Kroon-Batenburg Loes M J, Schreurs Antoine M M, Ravelli Raimond B G, Gros Piet
Crystal and Structural Chemistry, Bijvoet Center for Biomolecular Research, Utrecht University, Padualaan 8, 3584 CH Utrecht, The Netherlands.
M4I Division of Nanoscopy, Maastricht University, PO Box 616, 6200 MD Maastricht, The Netherlands.
Acta Crystallogr D Biol Crystallogr. 2015 Sep;71(Pt 9):1799-811. doi: 10.1107/S1399004715011803. Epub 2015 Aug 25.
Serial crystallography generates still' diffraction data sets that are composed of single diffraction images obtained from a large number of crystals arbitrarily oriented in the X-ray beam. Estimation of the reflection partialities, which accounts for the expected observed fractions of diffraction intensities, has so far been problematic. In this paper, a method is derived for modelling the partialities by making use of the ray-tracing diffraction-integration method EVAL. The method estimates partialities based on crystal mosaicity, beam divergence, wavelength dispersion, crystal size and the interference function, accounting for crystallite size. It is shown that modelling of each reflection by a distribution of interference-function weighted rays yields a still' Lorentz factor. Still data are compared with a conventional rotation data set collected from a single lysozyme crystal. Overall, the presented still integration method improves the data quality markedly. The R factor of the still data compared with the rotation data decreases from 26% using a Monte Carlo approach to 12% after applying the Lorentz correction, to 5.3% when estimating partialities by EVAL and finally to 4.7% after post-refinement. The merging R(int) factor of the still data improves from 105 to 56% but remains high. This suggests that the accuracy of the model parameters could be further improved. However, with a multiplicity of around 40 and an R(int) of ∼50% the merged still data approximate the quality of the rotation data. The presented integration method suitably accounts for the partiality of the observed intensities in still diffraction data, which is a critical step to improve data quality in serial crystallography.
串行晶体学生成的“静态”衍射数据集由从大量在X射线束中任意取向的晶体获得的单个衍射图像组成。到目前为止,反射偏析的估计一直存在问题,反射偏析用于解释预期观察到的衍射强度分数。本文推导了一种利用光线追踪衍射积分方法EVAL对偏析进行建模的方法。该方法基于晶体镶嵌性、光束发散、波长色散、晶体尺寸和干涉函数来估计偏析,并考虑了微晶尺寸。结果表明,用干涉函数加权光线的分布对每个反射进行建模可得到一个“静态”洛伦兹因子。将静态数据与从单个溶菌酶晶体收集的传统旋转数据集进行比较。总体而言,本文提出的静态积分方法显著提高了数据质量。与旋转数据相比,静态数据的R因子从使用蒙特卡罗方法时的26%降至应用洛伦兹校正后的12%,在通过EVAL估计偏析时降至5.3%,最终在精修后降至4.7%。静态数据的合并R(int)因子从105提高到56%,但仍然较高。这表明模型参数的准确性可以进一步提高。然而,多重性约为40且R(int)约为50%时,合并后的静态数据质量接近旋转数据。本文提出的积分方法适当地考虑了静态衍射数据中观察强度的偏析,这是提高串行晶体学数据质量的关键步骤。