Ladiwala Asif, Xia Fang, Luo Qiong, Breneman Curt M, Cramer Steven M
Department of Chemical and Biological Engineering, Rensselaer Polytechnic Institute, Troy, New York 12180, USA.
Biotechnol Bioeng. 2006 Apr 5;93(5):836-50. doi: 10.1002/bit.20771.
In the present work, the effect of stationary phase resin chemistry and protein physicochemical properties on protein binding affinity in hydrophobic interaction chromatography (HIC) was investigated using linear gradient chromatography and quantitative structure-retention relationship (QSRR) modeling. Linear gradient experiments were carried out for a set of model proteins on four different HIC resins having different backbone and ligand chemistry. The retention data exhibited significant differences in protein binding affinity, not only across the phenyl and butyl ligand chemistries, but also for the different backbone chemistries found in the Sepharose (cross-linked agarose) and the Toyopearl 650 M (polymethacrylate) series of resins. QSRR models based on a Support Vector Machine (SVM) approach were developed for the linear retention data using molecular descriptors based on protein crystal structure and primary sequence information as well as a set of new hydrophobicity descriptors based on the solvent accessible protein surface area. The results indicate that the QSRR models were successfully able to capture and selectivity predict the changes observed in these systems. Furthermore, the new descriptors resulted in physically interpretable models of protein retention and provided insights into the factors influencing protein affinity in these different HIC systems. The approach put forth in this study provides a framework for developing predictive tools and for gaining insight into protein selectivity in hydrophobic interaction chromatography.
在本研究中,使用线性梯度色谱法和定量结构-保留关系(QSRR)建模,研究了固定相树脂化学性质和蛋白质物理化学性质对疏水相互作用色谱(HIC)中蛋白质结合亲和力的影响。对一组模型蛋白质在四种具有不同主链和配体化学性质的不同HIC树脂上进行了线性梯度实验。保留数据显示出蛋白质结合亲和力存在显著差异,不仅在苯基和丁基配体化学性质之间,而且在琼脂糖(交联琼脂糖)和Toyopearl 650 M(聚甲基丙烯酸酯)系列树脂中发现的不同主链化学性质之间也是如此。基于支持向量机(SVM)方法,利用基于蛋白质晶体结构和一级序列信息的分子描述符以及一组基于溶剂可及蛋白质表面积的新疏水性描述符,为线性保留数据开发了QSRR模型。结果表明,QSRR模型成功地捕捉并选择性地预测了这些系统中观察到的变化。此外,新的描述符产生了蛋白质保留的可物理解释模型,并深入了解了影响这些不同HIC系统中蛋白质亲和力的因素。本研究中提出的方法为开发预测工具和深入了解疏水相互作用色谱中的蛋白质选择性提供了一个框架。