| Literature DB >> 22747771 |
Mahesh Kumar Teli1, Rajanikant G K.
Abstract
BACKGROUND: Coronary heart disease continues to be the leading cause of mortality and a significant cause of morbidity and account for nearly 30% of all deaths each year worldwide. High levels of cholesterol are an important risk factor for coronary heart disease. The blockage of 3-hydroxy-3-methylglutaryl-coenzyme A (HMG-CoA) reductase activity by small molecule inhibitors has been shown to inhibit hypercholesterolemia. Herein, we describe the development of effective and robust pharmacophore model and the structure-activity relationship studies of 43N-iso-propyl pyrrole-based derivatives previously reported for HMG-CoA reductase inhibition.Entities:
Year: 2012 PMID: 22747771 PMCID: PMC3519668 DOI: 10.1186/2191-2858-2-25
Source DB: PubMed Journal: Org Med Chem Lett ISSN: 2191-2858
Figure 1Common pharmacophore generation and validation: (a) Common pharmacophore aligned with most active ligand [two aromatic rings (dark yellow circle)], two acceptor [pink sphere with two arrows], and one negative ionic [pink sphere]; (b) common pharmacophoric sites of active ligand with distance. All distances are in Å unit; (c) alignment of all active ligands to the pharmacophore; and (d) alignment of all ligands (active and inactive) to the pharmacophore.
Score of different parameters of the AANRR hypothesis
| AANRR | 3.603 | 1.593 | 0.9 | 0.967 | 0.732 | 2.077 | 12 | 4.741 | 6.097 | 2.011 |
PLS statistical parameters of the selected 3D-QSAR model
| AANRR | 1 | 0.4323 | 0.5171 | 31 | 5.181e-006 | 0.4018 | 0.3971 | 0.6346 |
| | 2 | 0.3191 | 0.7459 | 41.1 | 4.687e-009 | 0.4157 | 0.3549 | 0.676 |
| | 3 | 0.2369 | 0.865 | 57.7 | 7.249e-012 | 0.3565 | 0.5255 | 0.7782 |
| 4 | 0.1369 | 0.9566 | 143.2 | 2.609e-017 | 0.2965 | 0.6719 | 0.8371 |
SD, standard deviation of the regression; R, squared value of R2 for the regression; F, variance ratio. Large values of F indicate a more statistically significant regression, P, significance level of variance ratio. Smaller values indicate a greater degree of confidence; RMSE,root-mean-square error, Q, squared value of Q2 for the predicted activities, Pearson-R, Pearson R value for the correlation between the predicted and observed activity for the test set.
Figure 2Fitness graph between observed activity versus phase-predicted activity for training and test set compounds.
Fitness and predicted activity data for test and training set of compounds
| 1 | 228583 | Training | 4.427 | 4 | 4.49 | Inactive | 1.61 |
| 2 | 228954 | Training | 4.932 | 4 | 4.85 | Inactive | 1.6 |
| 3 | 228955 | Training | 6.523 | 4 | 6.67 | Active | 2.33 |
| 4 | 249273 | Training | 5.469 | 4 | 5.53 | | 2.85 |
| 5 | 249724 | Training | 6.097 | 4 | 6.31 | Active | 2.85 |
| 6 | 249884 | Training | 4.921 | 4 | 5.2 | Inactive | 2.85 |
| 7 | 250088 | Training | 5.18 | 4 | 5.18 | | 1.58 |
| 8 | 250090 | Training | 4.699 | 4 | 4.57 | Inactive | 1.57 |
| 9 | 250317 | Training | 6.523 | 4 | 6.5 | Active | 2.32 |
| 10 | 250500 | Training | 4.824 | 4 | 4.88 | Inactive | 2.36 |
| 11 | 250707 | Training | 5.42 | 4 | 5.41 | | 2.79 |
| 12 | 250749 | Training | 6.155 | 4 | 6.19 | Active | 2.79 |
| 13 | 250953 | Training | 5.538 | 4 | 5.5 | | 2.29 |
| 14 | 251499 | Training | 5.921 | 4 | 5.76 | | 2.67 |
| 15 | 389216 | Training | 5.538 | 4 | 5.47 | | 2.53 |
| 16 | 389217 | Training | 4.785 | 4 | 4.78 | Inactive | 2.2 |
| 17 | 389442 | Training | 5.523 | 4 | 5.57 | | 2.55 |
| 18 | 391002 | Training | 5.523 | 4 | 5.43 | | 2.62 |
| 19 | 394937 | Training | 5.745 | 4 | 5.78 | | 2.8 |
| 20 | 398239 | Training | 5.824 | 4 | 5.76 | | 2.87 |
| 21 | 398551 | Training | 6.222 | 4 | 6.3 | Active | 2.37 |
| 22 | 399313 | Training | 6.097 | 4 | 6.11 | Active | 2.98 |
| 23 | 399315 | Training | 5.745 | 4 | 5.59 | | 2.19 |
| 24 | 399360 | Training | 4.907 | 4 | 5 | Inactive | 1.51 |
| 25 | 399771 | Training | 5.056 | 4 | 5.2 | | 2.86 |
| 26 | 400560 | Training | 5.585 | 4 | 5.6 | | 2.89 |
| 27 | 400874 | Training | 6.699 | 4 | 6.46 | Active | 2.89 |
| 28 | 400973 | Training | 6.398 | 4 | 6.06 | Active | 2.75 |
| 29 | 401293 | Training | 5.658 | 4 | 5.73 | | 1.5 |
| 30 | 403127 | Training | 5.854 | 4 | 5.8 | | 2.3 |
| 31 | 437774 | Training | 6.523 | 4 | 6.65 | Active | 2.3 |
| 32 | 228528 | Test | 5.721 | 4 | 5.62 | | 2.53 |
| 33 | 228667 | Test | 5.018 | 4 | 5.22 | | 1.64 |
| 34 | 249906 | Test | 5.921 | 4 | 6.06 | | 2.9 |
| 35 | 387514 | Test | 5.456 | 4 | 5.58 | | 2.4 |
| 36 | 389002 | Test | 5.745 | 4 | 5.95 | | 2.34 |
| 37 | 389441 | Test | 4.857 | 4 | 4.78 | Inactive | 2.19 |
| 38 | 389443 | Test | 5.328 | 4 | 4.68 | | 1.62 |
| 39 | 398240 | Test | 6.097 | 4 | 5.85 | Active | 3 |
| 40 | 399773 | Test | 6.523 | 4 | 6.06 | Active | 2.29 |
| 41 | 400747 | Test | 6.155 | 4 | 5.76 | Active | 2.78 |
| 42 | 438662 | Test | 4.777 | 4 | 4.9 | Inactive | 2.22 |
| 43 | 438694 | Test | 5.523 | 4 | 5.74 | 2.39 |
Figure 3QSAR visualization of various substituents effect: (a) electron withdrawing feature; (b) hydrogen-bond donor; (c) hydrophobic features; and (d) combined effect (blue cubes showing positive potential while red cubes showing negative potential of particular substitution).
ADME properties of selected hits with the docking score
| 14010678 | 3.61 | −5.58 | −3.61 | −1.97 | 57.81 | 5.7 | −9.22 |
| 35655503 | 2.05 | −4.10 | −2.87 | −1.04 | 70.66 | 5.52 | −9.34 |
| 26508465 | −0.97 | −2.25 | −3.06 | −2.22 | 32.50 | 5.98 | −9.16 |
| 02554357 | 3.45 | −6.05 | −3.93 | −0.92 | 79.57 | 5.23 | −8.95 |
aPredicted octanol/water partition co-efficient log p (acceptable range: −2.0 to 6.5).
bPredicted aqueous solubility; S in mol/L (acceptable range: −6.5 to 0.5).
cPredicted IC50 value for blockage of HERG K+ channels (acceptable range: below −6.0).
dPredicted blood brain barrier permeability(acceptable range: −3 to 1.2).
ePercentage of human oral absorption (.25% is poor and .80% is high).
Figure 4The chemical structures of final hits represented in 2D with docking scores.