Acta Chimica Sinica ›› 2007, Vol. 65 ›› Issue (15): 1420-1426. Previous Articles     Next Articles

Original Articles

人类A3腺苷受体拮抗剂1,2,4-三唑并[1,5-α]喹喔啉衍生物的QSAR研究

战金辉, 李吉来, 黄旭日*, 左明辉, 孙家锺   

  1. (吉林大学理论化学研究所理论化学计算国家重点实验室 长春 130023)
  • 投稿日期:2006-10-30 修回日期:2006-12-25 发布日期:2007-08-14
  • 通讯作者: 黄旭日

QSAR Study on 1,2,4-Triazolo[1,5-α]quinoxaline Derivatives as Human A3 Adenosine Receptor Antagonists

ZHAN Jin-Hui; LI Ji-Lai; HUANG Xu-Ri*; ZUO Ming-Hui; SUN Chia-Chung   

  1. (Institute of Theoretical Chemistry, State Key Laboratory of Theoretical and Computational Chemistry, Jilin University, Changchun 130023)
  • Received:2006-10-30 Revised:2006-12-25 Published:2007-08-14

Binding affinity data of twenty seven 1,2,4-triazolo[1,5-α]quinoxaline derivatives for human adenosine A3 receptor subtype have been subjected to QSAR analysis using genetic algorithm (GA) method. In order to obtain perfect statistical quality model, descriptors from topological, thermodynamic, spatial, electrotopological and quantum chemical class were calculated. The best model is shown below and its index in statistially is LOF=0.291, r2=0.766, radj2=0.723, F-test=17.974, PRESS=3.469, CV-r2=0.791; pKi=13.407-0.027*FC-8E-0.033*FC-8N+0.845*Atype_C_28-19.493*Shadow_XYfrac. Some conclusions are presented that the binding affinity of these compounds increases with reducing weighted electrophilic and nucleophilic atomic frontier electron density at the C-8 position, the fraction of area of molecular shadow in the XY plane over area of enclosing rectangle, and increasing the hydrophobic atom type descriptor (Atpye_C_28). According to this model, we also design two new compounds and predict that they may have high binding affinities. We expect that the present study provide theoretical instruction on the structural modification of quinoxaline derivatives as human A3 adeno-sine receptor antagonists, and may be helpful for probing the mechanism of action between the receptor and its antagonists.

Key words: genetic algorithm, binding affinity, quantum chemical descriptor, QSAR