Toba Samuel, Srinivasan Jayashree, Maynard Allister J, Sutter Jon
Accelrys Inc., 10188 Telesis Court, Suite 100, San Diego, California 92121, USA.
J Chem Inf Model. 2006 Mar-Apr;46(2):728-35. doi: 10.1021/ci050410c.
This study provides results from two case studies involving the application of the HypoGenRefine algorithm within Catalyst for the automated generation of excluded volume from ligand information alone. A limitation of pharmacophore feature hypothesis alone is that activity prediction is based purely on the presence and arrangement of pharmacophoric features; steric effects remained unaccounted. Recently reported studies have illustrated the usefulness of combining excluded volumes to the pharmacophore models. In general, these excluded volumes attempt to penalize molecules occupying steric regions that are not occupied by active molecules. The HypoGenRefine algorithm in Catalyst accounts for steric effects on activity, based on the targeted addition of excluded volume features to the pharmacophores. The automated inclusion of excluded volumes to pharmacophore models has been applied to two systems: CDK2 and human DHFR. These studies are used as examples to illustrate how ligands could bind in the protein active site with respect to allowed and disallowed binding regions. Additionally, automated refinement of the pharmacophore with these excluded volume features provides a more selective model to reduce false positives and a better enrichment rate in virtual screening.
本研究给出了两个案例研究的结果,这两个案例涉及在Catalyst中应用HypoGenRefine算法,仅根据配体信息自动生成排除体积。仅药效团特征假设的一个局限性在于,活性预测完全基于药效团特征的存在和排列;空间效应未得到考虑。最近报道的研究表明了将排除体积与药效团模型相结合的有用性。一般来说,这些排除体积试图惩罚占据活性分子未占据的空间区域的分子。Catalyst中的HypoGenRefine算法基于向药效团有针对性地添加排除体积特征,来考虑空间效应对活性的影响。将排除体积自动纳入药效团模型已应用于两个系统:CDK2和人二氢叶酸还原酶。这些研究用作示例来说明配体相对于允许和不允许的结合区域如何在蛋白质活性位点中结合。此外,利用这些排除体积特征对药效团进行自动优化,可提供一个更具选择性的模型,以减少虚拟筛选中的假阳性并提高富集率。