Banerjee Suvrajit, Parimal Siddharth, Cramer Steven M
Howard P. Isermann Department of Chemical and Biological Engineering, Rensselaer Polytechnic Institute, Troy, NY 12180, USA; Center for Biotechnology and Interdisciplinary Studies, Rensselaer Polytechnic Institute, Troy, NY 12180, USA.
Howard P. Isermann Department of Chemical and Biological Engineering, Rensselaer Polytechnic Institute, Troy, NY 12180, USA; Center for Biotechnology and Interdisciplinary Studies, Rensselaer Polytechnic Institute, Troy, NY 12180, USA.
J Chromatogr A. 2017 Aug 18;1511:45-58. doi: 10.1016/j.chroma.2017.06.059. Epub 2017 Jun 23.
Multimodal (MM) chromatography provides a powerful means to enhance the selectivity of protein separations by taking advantage of multiple weak interactions that include electrostatic, hydrophobic and van der Waals interactions. In order to increase our understanding of such phenomena, a computationally efficient approach was developed that combines short molecular dynamics simulations and continuum solvent based coarse-grained free energy calculations in order to study the binding of proteins to Self Assembled Monolayers (SAM) presenting MM ligands. Using this method, the free energies of protein-MM SAM binding over a range of incident orientations of the protein can be determined. The resulting free energies were then examined to identify the more "strongly bound" orientations of different proteins with two multimodal surfaces. The overall free energy of protein-MM surface binding was then determined and correlated to retention factors from isocratic chromatography. This correlation, combined with analytical expressions from the literature, was then employed to predict protein gradient elution salt concentrations as well as selectivity reversals with different MM resin systems. Patches on protein surfaces that interacted strongly with MM surfaces were also identified by determining the frequency of heavy atom contacts with the atoms of the MM SAMs. A comparison of these patches to Electrostatic Potential and hydrophobicity maps indicated that while all of these patches contained significant positive charge, only the highest frequency sites also possessed hydrophobicity. The ability to identify key binding patches on proteins may have significant impact on process development for the separation of bioproduct related impurities.
多模态(MM)色谱法通过利用包括静电、疏水和范德华相互作用在内的多种弱相互作用,为提高蛋白质分离的选择性提供了一种强大的手段。为了增进我们对这类现象的理解,开发了一种计算效率高的方法,该方法结合了短程分子动力学模拟和基于连续溶剂的粗粒度自由能计算,以研究蛋白质与呈现MM配体的自组装单分子层(SAM)的结合。使用这种方法,可以确定蛋白质在一系列入射方向上与MM SAM结合的自由能。然后检查所得的自由能,以确定不同蛋白质在两个多模态表面上更“紧密结合”的方向。接着确定蛋白质与MM表面结合的总自由能,并将其与等度色谱法的保留因子相关联。这种关联与文献中的分析表达式相结合,随后用于预测蛋白质梯度洗脱盐浓度以及不同MM树脂系统的选择性反转。通过确定重原子与MM SAM原子的接触频率,还识别了蛋白质表面与MM表面强烈相互作用的区域。将这些区域与静电势和疏水性图谱进行比较表明,虽然所有这些区域都含有大量正电荷,但只有频率最高的位点也具有疏水性。识别蛋白质上关键结合区域的能力可能对生物产品相关杂质分离的工艺开发产生重大影响。