首页> 外文会议>Annual International Conference on Research in Computational Molecular Biology >RIBRA—An Error-Tolerant Algorithm for the NMR Backbone Assignment Problem
【24h】

RIBRA—An Error-Tolerant Algorithm for the NMR Backbone Assignment Problem

机译:RIBRA - 一种用于NMR骨干分配问题的差错算法

获取原文

摘要

We develop an iterative relaxation algorithm, called RIBRA, for NMR protein backbone assignment. RIBRA applies nearest neighbor and weighted maximum independent set algorithms to solve the problem. To deal with noisy NMR spectral data, RIBRA is executed in an iterative fashion based on the quality of spectral peaks. We first produce spin system pairs using the spectral data without missing peaks, then the data group with one missing peak, and finally, the data group with two missing peaks. We test RIBRA on two real NMR datasets: hb-SBD and hbLBD, and perfect BMRB data (with 902 proteins) and four synthetic BMRB data which simulate four kinds of errors. The accuracy of RIBRA on hbSBD and hbLBD are 91.4% and 83.6%, respectively. The average accuracy of RIBRA on perfect BMRB datasets is 98.28%, and 98.28%, 95.61%, 98.16% and 96.28% on four kinds of synthetic datasets, respectively.
机译:我们开发一种迭代放松算法,称为RIBRA,用于NMR蛋白质骨干分配。 RIBRA应用最近的邻居和加权最大独立集合算法来解决问题。为了处理嘈杂的NMR光谱数据,RIBRA基于谱峰的质量以迭代方式执行。我们首先使用频谱数据生成旋转系统对而不丢失峰值,然后具有一个缺少峰值的数据组,最后,具有两个缺失峰的数据组。我们在两个真实NMR数据集上测试Ribra:HB-SBD和HBLBD,以及完美的BMRB数据(带902蛋白)和四种合成BMRB数据,用于模拟四种错误。 HBSBD和HBLBD上Ribra的准确性分别为91.4%和83.6%。完美BMRB数据集的RIBRA的平均精度分别为98.28%,98.28%,95.28%,95.61%,95.1%和96.6%,96.16%和96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%,96.28%和96.28%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号