Michael J Barnett,Rick P Millane,Richard L Kingston
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The analysis is based on the addition of random error to the phases of previously determined protein crystal structures, followed by evaluation of the ability to recover the correct phase set as the distance from the solution increases. The properties of the difference-map (DM), relaxed-reflect-reflect (RRR) and relaxed averaged alternating reflectors (RAAR) algorithms are compared. All of these algorithms prove to be effective for crystallographic phase retrieval, and the useful ranges of the adjustable parameter which controls their behavior are established. When these algorithms converge to the solution, the algorithm trajectory becomes stationary; however, the density function continues to fluctuate significantly around its mean position. 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引用次数: 0
摘要
对于三分之二以上体积被溶剂占据的蛋白质晶体来说,溶剂区域的无特征性往往会产生一个强大的约束条件,足以允许对 X 射线衍射数据进行直接相位分析。实际应用依赖于使用具有良好全局收敛特性的迭代投影算法来解决困难的非凸相位检索问题。本文系统地探讨了使用迭代投影算法进行相位检索的一些方面,其中蛋白质和溶剂区域的衍射数据和密度值分布是唯一的约束条件。分析的基础是在先前确定的蛋白质晶体结构相位中加入随机误差,然后评估随着与溶液距离的增加恢复正确相位集的能力。比较了差分图算法(DM)、松弛反射算法(RRR)和松弛平均交替反射算法(RAAR)的特性。所有这些算法都被证明对晶体学相位检索有效,并确定了控制其行为的可调参数的有用范围。当这些算法收敛到解决方案时,算法轨迹会变得静止;然而,密度函数会继续围绕其平均位置大幅波动。研究表明,在算法收敛后,对静止区域内的算法轨迹进行平均,可以改善密度估算,这一过程优于以往的相位或密度细化方法。
Analysis of crystallographic phase retrieval using iterative projection algorithms.
For protein crystals in which more than two thirds of the volume is occupied by solvent, the featureless nature of the solvent region often generates a constraint that is powerful enough to allow direct phasing of X-ray diffraction data. Practical implementation relies on the use of iterative projection algorithms with good global convergence properties to solve the difficult nonconvex phase-retrieval problem. In this paper, some aspects of phase retrieval using iterative projection algorithms are systematically explored, where the diffraction data and density-value distributions in the protein and solvent regions provide the sole constraints. The analysis is based on the addition of random error to the phases of previously determined protein crystal structures, followed by evaluation of the ability to recover the correct phase set as the distance from the solution increases. The properties of the difference-map (DM), relaxed-reflect-reflect (RRR) and relaxed averaged alternating reflectors (RAAR) algorithms are compared. All of these algorithms prove to be effective for crystallographic phase retrieval, and the useful ranges of the adjustable parameter which controls their behavior are established. When these algorithms converge to the solution, the algorithm trajectory becomes stationary; however, the density function continues to fluctuate significantly around its mean position. It is shown that averaging over the algorithm trajectory in the stationary region, following convergence, improves the density estimate, with this procedure outperforming previous approaches for phase or density refinement.