Morshed Nader, Echols Nathaniel, Adams Paul D
College of Letters and Science, University of California, Berkeley, CA 94720, USA.
Physical Biosciences Division, Lawrence Berkeley National Laboratory, Berkeley, CA 94720, USA.
Acta Crystallogr D Biol Crystallogr. 2015 May;71(Pt 5):1147-58. doi: 10.1107/S1399004715004241. Epub 2015 Apr 25.
In the process of macromolecular model building, crystallographers must examine electron density for isolated atoms and differentiate sites containing structured solvent molecules from those containing elemental ions. This task requires specific knowledge of metal-binding chemistry and scattering properties and is prone to error. A method has previously been described to identify ions based on manually chosen criteria for a number of elements. Here, the use of support vector machines (SVMs) to automatically classify isolated atoms as either solvent or one of various ions is described. Two data sets of protein crystal structures, one containing manually curated structures deposited with anomalous diffraction data and another with automatically filtered, high-resolution structures, were constructed. On the manually curated data set, an SVM classifier was able to distinguish calcium from manganese, zinc, iron and nickel, as well as all five of these ions from water molecules, with a high degree of accuracy. Additionally, SVMs trained on the automatically curated set of high-resolution structures were able to successfully classify most common elemental ions in an independent validation test set. This method is readily extensible to other elemental ions and can also be used in conjunction with previous methods based on a priori expectations of the chemical environment and X-ray scattering.
在大分子模型构建过程中,晶体学家必须检查孤立原子的电子密度,并区分含有结构化溶剂分子的位点和含有元素离子的位点。这项任务需要金属结合化学和散射特性的特定知识,并且容易出错。此前已描述了一种基于为多种元素手动选择的标准来识别离子的方法。在此,描述了使用支持向量机(SVM)将孤立原子自动分类为溶剂或各种离子之一。构建了两个蛋白质晶体结构数据集,一个包含存异常衍射数据的手动整理结构,另一个包含自动筛选的高分辨率结构。在手动整理的数据集上,SVM分类器能够高精度地区分钙与锰、锌、铁和镍,以及将这五种离子与水分子区分开来。此外,在自动整理的高分辨率结构数据集上训练的SVM能够在独立验证测试集中成功地对大多数常见元素离子进行分类。该方法很容易扩展到其他元素离子,也可以与基于化学环境和X射线散射的先验预期的先前方法结合使用。