Grishaev Alexander, Llinás Miguel
Department of Chemistry, Carnegie Mellon University, Pittsburgh, PA 15213, U.S.A.
J Biomol NMR. 2004 Jan;28(1):1-10. doi: 10.1023/B:JNMR.0000012846.56763.f7.
NMR frequency assignments are usually considered a prerequisite for the analysis of NOESY spectra, in turn required for the calculation of biomolecular structures. In contrast, as we propose here, relatively high numbers of unambiguous NOE identities can be consistently achieved in an automated manner by relying only on grouping resonances into connected spin systems. To achieve this goal, we have developed for proteins two protocols, SPI and BACUS, based on Bayesian inference. SPI (Grishaev and Llinás, 2002c) produces a list of the (1)H resonance frequencies from homo- and hetero-nuclear multidimensional spectra, grouped into effective spin systems. BACUS automatically establishes probabilistic identities of NOESY cross-peaks in terms of the chemical shifts provided by SPI. BACUS requires neither assignment of resonances nor an initial structural model. It successfully copes with chemical shift overlap and does so without cycling through 3D structure calculations. The method exploits the self-consistency of the NOESY graph by taking advantage of a network of J- as well as NOE-connected "reporter" protons sorted via SPI. BACUS was validated by tests on experimental NOESY data recorded for the col 2 and kringle 2 domains.
核磁共振频率归属通常被认为是分析NOESY谱的先决条件,而NOESY谱又是计算生物分子结构所必需的。相比之下,正如我们在此所提出的,仅通过将共振归为相连的自旋系统,就可以以自动化方式持续获得相对大量明确的NOE归属。为实现这一目标,我们基于贝叶斯推理为蛋白质开发了两种方法,SPI和BACUS。SPI(Grishaev和Llinás,2002c)从同核和异核多维谱中生成(1)H共振频率列表,并将其归为有效的自旋系统。BACUS根据SPI提供的化学位移自动确定NOESY交叉峰的概率归属。BACUS既不需要共振归属,也不需要初始结构模型。它成功地处理了化学位移重叠问题,并且无需通过三维结构计算循环来实现。该方法利用了通过SPI排序的J耦合以及NOE连接的“报告”质子网络,利用了NOESY图谱的自洽性。通过对记录的胶原蛋白2和kringle 2结构域的实验NOESY数据进行测试,验证了BACUS方法。