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Proceeding Paper

In Silico Ligand-Based Methods Targeting Porcupine Receptor Inhibitors with Potential Anticancer Effect †

Institute of Chemistry, Romanian Academy, Mihai Viteazul Avenue, 24, 300223 Timisoara, Romania
*
Authors to whom correspondence should be addressed.
Presented at the 22nd International Electronic Conference on Synthetic Organic Chemistry, 15 November–15 December 2018; Available Online: https://sciforum.net/conference/ecsoc-22.
Proceedings 2019, 9(1), 19; https://doi.org/10.3390/ecsoc-22-05674
Published: 14 November 2018

Abstract

:
Porcupine is a protein belonging to the O-acyltransferase family, involved in the catalyzing of palmitoylation of wingless-related integration (WNT) proteins. WNT signaling has significant roles in many physiological functions, e.g., hematopoiesis, homeostasis, neurogenesis, and apoptosis. Anomalous WNT signaling has been observed to be related to tumor generation, and metabolic and neurodegenerative disorders. Therefore, compounds that inhibit this pathway are of great interest for the development of therapeutic approaches. For a better understanding of the common traits of such compounds, we have undertaken an in silico study in order to develop a valid ligand-based pharmacophore model based on a series of porcupine inhibitors. The best pharmacophore hypothesis found after the 3D QSAR validation process is represented by the following features: one hydrogen bond donor (D), three rings (R) and one hydrophobic centroid (H). The 3D-QSAR model obtained using the DRRRH hypothesis shows statistically significant parameters: correlation coefficients for the training set: R2 of 0.90, and a predictive correlation coefficient for the test set, Q2 of 0.86. The assessment of the pharmacophore model was also done and provided very reliable metrics values (Receiver Operating Characteristic—ROC of 1; Robust Initial Enhancement—RIE of 17.97). Thereby, we obtained valuable results which can be further used in the virtual screening process for the discovery of new active compounds with potential anticancer activity.

Published: 14 November 2018

1. Introduction

Porcupine (PORCN) is a protein belonging to the O-acyltransferase family, resident in the endoplasmatic reticulum, involved in the catalyzing of palmitoylation of wingless-related integration (WNT) proteins [1]. This palmitoylation is essential for WNT secretion and signaling [2,3]. The plethora of roles in which WNT signaling is involved include among others: tissue and intestinal homeostasis [4,5], hematopoiesis [6], cell migration [7], and apoptosis [8,9]. Dysregulation of WNT signaling has been observed to be correlated with tumor generation [10,11], metabolic disease [12], fibrosis [13], and neurodegenerative disorders [9,14]. It has been observed that a subset of cancers (colon, ovarian, esophageal, lung, heart, and neck cancers) are related to enhanced cellular sensitivity to WNT [2,15,16].
One way to handle the secretion of WNT is by inhibiting the activity of the PORCN enzyme which has the role in lipid modification of WNT and in WNT biogenesis, its genetic deletion leading to embryonic death [17,18].
The development of PORCN inhibitors being at the beginning of the road, it is space for new and elaborate research in this field of study.
Thus, in order to computationally explore the specific features of PORCN inhibitors with potential anticancer effect, a series of recently synthesized and tested PORCN antagonists [1] were taken in our study. Ligand-based pharmacophore modeling is mostly used, like in this case, when the 3D structure of the target is not available. The identification of the pharmacophoric features of the ligands required for the molecular recognition by their target (PORCN receptor) was explored using Phase software [19] from the Schrödinger suite [https://www.schrodinger.com].

2. Materials and Methods

2.1. Ligand Preparation

A dataset of 17 compounds [1] which act as inhibitors on PORCN receptors was the subject of computational analysis for pharmacophore generation. The 2D structures of the compounds were drawn with Marvin Sketch (version 17.18), from Chemaxon [http://www.chemaxon.com]. The ligand preparation was realized using Ligprep software [20] of Schrödinger. The optimization of the structures was achieved with OPLS_2005 force field, the ionization with Epik [21] using a pH of 7.2 ± 0.2 criterion, and the tautomers and stereoisomers were also obtained.

2.2. Pharmacophore Generation and Validation

Phase [19] with the option: “Develop Common Pharmacophore Hypotheses” was used for the generation and validation of the pharmacophore hypotheses by the involvement of the Atom-based QSAR module. ConfGen [22] was engaged in the generation of multiple conformers for each compound using default settings. The compounds were considered active if the pIC50 value is higher than 8 and inactive if the pIC50 value is lower than 7. An Atom-based 3D-QSAR [23] analysis was carried out by using 1 partial least-squares (PLS) factor and a test set of approx. 28% of compounds was employed. Additionally, a “Validate hypothesis workflow” option was used for scoring of all the resulted hypotheses [https://www.schrodinger.com]. The compounds of the dataset used to develop the pharmacophore models are shown in Table 1 along with their experimental and predicted activity.

3. Results and Discussions

The best pharmacophore obtained is represented by DRRRH hypothesis depicted in Figure 1 and its statistical parameters are presented in Table 2. Pharmacophore sites for DRRRH hypothesis consist of a set of chemical features: one hydrogen donor (D), three aromatic rings (R) and one hydrophobic (H).” The correlation plot of experimental versus predicted activity is shown in Figure 2. The important features for the ligand-receptor interactions are displayed in Figure 3.
The atom type fractions resulted for our pharmacophore hypothesis (DRRRH) are 0.01 for H-bond donor, 0.69 for hydrophobic/non-polar and 0.30 for electron-withdrawing. The best-fitted compound (no. 10) with fitness score value of 3 is also the second-best compound as activity in the series (Table 1). The distances between all the pharmacophore features are presented in Table 3.
Enrichment performance for all hypotheses generated were performed using the “Validate hypothesis workflow” from Phase [19]. Based on these results we are able to identify the most significant hypothesis which satisfy the goals of a virtual screening analysis. For the DRRRH pharmacophore hypothesis, the significant metric values were obtained (Table 4).

4. Conclusions

The best pharmacophore hypothesis has the following features: one hydrogen bond donor (D), three aromatic rings (R), and one hydrophobic (H) region (Figure 1). The evaluation and the validation of this hypothesis has been done by applying the “Atom based QSAR module” and the “Validate hypothesis workflow”. The 3D-QSAR model built using DRRRH hypothesis shows significant statistically parameters, such as: a correlation coefficient, R2 of 0.90 for the training set and a predictive correlation coefficient, Q2 of 0.86. The DRRRH hypothesis was scored and the reliable metrics (ROC of 1; RIE of 17.97 and AUAC of 0.99) were obtained. From the Figure 3b we can see that the inactive compounds are missing one pharmacophore feature which is found in the active compounds (the hydrophobic H4 centroid), which lead to the conclusion that this characteristic may be very important for the biological activity of the ligands. Further, databases of compounds can be screened in searching of molecules which present the pharmacophoric features that match this hypothesis, in order to predict novel porcupine inhibitors with potential anticancer activity, against Wnt signaling pathway.

Author Contributions

A.B. conceived and designed the computational framework of the study, A.B. and L.C performed all in silico experiments. All authors contributed to the writing of the manuscript and approved its content.

Acknowledgments

This work was financially supported by the Project No. 1.1 of the Institute of Chemistry. We thank Chemaxon Ltd. for providing the academic license and to Dr. Ramona Curpan (Institute of Chemistry), for providing access to Schrödinger software acquired through the PN–II–RU–TE–2014–4–422 projects funded by CNCS–UEFISCDI. Romania.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Xu, Z.; Li, J.; Wu, Y.; Sun, Z.; Luo, L.; Hu, Z.; He, S.; Zheng, J.; Zhang, H.; Zhang, X. Design, synthesis, and evaluation of potent Wnt signaling inhibitors featuring a fused 3-ring system. Eur. J. Med. Chem. 2016, 108, 154–165. [Google Scholar] [CrossRef] [PubMed]
  2. Madan, B.; Ke, Z.; Harmston, N.; Ho, S.Y.; Frois, A.O.; Alam, J.; Jeyaraj, D.A.; Pendharkar, V.; Ghosh, K.; Virshup, I.H.; et al. Wnt addiction of genetically defined cancers reversed by PORCN inhibition. Oncogene 2016, 35, 2197–2207. [Google Scholar] [CrossRef] [PubMed]
  3. Lum, L.; Clevers, H. The Unusual Case of Porcupine. Science 2012, 337, 922–923. [Google Scholar] [CrossRef] [PubMed]
  4. Alonso, L.; Fuchs, E. Stem cells in the skin: Waste not, Wnt not. Genes Dev. 2003, 17, 1189–1200. [Google Scholar] [CrossRef] [PubMed]
  5. Pinto, D.; Clevers, H. Wnt control of stem cells and differentiation in the intestinal epithelium. Exp. Cell Res. 2005, 306, 357–363. [Google Scholar] [CrossRef] [PubMed]
  6. Nemeth, M.J.; Mak, K.K.; Yang, Y.; Bodine, D.M. β-catenin expression in the bone marrow microenvironment is required for long-term maintenance of primitive hematopoietic cells. Stem Cells 2009, 27, 1109–1119. [Google Scholar] [CrossRef] [PubMed]
  7. Cisternas, P.; Henriquez, J.P.; Brandan, E.; Inestrosa, N.C. Wnt signaling in skeletal muscle dynamics: Myogenesis, neuromuscular synapse and fibrosis. Mol. Neurobiol. 2013, 49, 574–589. [Google Scholar] [CrossRef] [PubMed]
  8. Pecinas-Slaus, N. Wnt signal transduction pathway and apoptosis: A review. Cancer Cell. Int. 2010, 10, 22. [Google Scholar] [CrossRef] [PubMed]
  9. Kahn, M. Can we safely target the WNT pathway? Nat. Rev. Drug Discov. 2014, 13, 513–532. [Google Scholar] [CrossRef] [PubMed]
  10. Porfiri, E.; Rubinfeld, B.; Albert, I.; Hovanes, K.; Waterman, M.; Polakis, P. Induction of a β-catenin-LEF-1 complex by Wnt-1 and transforming mutants of β-catenin. Oncogene 1997, 15, 2833–2839. [Google Scholar] [CrossRef] [PubMed]
  11. Anastas, J.N.; Moon, R.T. WNT signalling pathways as therapeutic targets in cancer. Nat. Rev. Cancer 2013, 13, 11–26. [Google Scholar] [CrossRef] [PubMed]
  12. Schinner, S. Wnt-signalling and the metabolic syndrome. Horm. Metab. Res. 2009, 41, 159–163. [Google Scholar] [CrossRef] [PubMed]
  13. Dees, C.; Distler, J.H. Canonical Wnt signaling as a key-regulator of fibrogenesis—Implications for targeted therapies? Exp. Dermatol. 2013, 22, 710–713. [Google Scholar] [CrossRef] [PubMed]
  14. Inestrosa, N.C.; Montecinos-Oliva, C.; Fuenzalida, M. Wnt signaling: Role in Alzheimer disease and schizophrenia. J. Neuroimmune Pharmacol. 2012, 7, 788–807. [Google Scholar] [CrossRef] [PubMed]
  15. Seshagiri, S.; Stawiski, E.W.; Durinck, S.; Modrusan, Z.; Storm, E.E.; Conboy, C.B.; Chaudhuri., S.; Guan, Y.; Janakiraman, V.; Jaiswal, B.S.; et al. Recurrent R-spondin fusions in colon cancer. Nature 2012, 488, 660–664. [Google Scholar] [CrossRef] [PubMed]
  16. Cardona, G.M.; Bell, K.; Portale, J.; Gaffney, D.; Moy, C.; Platero, S.; Lorenzi, M.V.; Karker, J. Identification of R-Spondin Fusions in Various Types of Human Cancer. In Proceedings of the 105th Annual Meeting of the American Association for Cancer Research 2014, San Diego, CA, USA, 5–9 April 2014. Abstract no. 2408. [Google Scholar]
  17. Covey, T.M.; Kaur, S.; Ong, T.T.; Proffitt, K.D.; Wu, P.Tan.; Virshup, D.M. PORCN Moonlights in a Wnt-Independent Pathway That Regulates Cancer Cell Proliferation. PLoS ONE 2012, 7, e34532. [Google Scholar] [CrossRef] [PubMed]
  18. Barrott, J.J.; Cash, G.M.; Smith, A.P.; Barrow, J.R.; Murtaugh, L.C. Deletion of mouse Porcn blocks Wnt ligand secretion and reveals an ectodermal etiology of human focal dermal hypoplasia/Goltz syndrome. Proc. Natl. Acad. Sci. USA 2011, 108, 12752–12757. [Google Scholar] [CrossRef] [PubMed]
  19. Schrödinger Release 2018-1: Phase; Schrödinger, LLC: New York, NY, USA, 2018.
  20. Schrödinger Release 2018-1: LigPrep; Schrödinger, LLC: New York, NY, USA, 2018.
  21. Shelley, J.C.; Cholleti, A.; Frye, L; Greenwood, J.R.; Timlin, M.R.; Uchimaya, M. Epik: A software program for pKa prediction and protonation state generation for drug-like molecules. J. Comp. Aided Mol. Des. 2007, 21, 681–691. [Google Scholar] [CrossRef] [PubMed]
  22. Schrödinger Release 2018-1: ConfGen; Schrödinger, LLC: New York, NY, USA, 2018.
  23. Dixon, S.L.; Smondyrev, A.M.; Knoll, E.H.; Rao, S.N.; Shaw, D.E.; Friesner, R.A. PHASE: A new engine for pharmacophore perception, 3D QSAR model development, and 3D database screening: 1. Methodology and preliminary results. J. Comput. Aided Mol. Des. 2006, 20, 647–671. [Google Scholar] [CrossRef] [PubMed]
  24. Schrödinger Release 2018-1: Phase Help—Atom-Based QSAR Panel; Schrödinger, LLC: New York, NY, USA, 2018.
  25. Schrodinger Release 2018-1: Glide Help—Enrichment Calculator Panel; Schrödinger, LLC: New York, NY, USA, 2018.
Figure 1. Compound 10, the best fitted on DRRRH hypothesis.
Figure 1. Compound 10, the best fitted on DRRRH hypothesis.
Proceedings 09 00019 g001
Figure 2. Correlation plot of experimental versus PHASE software [19] predicted activity of training set (green triangles circles) and test set (blue circles).
Figure 2. Correlation plot of experimental versus PHASE software [19] predicted activity of training set (green triangles circles) and test set (blue circles).
Proceedings 09 00019 g002
Figure 3. The data set compounds in the context of 3D-QSAR model with: hydrogen bond donor, hydrophobic and electron-withdrawing properties represented. (a) The active compounds aligned over DRRRH hypothesis; (b) The inactive compounds aligned over DRRRH hypothesis. Blue cubes indicate positive coefficient (increase in activity), red cubes indicate negative coefficient (decrease in activity).
Figure 3. The data set compounds in the context of 3D-QSAR model with: hydrogen bond donor, hydrophobic and electron-withdrawing properties represented. (a) The active compounds aligned over DRRRH hypothesis; (b) The inactive compounds aligned over DRRRH hypothesis. Blue cubes indicate positive coefficient (increase in activity), red cubes indicate negative coefficient (decrease in activity).
Proceedings 09 00019 g003
Table 1. The Smiles code of porcupine (PORCN) inhibitors from the dataset [1] along with their activity (experimental and predicted) and the QSAR set distribution.
Table 1. The Smiles code of porcupine (PORCN) inhibitors from the dataset [1] along with their activity (experimental and predicted) and the QSAR set distribution.
IDSmiles CodepIC50exppIC50pred
1 *Cc1cc(ccn1)c2ccc(cc2)CC(=O)Nc3ccc(cc3)c4ccccc48.548.47
2c1ccc-2c(c1)Cc3c2ccc(c3)CC(=O)Nc4ccc(cc4)c5cccnc56.646.56
3c1ccc2c(c1)c3ccc(cc3o2)CC(=O)Nc4ccc(cc4)c5cccnc56.266.51
4c1ccc-2c(c1)Cc3c2ccc(c3)CC(=O)Nc4ccc(cn4)c5cnccn56.346.62
5c1ccc2c(c1)c3ccc(cc3o2)CC(=O)Nc4ccc(cn4)c5cnccn56.876.53
6 *Cc1cc(cnc1c2ccnc(c2)C)CC(=O)Nc3ccc-4c(c3)Cc5c4cccc58.608.89
7 *Cc1cc(cnc1c2ccnc(c2)C)CC(=O)Nc3ccc-4c(c3)C(c5c4cccc5)(F)F8.578.92
8Cc1cc(cnc1c2ccnc(c2)C)CC(=O)Nc3ccc4c(c3)-c5ccccc5C4=O8.558.86
9Cc1cc(cnc1c2ccnc(c2)C)CC(=O)Nc3ccc4c5ccccc5[nH]c4c38.598.78
10Cc1cc(ccn1)c2ccc(cc2)CC(=O)Nc3ccc-4c(c3)Cc5c4cccc58.858.85
11 *c1ccc2c(c1)-c3ccc(cc3C2=O)CC(=O)Nc4ccc(cc4)c5cccnc56.006.62
12Cc1cc(ccn1)c2ccc(cc2)CC(=O)Nc3ccc-4c(c3)C(c5c4cccc5)(F)F8.468.46
13Cc1cc(ccn1)c2ccc(cc2)CC(=O)Nc3ccc-4c(c3)C(=O)c5c4cccc59.358.88
14Cc1cc(ccn1)c2ccc(cc2)CC(=O)Nc3ccc4c5ccccc5[nH]c4c38.648.44
15 *c1ccc2c(c1)-c3ccc(cc3C2=O)CC(=O)Nc4ccc(cn4)c5cnccn56.006.72
16Cc1cc(ccn1)c2ccc(cc2)CC(=O)Nc3ccc4c5ccccc5oc4c38.058.05
17Cc1cc(cnc1c2ccnc(c2)C)CC(=O)Nc3ccc(cn3)c4cnccn49.058.36
* denotes the compounds from the test set.
Table 2. The statistical parameters for the best pharmacophore hypothesis (DRRRH).
Table 2. The statistical parameters for the best pharmacophore hypothesis (DRRRH).
HypothesisSDR2R2cvR2scrambleStabilityFRMSEQ2Pearson-R
DRRRH0.370.900.760.440.9488.600.470.860.99
SD—standard deviation of the regression, R2—value of R2 for the regression, R2CV—Cross-validated R2 value, computed from predictions obtained by a leave-N-out approach, R2scramble—average value of R2 from a series of models built using scrambled activities (measures the degree to which the molecular fields can fit meaningless data, and should be low), Stability of the model predictions to changes in the training set composition (this statistic has a maximum value of 1 -meaning stable). F—variance ratio, RMSE—root mean squared error of the test set, Q2—value of Q2 for the predicted activities of the test set, Pearson-R—value of Pearson-R for test predicted activities of the test set [24].
Table 3. Inter-feature distances for DRRRH hypothesis.
Table 3. Inter-feature distances for DRRRH hypothesis.
Site 1Site 2Distance (Å)
R9D37.54
R9R610.30
R9R812.83
R9H415.16
D3R63.62
D3R87.39
D3H49.80
R6R84.34
R6H46.36
R8H42.87
Table 4. Enrichment performance for the DRRRH pharmacophore hypothesis *.
Table 4. Enrichment performance for the DRRRH pharmacophore hypothesis *.
BEDROC
Alpha = 160.9Alpha = 20.0Alpha = 8.0
1.0001.0001.000
alpha*Ra
1.7510.2180.087
Receiver Operator Characteristic (ROC)
1.000
Area under accumulation curve (AUAC)
0.990
Robust Initial Enhancement (RIE)
17.970
Count and percentage of actives in top N% of decoy results
% Decoys
1%2%5%
% Actives
100100100
Count and percentage of actives in top N% of results
% Results
1%2%5%
% Actives
90.9100100
Enrichment Factors with respect to N% sample size.
% Sample
1%2%5%
Enrichment factor (EF)
92%51%20%
Enrichment factor for recovering x% of the known actives (EF*)
1e+025020
Modified enrichment factor (EF’)
1.8e+029539
Efficiency in distinguishing actives from decoys (Eff)
0.9800.9610.905
“*”BEDROC—Boltzmann-enhanced Discrimination Receiver Operator Characteristic area under the curve. The value is bounded between 1 and 0, with 1 being ideal screen performance. The default alpha = 20 weights the first ~8% of screen results. When alpha*Ra << 1, where Ra is the radio of total actives to total ligands, and alpha is the exponential prefactor, the BEDROC metric takes on a probabilistic meaning. Calculated as described by Truchon, J. F.; Bayly, C. I. J. Chem. Inf. Model. 2007, 47, 488-508, Equation (36); ROC—Receiver Operator Characteristic area under the curve. The value is bounded between 1 and 0, with 1 being ideal screen performance and 0.5 reflecting random behaviour. Calculated as described by Truchon, J. F.; Bayly, C. I. J. Chem. Inf. Model. 2007, 47, 488–508, Equation (A.8); AUAC—Area Under the Accumulation Curve. The value is bounded between 1 and 0, with 1 being ideal screen performance. Calculated as described by Truchon, J. F.; Bayly, C. I. J. Chem. Inf. Model. 2007, 47, 488–508, Equation (8); RIE—Robust Initial Enhancement. Active ranks are weighted with a continuously decreasing exponential term. Large positive RIE values indicate better screen performance. Calculated as described by Truchon, J. F; Bayly, C. I. J. Chem. Inf. Model. 2007, 47, 488–508, Equation (18); EF—Enrichment Factor, calculated with respect to the number of total ligands. EF = (a/n)/(A/N), where a is the number of actives found in sample size n, A is the total number of actives, and N is the total number of ligands (decoys and actives).; EF*—Enrichment factor for recovering x% of the known actives, defined as the fraction of the actives recovered divided by the faction of decoys recovered at that point. This value gives the relative probability that a compound recovered is an active rather than a decoy. Because the enrichment factors are computed using the fractions of actives and decoys recovered, they are independent of the absolute and relative numbers of actives and decoys screened.; EF’—modified enrichment factor defined using the average of the reciprocals of the EF* enrichment factors for recovering the first aa% of the known actives. EF’(x) will be larger than EF*(x) if the actives in question come relatively early in the sequence, and smaller if they come relatively late.; Eff—efficiency in distinguishing actives from decoys on an absolute scale of 1 (perfect; all actives come before any decoys) to −1 (all decoys come before any actives); a value of 0 means that actives and decoys were recovered at equal proportionate rates.” [25].
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MDPI and ACS Style

Borota, A.; Crisan, L. In Silico Ligand-Based Methods Targeting Porcupine Receptor Inhibitors with Potential Anticancer Effect. Proceedings 2019, 9, 19. https://doi.org/10.3390/ecsoc-22-05674

AMA Style

Borota A, Crisan L. In Silico Ligand-Based Methods Targeting Porcupine Receptor Inhibitors with Potential Anticancer Effect. Proceedings. 2019; 9(1):19. https://doi.org/10.3390/ecsoc-22-05674

Chicago/Turabian Style

Borota, Ana, and Luminita Crisan. 2019. "In Silico Ligand-Based Methods Targeting Porcupine Receptor Inhibitors with Potential Anticancer Effect" Proceedings 9, no. 1: 19. https://doi.org/10.3390/ecsoc-22-05674

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