多重组织蛋白酶酶谱分析和免疫印迹进行测试,以量化总的、活性的和无活性的组织蛋白酶S和L。该数据用于参数化细胞内游离和受抑制的组织蛋白酶的数学模型,然后应用于预测组织蛋白酶对其他也已在临床试验中失败的组织蛋白酶抑制剂类别的反应的动态模型。
尽管E64与组织蛋白酶S和L都紧密结合,但用E64处理的细胞中活性组织蛋白酶S的量增加,而活性组织蛋白酶L的量减少。这种抑制剂反应并非癌细胞或任何一种细胞类型所特有,这表明E64存在一种潜在的基本机制,可保留组织蛋白酶S的活性,但不能保留组织蛋白酶L的活性。计算模型能够预测和区分与抑制剂结合的、活性的和无活性的组织蛋白酶种类,并证明不同类别的组织蛋白酶抑制剂如何对位于不同细胞内区室的活性组织蛋白酶产生截然不同的影响。
总之,这项工作对于组织破坏性疾病中蛋白酶抑制的数学模型系统的开发具有重要意义,并且对于考虑可能改变这些治疗方式预期益处的抑制剂的保留机制具有重要意义。