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Computing Protein Structures from Electron Density Maps: The Missing Fragment Problem

机译:从电子密度图计算蛋白质结构:缺失的片段问题

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Rapid protein structure determination relies greatly on the availability of software that can automatically generate a protein model from an experimental electron density map. Tremendous advances in this area have been achieved recently. In favorable cases, available software can build over 90% of the final model. However, in less favorable circumstances, particularly at medium-low resolution, only about 2/3 completeness is attained. Manual completion of these partial models is usually feasible but time-consuming. The electron density in areas of missing fragments is often of poorer quality, especially for flexible loops, making manual interpretation particularly difficult. Except for the beginning and end of the protein chain, the end points of each missing fragment are known from the partial model. Due to the kinematic chain structure of the protein backbone, loop completion can be approached as an inverse kinematics problem. A fast, two-stage inverse kinematics algorithm is presented that fits a protein chain of known sequence to the electron density map between two anchor points. Our approach first samples a large set of candidates that meet the closure constraint and then refines the most promising candidates to improve the fit. The algorithm has been tested and used to aid protein model completion in areas of poor density, closing loops of up to 12 residues to within 0.3 of the final refined structure. It has also been used to close missing loops of the same length in partial models built at medium-low resolution to within 0.6 ?.
机译:快速蛋白质结构测定依赖于可以从实验电子密度图自动产生蛋白质模型的软件的可用性依赖。最近已经实现了这一领域的巨大进步。在有利的情况下,可用软件可以构建最终模型的90%以上。然而,在不太有利的情况下,特别是在中低分辨率下,达到了大约2/3的完整性。手动完成这些部分模型通常是可行的,但耗时。缺失碎片区域的电子密度通常具有较差的质量,特别是对于柔性环,使手动解释特别困难。除了蛋白质链的开始和结束,从部分模型中已知每个丢失片段的终点。由于蛋白质骨干的运动链结构,循环完成可以作为反向运动学问题接近。提出了一种快速的两阶段反向运动学算法,其适合于两个锚点之间的电子密度图的已知序列的蛋白质链。我们的方法首先对符合关闭约束的大量候选人进行了一组候选者,然后改善最有前途的候选人来改善契合。该算法已经过测试并用于帮助蛋白质模型完成在密度差,闭合12个残留物的闭环到最终精制结构的0.3内。它还被用来关闭在中低分辨率内置的部分模型中缺少相同长度的循环到0.6内?。

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