Li Juan, Fang Huisheng
Department of Hematology, Nanjing Drum Tower Hospital, The Affiliated Hospital of Nanjing University Medical School, Nanjing, Jiangsu, 210008, People's Republic of China.
School of Life Science and Technology, China Pharmaceutical University, Nanjing, Jiangsu, 210009, People's Republic of China.
J Comput Aided Mol Des. 2016 Jul;30(7):553-8. doi: 10.1007/s10822-016-9924-1. Epub 2016 Aug 3.
In protein structure prediction, a considerable number of models are usually produced by either the Template-Based Method (TBM) or the ab initio prediction. The purpose of this study is to find the critical parameter in assessing the quality of the predicted models. A non-redundant template library was developed and 138 target sequences were modeled. The target sequences were all distant from the proteins in the template library and were aligned with template library proteins on the basis of the transformation matrix. The quality of each model was first assessed with QMEAN and its six parameters, which are C_β interaction energy (C_beta), all-atom pairwise energy (PE), solvation energy (SE), torsion angle energy (TAE), secondary structure agreement (SSA), and solvent accessibility agreement (SAE). Finally, the alignment score (score) was also used to assess the quality of model. Hence, a total of eight parameters (i.e., QMEAN, C_beta, PE, SE, TAE, SSA, SAE, score) were independently used to assess the quality of each model. The results indicate that SSA is the best parameter to estimate the quality of the model.
在蛋白质结构预测中,基于模板的方法(TBM)或从头预测通常会产生大量模型。本研究的目的是找到评估预测模型质量的关键参数。开发了一个非冗余模板库,并对138个目标序列进行了建模。目标序列均与模板库中的蛋白质差异较大,并基于变换矩阵与模板库蛋白质进行比对。首先用QMEAN及其六个参数评估每个模型的质量,这六个参数分别是C_β相互作用能(C_beta)、全原子成对能量(PE)、溶剂化能(SE)、扭转角能量(TAE)、二级结构一致性(SSA)和溶剂可及性一致性(SAE)。最后,比对得分(score)也用于评估模型质量。因此,总共八个参数(即QMEAN、C_beta、PE、SE、TAE、SSA、SAE、score)被独立用于评估每个模型的质量。结果表明,SSA是估计模型质量的最佳参数。