Department of Chemistry, Shiraz University, Shiraz, Iran.
Amino Acids. 2011 Apr;40(4):1169-83. doi: 10.1007/s00726-010-0741-x. Epub 2010 Sep 16.
A new source of amino acid (AA) indices based on quantum topological molecular similarity (QTMS) descriptors has been proposed for use in QSAR study of peptides. For each bond of the chemical structure of AA, eight electronic properties were calculated using the approaches of bond critical point and theory of atom in molecule. Thus, for each molecule a data matrix of QTMS descriptors (having information from both topology and electronic features) were calculated. Using four different criterion based on principal component analysis of the QTMS data matrices, four different sets of AA indices were generated. The indices were used as the input variables for QSAR study (employing genetic algorithm-partial least squares) of three peptides' data sets, namely, angiotensin-converting enzyme inhibitors, bactericidal peptides and the peptides binding to the HLA-A*0201 molecule. The obtained models had better prediction ability or a comparable one with respect to the previously reported models. In addition, by using the proposed indices and analysis of the variable important in projection, the active site of the peptides which plays a significant role in the biological activity of interest, was identified.
提出了一种基于量子拓扑分子相似性(QTMS)描述符的新氨基酸(AA)指数源,用于肽的定量构效关系(QSAR)研究。对于 AA 的化学结构中的每个键,使用键临界点和分子中原子理论的方法计算了八个电子性质。因此,为每个分子计算了 QTMS 描述符(具有拓扑和电子特征信息)的数据矩阵。使用基于 QTMS 数据矩阵的主成分分析的四个不同标准,生成了四个不同的 AA 指数集。将这些指数用作三个肽数据集的 QSAR 研究(使用遗传算法-偏最小二乘)的输入变量,即血管紧张素转化酶抑制剂、杀菌肽和与 HLA-A*0201 分子结合的肽。与之前报道的模型相比,获得的模型具有更好的预测能力或可比较的预测能力。此外,通过使用所提出的指数和投影变量重要性分析,确定了在感兴趣的生物活性中起重要作用的肽的活性位点。