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Free kick instead of cross-validation in maximum-likelihood refinement of macromolecular crystal structures

机译:大分子晶体结构的最大似然细化中的任意球代替交叉验证

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摘要

The refinement of a molecular model is a computational procedure by which the atomic model is fitted to the diffraction data. The commonly used target in the refinement of macromolecular structures is the maximum-likelihood (ML) function, which relies on the assessment of model errors. The current ML functions rely on cross-validation. They utilize phase-error estimates that are calculated from a small fraction of diffraction data, called the test set, that are not used to fit the model. An approach has been developed that uses the work set to calculate the phase-error estimates in the ML refinement from simulating the model errors via the random displacement of atomic coordinates. It is called ML free-kick refinement as it uses the ML formulation of the target function and is based on the idea of freeing the model from the model bias imposed by the chemical energy restraints used in refinement. This approach for the calculation of error estimates is superior to the cross-validation approach: it reduces the phase error and increases the accuracy of molecular models, is more robust, provides clearer maps and may use a smaller portion of data for the test set for the calculation of R free or may leave it out completely.
机译:分子模型的完善是一种计算过程,通过该过程,原子模型适合于衍射数据。优化大分子结构的常用目标是最大似然(ML)函数,该函数依赖于模型误差的评估。当前的ML函数依赖于交叉验证。他们利用相位误差估计值,这些估计值是从一小部分衍射数据(称为测试集)中计算出来的,这些数据未用于拟合模型。已经开发出一种方法,该方法使用工作集通过原子坐标的随机位移来模拟模型误差,从而在ML改进中计算出相位误差估计。之所以称为ML任意球精炼,是因为它使用目标函数的ML公式,并且基于将模型从精炼中使用的化学能约束施加的模型偏差中解放出来的思想。这种计算误差估计的方法优于交叉验证方法:它减少了相位误差并提高了分子模型的准确性,更加健壮,提供了更清晰的图谱,并且可能使用较少的数据部分用于测试集。 R的计算是自由的,或可能完全忽略它。

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