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PASA - A program for automated protein NMR backbone signal assignment by pattern-filtering approach

机译:PASA-通过模式过滤方法自动分配蛋白质NMR主链信号的程序

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摘要

We present a new program, PASA (Program for Automated Sequential Assignment), for assigning protein backbone resonances based on multidimensional heteronuclear NMR data. Distinct from existing programs, PASA emphasizes a per-residue-based pattern-filtering approach during the initial stage of the automated C-13(alpha) and/or C-13(beta) chemical shift matching. The pattern filter employs one or multiple constraints such as C-13(alpha)/C-beta chemical shift ranges for different amino acid types and side-chain spin systems, which helps to rule out, in a stepwise fashion, improbable assignments as resulted from resonance degeneracy or missing signals. Such stepwise filtering approach substantially minimizes early false linkage problems that often propagate, amplify, and ultimately cause complication or combinatorial explosion of the automation process. Our program (http://www.lerner.ccf.org/moleccard/qin/) was tested on four representative small-large sized proteins with various degrees of resonance degeneracy and missing signals, and we show that PASA achieved the assignments efficiently and rapidly that are fully consistent with those obtained by laborious manual protocols. The results demonstrate that PASA may be a valuable tool for NMR-based structural analyses, genomics, and proteomics.
机译:我们提出了一个新程序,PASA(自动顺序分配程序),用于基于多维异核NMR数据分配蛋白质骨架共振。与现有程序不同,PASA强调在自动C-13α和/或C-13β化学位移匹配的初始阶段基于残基的模式过滤方法。模式过滤器针对不同的氨基酸类型和侧链自旋系统采用一个或多个约束条件,例如C-13α/C-β化学位移范围,这有助于逐步消除产生的不太可能的分配共振退化或信号丢失。这种逐步过滤方法基本上使早期的错误链接问题最小化,该错误链接问题经常传播,放大并最终导致自动化过程的复杂性或组合爆炸性增长。我们的程序(http://www.lerner.ccf.org/moleccard/qin/)已针对四种具有不同程度的共振简并性和缺失信号的代表性小蛋白进行了测试,结果表明PASA有效地完成了任务,并且速度与费力的手动操作程序完全一致。结果表明,PASA可能是基于NMR的结构分析,基因组学和蛋白质组学的有价值的工具。

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