Hare B J, Prestegard J H
Department of Molecular Biophysics and Biochemistry, Yale University, New Haven, CT 06511.
J Biomol NMR. 1994 Jan;4(1):35-46. doi: 10.1007/BF00178334.
Simulated neural networks are described which aid the assignment of protein NMR spectra. A network trained to recognize amino acid type from TOCSY data was trained on 148 assigned spin systems from E. coli acyl carrier proteins (ACPs) and tested on spin systems from spinach ACP, which has a 37% sequence homology with E. coli ACP and a similar secondary structure. The output unit corresponding to the correct amino acid is one of the four most activated units in 83% of the spin systems tested. The utility of this information is illustrated by a second network which uses a constraint satisfaction algorithm to find the best fit of the spin systems to the amino acid sequence. Application to a stretch of 20 amino acids in spinach ACP results in 75% correct sequential assignment. Since the output of the amino acid type identification network can be coupled with a variety of sequential assignment strategies, the approach offers substantial potential for expediting assignment of protein NMR spectra.
描述了用于辅助蛋白质核磁共振光谱归属的模拟神经网络。一个经过训练可从TOCSY数据识别氨基酸类型的网络,使用来自大肠杆菌酰基载体蛋白(ACP)的148个已归属自旋系统进行训练,并在来自菠菜ACP的自旋系统上进行测试,菠菜ACP与大肠杆菌ACP有37%的序列同源性且二级结构相似。在83%的测试自旋系统中,对应正确氨基酸的输出单元是四个激活程度最高的单元之一。第二个网络说明了此信息的实用性,该网络使用约束满足算法来找到自旋系统与氨基酸序列的最佳匹配。将其应用于菠菜ACP中的一段20个氨基酸,可实现75%的正确序列归属。由于氨基酸类型识别网络的输出可与多种序列归属策略相结合,该方法在加快蛋白质核磁共振光谱归属方面具有巨大潜力。