| Literature DB >> 24564425 |
Chetna Tyagi, Sonam Grover, Jaspreet Dhanjal, Sukriti Goyal, Manisha Goyal, Abhinav Grover.
Abstract
BACKGROUND: Development of a cancerous cell takes place when it ceases to respond to growth-inhibiting signals and multiplies uncontrollably and can detach and move to other parts of the body; the process called as metastasis. A particular set of cysteine proteases are very active during cancer metastasis, Cathepsins being one of them. They are involved in tumor growth and malignancy and have also been reported to be overexpressed in tumor cell lines. In the present study, a combinatorial approach comprising three-dimensional quantitative structure-activity relationship (3D QSAR), ligand-based pharmacophore modelling and search followed by cathepsin L structure-based high throughput screening was carried out using an initial set of 28 congeneric thiosemicarbazone derivatives as cathepsin L inhibitors. A 3D QSAR was derived using the alignment of a common thiosemicarbazone substructure. Essential structural features responsible for biological activity were taken into account for development of a pharmacophore model based on 29 congeneric thiosemicarbazone derivatives. This model was used to carry out an exhaustive search on a large dataset of natural compounds. A further cathepsin L structure-based screen identified two top scoring compounds as potent anti-cancer leads.Entities:
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Year: 2013 PMID: 24564425 PMCID: PMC4042235 DOI: 10.1186/1471-2164-14-S8-S10
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Unicolumn statistics for training and test set for Cathepsin L inhibiting compounds
| Set | Column name | Average | Max | Min | Std Dev | Sum |
|---|---|---|---|---|---|---|
| Training | pIC50 | 6.5100 | 7.6400 | 5.310 | 0.7130 | 14.7297 |
| Test | pIC50 | 6.3022 | 7.0990 | 5.580 | 0.6795 | 3.5110 |
The statistical parameters calculated for developed 3D-QSAR model
| Dep Variable | ZScore r2 | ZScore q2 | Best Rand r2 | Best Rand q2 | Alpha Rand r2 | Alpha Rand q2 | Z Score Pred r2 | best Rand Pred r2 | alpha Rand Pred r2 |
|---|---|---|---|---|---|---|---|---|---|
| pIC50 | 5.55599 | 3.71813 | 0.56529 | 0.32339 | 0.0000 | 0.00100 | 1.45442 | 0.90479 | 0.100000 |
Figure 1Graphical representation of observed vs. predicted activity for training and test set.
Figure 2Radar plots showing the observed and predicted activities for (a) training set (b) test set.
Figure 3Contribution plot of 3D descriptors of the generated QSAR model.
Figure 4Depiction of aligned congeneric set of molecules and 3D descriptors marked in the cubic grid.
Statistical values of all the pharmacophore hypotheses generated for virtual screening
| Row | ID | Survival | Survival-inactive | Selectivity | Matches |
|---|---|---|---|---|---|
| 1 | ADDRR.4 | 3.691 | 1.131 | 1.526 | 26 |
| 2 | ADDRR.8 | 3.693 | 1.130 | 1.548 | 26 |
| 3 | ADDHR.6 | 2.588 | 0.843 | 1.649 | 26 |
| 4 | ADDHR.12 | 2.997 | 0.843 | 1.668 | 26 |
| 5 | ADDHR.18 | 2.956 | 0.819 | 1.687 | 26 |
| 6 | ADDHR.15 | 2.809 | 0.737 | 1.731 | 26 |
| 7 | ADDHR.16 | 2.748 | 0.747 | 1.737 | 26 |
| 8 | ADDHR.20 | 2.708 | 0.706 | 1.745 | 26 |
| 9 | ADHRR.4 | 2.812 | 0.780 | 1.781 | 26 |
| 10 | ADHRR.6 | 2.796 | 0.755 | 1.837 | 26 |
| 11 | ADHRR.10 | 2.781 | 0.743 | 1.865 | 26 |
| 13 | DDHRR.12 | 2.792 | 0.741 | 2.068 | 26 |
Figure 5Alignment of dataset molecules along with pharmacophoric features of DDHRR.8.
Top scoring compounds screened using the selected pharmacophore hypothesis
| Compound ID | XP score | Align Score | Vector Score | Volume Score | Fitness | Predicted activity (using 3D QSAR model) |
|---|---|---|---|---|---|---|
| ZINC08764437 | -7.972908 | 1.195091 | 0.567087 | 0.348039 | 0.919217 | 5.729 |
| ZINC03846634 | -7.575686 | 0.974276 | 0.229897 | 0.310700 | 0.728700 | 5.750 |
| ZINC03846477 | -7.222795 | 0.996626 | 0.614281 | 0.438287 | 1.222046 | 5.701 |
| ZINC35415799 | -7.173709 | 0.887849 | 0.369075 | 0.334232 | 0.963432 | 5.760 |
| ZINC13570446 | -7.071575 | 0.961697 | 0.405166 | 0.327059 | 0.930810 | 5.7553 |
| ZINC13570446 (conformer) | -7.054554 | 0.628301 | 0.303334 | 0.325527 | 1.105277 | 5.790 |
Figure 6Chemical structures of screened natural molecules (a) NFP (b) APQ.
Figure 7Hydrophobic interactions between cathepsin L and screened compounds (a) NFP (b) APQ.