Skip to main content
  • Research article
  • Open access
  • Published:

Docking-based virtual screening of TβR1 inhibitors: evaluation of pose prediction and scoring functions

Abstract

To improve the reliability of virtual screening for transforming growth factor-beta type 1 receptor (TβR1) inhibitors, 2 docking methods and 11 scoring functions in Discovery Studio software were evaluated and validated in this study. LibDock and CDOCKER protocols were performed on a test set of 24 TβR1 protein–ligand complexes. Based on the root-mean-square deviation (RMSD) values (in Å) between the docking poses and co-crystal conformations, the CDOCKER protocol can be efficiently applied to obtain more accurate dockings in medium-size virtual screening experiments of TβR1, with a successful docking rate of 95%. A dataset including 281 known active and 8677 inactive ligands was used to determine the best scoring function. The receiver operating characteristic (ROC) curves were used to compare the performance of scoring functions in attributing best scores to active than inactive ligands. The results show that Ludi 1, PMF, Ludi 2, Ludi 3, PMF04, PLP1, PLP2, LigScore2, Jain and LigScore1 are better scoring functions than the random distribution model, with AUC of 0.864, 0.856, 0.842, 0.812, 0.776, 0.774, 0.769, 0.762, 0.697 and 0.660, respectively. Based on the pairwise comparison of ROC curves, Ludi 1 and PMF were chosen as the best scoring functions for virtual screening of TβR1 inhibitors. Further enrichment factors (EF) analysis also supports PMF and Ludi 1 as the top two scoring functions.

Background

Due to the vast improvement of computing power and the rapid development of computational chemistry and biology, computer-aided drug design (CADD) technology has been successfully applied in drug discovery, accelerating the research process and reducing the associated costs and risks [1]. Virtual screening is a common CADD technology used for the identification of hit molecules from large-scale compound libraries, providing a highly efficient approach to discover new compounds in the early stage of drug development [2]. Virtual screening methods, including molecular docking [3], pharmacophore model [4], and similarity searching [5], are widely used in drug research and development. With an increasingly large number of target protein structures being resolved, the molecular docking-based virtual screening (DBVS), has become one of the most common virtual screening methods, having achieved a great success [6].

However, due to its low accuracy, DBVS suffers from constant criticism. This method involves two basic processes: positioning ligands into a protein active site, scoring and ranking docked ligands. Both steps are imperfect. In the last decade, several studies on docking and scoring methods demonstrated that most of the docking methods and scoring functions are sensitive to the receptor, and conclusions on different receptors may be inconsistent with each other [7,8,9,10]. Different docking programs may show different performances in the same target protein [8]. There is often a poor correlation between the scores given by scoring functions and experimental binding affinities. New forms of examination are necessary to maximize the success rate of docking and scoring methods, to determine the best parameters for individual protein targets.

Transforming growth factor-β (TGFβ) signaling plays a key role in cell growth, migration, differentiation, epithelial–mesenchymal transition (EMT), and extracellular matrix remodeling [11]. TGFβ is reported to be critical in the later stages of tumorigenesis by increasing immunosuppressive Treg cells and facilitating EMT [12]. TGFβ type 1 receptor (TβR1) is a key member of the TGFβ signaling pathways, and its inhibition has the potential to enhance the immune response against tumors. Thus, TβR1 has attracted wide attention, as a potential drug target [13].

Different virtual screening models can be complementary in the search for new inhibitors. In our previous studies, several inhibitors were screened and designed by the pharmacophore model and structure–activity relationship study [14, 15]. In this study, we aimed to obtain new TβR1 inhibitors using DBVS. For that, we assessed different docking methods and scoring functions for TβR1, before large-scale database screening. We conclude that the CDOCKER protocol with a successful docking rate of 88% and the PMF and Ludi 1 scoring functions with high reliability may be efficiently applied in the virtual screening of new inhibitors of TβR1.

Materials and methods

Database preparation

The Protein Data Bank (PDB; http://www.rcsb.org) funded by the National Science Foundation, the National Institutes of Health, and the US Department of Energy is the single worldwide archive of 3D structural data of biological macromolecules, such as proteins, nucleic acids, and complex assemblies [16]. Up to now, 22 crystal structures of TβR1 with various small molecule inhibitors have been reported in PDB, including 1RW8, 1PY5 [17], 1VJY [18], 2WOU, 2WOT [19], 2X7O [20], 3GXL, 3HMM [21], 3FAA [22], 3KCF [23], 3TZM [24], 4X2F, 4X2G, 4X2J [25], 5E8W, 5E8Z [26], 5FRI [27], 5QIK, 5QIL, 5QIM [28], 5USQ [29], and 6B8Y (Additional file 1: Table S1) [12]. Water molecules and co-crystallized ligands were deleted and then the receptor protein was subsequently prepared by the Prepare Protein protocol using the Discovery Studio 2017R2 software package (DS; https://www.3ds.com/). The following tasks were performed: insertion of missing atoms in incomplete residues, modeling of missing loop regions, deleting of alternate conformations (disorder), standardizing of atom names, and protonating of titratable residues.

22 X-ray structures of TβR1 deposited in the Protein Data Bank (PDB) were analyzed using some parameters to select the most suitable TβR1 structure for next studies, such as information on the resolution and organisms of crystallographic structures, as well as the similarity values and physicochemical properties of all ligands (Additional file 1: Table S2). The overlay of the crystal structure (Additional file 1: Fig. S1) and comparing the amino acid sequence showed that the 22 crystal structure has a high consistency and a complete binding pocket. Due to the Induced Fit Theory, the TβR1 will changes its conformation on binding a ligand. Therefore, there are slight differences in the conformation of 22 co-crystal structures (Fig. 1).

Fig. 1
figure 1

Overlay of crystal structures between 4X2F (gold ribbon) and 6B8Y (blue ribbon). The ligand in 6B8Y was shown with the purple stick model

The ligand in 6B8Y (resolution 1.65 Å) with the IC50 value of 0.55 nM was the most active inhibitor of 22 molecules in co-crystal structures. Therefore, 6B8Y may be more representative of the active conformation of the target protein. 6B8Y was selected for the evaluation of scoring functions from up to 22 co-crystal structures.

The root-mean-square deviation (RMSD) value (in Å) between the best docking poses of ligands and the conformations in co-crystal structures was selected as the evaluation criterion to check the accuracy of docking program in the reproduction of the binding poses of ligands in crystal structures of TβR1-ligand complexes. Inhibitors in the above-mentioned crystal structures are shown in Fig. 1. The conformations of the inhibitors confirmed by experimental methods. Thus, 22 active conformations of inhibitors in the crystal structure were selected as the reference ligands. These 22 active conformations were re-docked back to the active site of TβR1 by molecular docking. In previous studies, RMSD values within 2.0 Å were acceptable for the molecular docking-based virtual screening [30]. Thus, in this investigation, the docking results with RMSD ≤ 2.0 Å were considered successful, and the docking results with RMSD > 2.0 Å were considered to be failed.

Receiver operating characteristic (ROC) curves were used to distinguish between “active” and “inactive” samples based on the scores. For the evaluation and validation of the sensitivity (SE) and specificity (SP) of scoring functions, a test set covering active and inactive ligands was established by downloading 8958 ligands from the DUD-E database (http://dude.docking.org/). Namely, this test set includes 281 known active ligands and 8677 ligands assumed to be inactive (referred to as decoys). The decoy compounds have similar physicochemical properties but dissimilar 2D topology (Additional file 1: Table S3) [31]. The prepared active or decoy ligands were docked into the binding pocket of TβR1, respectively and the top-scoring pose of each ligand along with its docking score was used for further analysis.

Molecular docking and scoring functions

Two molecular docking methods, LibDock and CDOCKER in DS software, were performed in this study. LibDock is a docking program developed by Diller and Merz, which uses protein site features referred to as HotSpots [32], while CDOCKER is a grid-based molecular docking method based on CHARMm [33]. Before molecular docking, the ligands in the test set were prepared using the Prepare Ligands protocol to remove duplicates, generate 3D conformations, and remove compounds with undesirable properties. For LibDock, the parameter “Conformation Method” was set to “BEST”, “Max Hits to Save” was set to “1” and “Minimization Algorithm” was set to “Smart Minimizer”. All other parameters were set to default. For CDOCKER, “Top Hits” was set to “1”, “Pose Cluster Radius” was set to ‘0.5’, and others were set to default. Only one top docking pose for each molecule was reported and saved for further analysis. The RMSD values (in Å) between the best docking poses of ligands and the conformations in co-crystal structures were calculated.

The top docking pose for each molecule was re-scored using the Score Ligand Poses protocol in the DS software. The scoring functions, including CDOCKER Scores (CDOCK), LigScore1, LigScore2, PLP1, PLP2, Jain, PMF, PMF04, Ludi Energy Estimate 1 (Ludi 1), Ludi Energy Estimate 2 (Ludi 2), Ludi Energy Estimate 3 (Ludi 3), were used to calculate ligand binding in an active receptor site. The calculated scores were reported as positive values to ensure that higher scores indicated more favorable binding.

ROC curve analysis

All ligands in the test set (281 active and 8677 inactive) were docked into the binding pocket of TβR1 (PDB ID: 6B8Y). The top docking pose for each ligand was re-scored used the above-mentioned 11 scoring functions. Using a diagnostic trial approach, the SE and SP of each scoring function for distinguishing between “active” and “inactive” samples, were calculated. In the ROC curve, the SE is plotted against 100 − SP for every cut-off point of the variable (score calculated by scoring function). The SE is defined as the ratio of true positive (TP) to the sum of TP and false negative (FN): [TP/(TP + FN)]; and the SP is defined as the ratio of true negative (TN) to the sum of TN and false positive (FP): [TN/(TN + FP)] [14]. The reliability of the scoring function was estimated using the area under the curve (AUC), together with the Chi-square test. A statistically significant difference was defined when P < 0.05. Typically, a ROC curve has an AUC baseline of 0.5, which demonstrates an evenly distributed system. An AUC value closer to 1 indicates good selectivity, whereas a value close to 0.5 indicates random selection.

Enrichment factor analysis

Taking enrichment factor (EF) as the indicator, the performance of the scoring function as a virtual screening tool applied to TβR1 was evaluated. EF is defined as:

$$ {\text{EF}} = \frac{{\mathop {\text{Hits}}\nolimits_{\text{sampled}}^{X\% } }}{{\mathop N\nolimits_{\text{sampled}}^{X\% } }} \cdot \frac{{\mathop N\nolimits_{\text{total}} }}{{\mathop {\text{Hits}}\nolimits_{\text{total}} }} $$

where \( \mathop {\text{Hits}}\nolimits_{\text{sampled}}^{X\% } \) is the number of hit compounds at X% of the database, \( \mathop {\text{N}}\nolimits_{\text{sampled}}^{X\% } \) is the number of compounds screened at X% of the database, \( \mathop N\nolimits_{\text{total}} \) is the number of compounds in the database, and \( \mathop {\text{Hits}}\nolimits_{\text{total}} \) is the number of active compounds in the database. Among the top-rank screened database compounds, the enrichment ability of active compounds is the most noteworthy. Therefore, we mainly focus on the enrichment factor at 0.5%, 1%, and 2% of the ranked database, which are defined as EF0.5%, EF1%, and EF2%.

Results and discussion

Assessment of docking methods

Properly docking the ligands to the active site is the most critical step in the virtual screening. The LibDock and CDOCKER docking programs were performed in this study. The results require evaluation to determine the best docking method for the TβR1 protein target and to maximize the probability of success. The performance of the docking programs for predicting the binding mode between ligand and TβR1 was evaluated with a success rate. 22 known active conformations of TβR1 inhibitors were re-docked into the corresponding binding pockets. As virtual screening projects always involve thousands to tens of thousands of ligands, only the top-scoring pose of each ligand was considered as the possible active conformation. The RMSD values between the docked poses with the highest score and those in co-crystal structures are listed in Table 1.

Table 1 RMSD values (in Å) between the best docking poses of ligands and the conformations in co-crystal structures for all retrieved actives ligands

Results demonstrate that the accuracy of the Lidock program (59%) is much lower than that of the CDOCKER program (95%). Thus, the CDOCKER program was chosen as the docking programs in the subsequent study, based on its reliability.

Assessment of scoring functions

Scoring and ranking the docked ligands play an important role in virtual screening. The best scoring function for TβR1 should be selected to maximize the chances of success. In this study, 281 known active and 8677 inactive ligands were used to determine the best scoring functions before a larger-scale screening of unknown compounds. In this study, the ROC curves are used to compare the performance of scoring functions in attributing better scores to active than inactive ligands. The docking results showed that, among 8959 ligands, only one active molecule and 22 inactive molecules could not be docked into the active cavity. The best docking poses for each docked ligand were recalculated with 11 scoring functions, respectively. Based on the information of known active and inactive ligands, the ROCs (Fig. 2) were drawn using statistical software, and relevant statistical parameters are listed in Table 2.

Fig. 2
figure 2

ROC curves for the scoring functions

Table 2 ROC curve results for the scoring functions

As a higher score indicates a more favorable binding, the result of the CDOCK is unreliable. The ROC curves of Ludi 1, PMF, Ludi 2, Ludi 3, PMF04, PLP1, PLP2, LigScore2, Jain and LigScore1 all tend to the upper left corner, with AUCs of 0.864, 0.856, 0.842, 0.812, 0.776, 0.774, 0.769,0.762, 0.697 and 0.660, respectively (P < 0.0001). All the AUCs of scoring function are significantly larger than those of random distribution (Reference line in Fig. 2, AUC = 0.5), which indicates that the prediction capacity of these 10 scoring functions is better than the random distribution model. The AUC of Ludi 1 is the largest, and the curve is closest to the upper left corner, indicating that Ludi 1 can efficiently distinguish active and inactive molecules. Pairwise comparison of ROC curves shows a significant difference in AUCs between Ludi 1 and other scoring functions (P < 0.0001), except for PMF (P = 0.6170). Given the high accuracy of Ludi 1 and PMF for TβR1, we strongly recommend Ludi 1 and PMF as scoring functions for virtual screening of new inhibitors of TβR1.

Large-scale bioactivity testing is an extremely expensive process. Therefore, it is essential to minimize the number of virtual screening false positives, before a large database search of active molecules and their experimental validation. Therefore, achieving a high positive predictive value (PPV = TP/(TP + FP)) is mandatory. In general, large databases exhibit a low frequency of active ligands. This suggests that increasing SP is more helpful to improve the PPV than altering SE. For example, in this study, active ligands accounted for 3% (280/8958) of the test set. Based on the results form Ludi1, with the increase in SP from 80 to 90%, 95% and 99%, the PPV value increases from 12% (222/1904) to 17% (171/1028), 22% (118/547) and 28% (34/120), respectively. If PMF instead of Ludi 1 as a scoring function, the PPV value increases from 12% (219/1862) to 18% (166/948), 24% (136/569) and 43% (66/151), respectively. As illustrated in Fig. 2, the PMF ROC curve is above the Ludi1 ROC curve in the higher SP region. Furthermore, for the same SP, the PMF ROC curve has higher SE and PPV. Therefore, the PMF scoring function is suitable for this particular research objective.

To obtaining more novel molecular structures for drug design, higher SE must be considered in the virtual screening. When SE = 0.9 (255 active compounds were obtained), a total of 3772 compounds were obtained by PMF, while only 3597 compounds were screened by Ludi1, with fewer false positive ligands. As shown in Fig. 2, the Ludi 1 ROC curve is above the PMF ROC curve in the higher SE region in the upper right corner. For the same SE, the Ludi 1 ROC curve has a higher SP. Therefore, our results indicate that Ludi 1 scoring function has more advantages to this particular objective.

It can be seen from Table 3 that for TβR1, PMF all performs best at EF0.5%, EF1%, and EF2% among all scoring functions, and Ludi 1 ranks the second. Besides, Jain is the worst among the above 10 scoring functions. In line with ROC curve analysis results, EF evaluation results also support PMF and Ludi 1 as the top two scoring functions.

Table 3 EFs of the scoring functions and pharmacophore model A02

Different virtual screening models can be complementary in the search for new inhibitors. In our previous studies, based on the crystal structure of TβR1-BMS22 complex, a pharmacophore model was constructed [14]. In this study, EF0.5%, EF1%, and EF2% of the pharmacophore model A02 was also evaluated. It can be seen from Table 3 that EFs comparison indicates that the pharmacophore model A02 has very excellent performance at EF0.5%, only lower than PMF. Meanwhile, it ranks third at EF1%, slightly lower than PMF and Ludi 1. However, the low ranking of the pharmacophore model A02 at EF2% means that the screening results may not be ideal. EF evaluation results show that the pharmacophore model can also obtain excellent virtual screening results in the top-scoring area. Therefore, we recommend that molecular docking and pharmacophore cross-validation can be performed to obtain more accurate virtual screening results.

In conclusion, our results show that PMF and Ludi1 scoring functions have high reliability in the virtual screening of new inhibitors of TβR1. According to the goal of virtual screening, the scoring function can be flexibly selected. To reduce the cost of experimental activity verification, the PMF scoring function should be chosen first. The Ludi 1 scoring function can be chosen first to obtain more novel inhibitors of TβR1.

Conclusion

Drug target interaction plays an important role in drug discovery based on target [34, 35], and molecular docking can well simulate the interaction between drug and target, which is widely used [36,37,38]. Molecular docking is routinely used in virtual screening and generally involves two separate steps. The first step is to position ligands into a protein active site correctly, and the second step is scoring and ranking these docked ligands reasonably. An increasingly large number of studies reported that the docking method and the scoring functions are sensitive to receptors.

In this study, we present a thorough investigation of the performance of the LibDock and CDOCKER protocol in DS software on a test set of 22 TβR1 protein–ligand complexes. The results demonstrate that the CDOCKER protocol based on CHARMm is the optimal docking protocol for TβR1. With a successful docking rate of 95%, which means high reliability, the CDOCKER protocol can be efficiently applied for accurate docking in medium-size virtual screening experiments of TβR1.

A dataset including 281 known active and 8677 inactive ligands was used to determine the best scoring function in DS software for scoring ligands posed by molecule docking. The ROC curves are used to compare the performance of scoring functions in attributing better scores to active than inactive ligands. The ROC curves of Ludi 1, PMF, Ludi 2, Ludi 3, PMF04, PLP1, PLP2, LigScore2, Jain and LigScore1 are better than that of the random distribution model, with AUC of 0.864, 0.856, 0.842, 0.812, 0.776, 0.774, 0.769, 0.762, 0.697 and 0.660, respectively. Based on the pairwise comparison of ROC curves, we strongly recommend that Ludi 1 and PMF should be chosen as scoring functions for virtual screening of new TβR1 inhibitors. The PMF ROC curve is above the Ludi 1 ROC curve in the higher SP region in the lower left quarter, thus for the same SP, the PMF ROC curve has higher SE and PPV values. It is advantageous to reduce the number of false positive molecules and the cost of experimental activity verification. Additionally, the Ludi 1 ROC curve is above the PMF ROC curve in the higher SE region in the upper-right corner; therefore, for the same SE, the Ludi 1 ROC curve has higher SP, which is optimal for obtaining more novel molecules.

Consistent with ROC curve, EF evaluation also supports PMF and Ludi-1 as the top two scoring functions. EF evaluation results also demonstrates that the pharmacophore model can get good virtual screening results in the highest score areas. Therefore, molecular docking and pharmacophore cross validation can be used to obtain more accurate virtual screening results.

Availability of data and materials

The datasets used and/or analyzed during the current study are available from the corresponding author on reasonable request.

Abbreviations

TGF-β:

Transforming growth factor-β

TβR1:

Transforming growth factor-β type 1 receptor

RMSD:

Root-mean-square deviation

CADD:

Computer-aided drug design

DBVS:

Molecular docking-based virtual screening

ROC:

Receiver operating characteristic

SE:

Sensitivity

SP:

Specificity

TP:

True positive

FN:

False negative

TN:

True negative

FN:

False positive

AUC:

Area under the curve

95% CI:

Asymptotic 95% confidence interval

P:

Significance level

EF:

Enrichment factor

References

  1. Zhong F, Xing J, Li X, Liu X, Fu Z, Xiong Z, Lu D, Wu X, Zhao J, Tan X, Li F, Luo X, Li Z, Chen K, Zheng M, Jiang H (2018) Artificial intelligence in drug design. Sci China Life Sci 61:1191–1204

    PubMed  Google Scholar 

  2. Liang JW, Wang S, Wang MY, Li SL, Li WQ, Meng FH (2019) Identification of novel PI3Kδ selective inhibitors by SVM-based multistage virtual screening and molecular dynamics simulations. Int J Mol Sci 20:6000

    CAS  PubMed Central  Google Scholar 

  3. Torres PHM, Sodero ACR, Jofily P, Silva-Jr FP (2019) Key topics in molecular docking for drug design. Int J Mol Sci 20:4574

    CAS  PubMed Central  Google Scholar 

  4. Zeb A, Son M, Yoon S, Kim JH, Park SJ, Lee KW (2019) Computational simulations identified two candidate inhibitors of Cdk5/p25 to sbrogate tau-associated neurological disorders. Comput Struct Biotechnol J 17:579–590

    CAS  PubMed  PubMed Central  Google Scholar 

  5. Stumpfe D, Bajorath J (2011) Similarity searching. WIRES Comput Mol Sci 1:260–282

    CAS  Google Scholar 

  6. Huang T, Sun J, Zhou S, Gao J, Liu Y (2017) Identification of direct activator of adenosine monophosphate-activated protein kinase (AMPK) by structure-based virtual screening and molecular docking approach. Int J Mol Sci 18:1408

    PubMed Central  Google Scholar 

  7. Li GB, Yang LL, Wang WJ, Li LL, Yang SY (2013) ID-Score: a new empirical scoring function based on a comprehensive set of descriptors related to protein-ligand interactions. J Chem Inf Model 53:592–600

    CAS  PubMed  Google Scholar 

  8. Huang S, Song C, Wang X, Zhang G, Wang Y, Jiang X, Sun Q, Huang L, Xiang R, Hu Y (2017) Discovery of new SIRT2 inhibitors by utilizing a consensus docking/scoring strategy and structure-activity relationship analysis. J Chem Inf Model 57:669–679

    CAS  PubMed  Google Scholar 

  9. Wang R, Lu Y, Wang S (2003) Comparative evaluation of 11 scoring functions for molecular docking. J Med Chem 46:2287–2303

    CAS  PubMed  Google Scholar 

  10. Li X, Li Y, Cheng T, Liu Z, Wang R (2010) Evaluation of the performance of four molecular docking programs on a diverse set of protein-ligand complexes. J Comput Chem 31:2109–2125

    PubMed  Google Scholar 

  11. Howley BV, Howe PH (2019) TGF-beta signaling in cancer: post-transcriptional regulation of EMT via hnRNP E1. Cytokine 118:19–26

    CAS  PubMed  Google Scholar 

  12. Harikrishnan LS, Warrier J, Tebben AJ, Tonukunuru G, Madduri SR, Baligar V, Mannoori R, Seshadri B, Rahaman H, Arunachalam PN, Dikundwar AG, Fink BE, Fargnoli J, Fereshteh M, Fan Y, Lippy J, Ho CP, Wautlet B, Sheriff S, Ruzanov M, Borzilleri RM (2018) Heterobicyclic inhibitors of transforming growth factor beta receptor I (TGFβRI). Bioorg Med Chem 26:1026–1034

    CAS  PubMed  Google Scholar 

  13. Haque S, Morris JC (2017) Transforming growth factor-β: a therapeutic target for cancer. Hum Vaccine Immunother 13:1741–1750

    Google Scholar 

  14. Jiang JH, Zhou H, Jiang QH, Sun LL, Deng P (2018) Novel transforming growth factor-beta receptor 1 antagonists through a pharmacophore-based virtual screening approach. Molecules 23:2824

    PubMed Central  Google Scholar 

  15. Jiang JH, Deng P (2019) Discovery of new inhibitors of transforming growth factor-beta type 1 receptor by utilizing docking and structure-activity relationship analysis. Int J Mol Sci 20:4090

    CAS  PubMed Central  Google Scholar 

  16. Berman HM, Westbrook J, Feng Z, Gilliland G, Bhat TN, Weissig H, Shindyalov IN, Bourne PE (2000) The protein data bank. Nucleic Acids Res 28:235–242

    CAS  PubMed  PubMed Central  Google Scholar 

  17. Sawyer JS, Beight DW, Britt KS, Anderson BD, Campbell RM, Goodson T Jr, Herron DK, Li HY, McMillen WT, Mort N, Parsons S, Smith EC, Wagner JR, Yan L, Zhang F, Yingling JM (2004) Synthesis and activity of new aryl- and heteroaryl-substituted 5,6-dihydro-4-pyrrolo[1,2-]pyrazole inhibitors of the transforming growth factor-β type I receptor kinase domain. Bioorg Med Chem Lett 14:3581–3584

    CAS  PubMed  Google Scholar 

  18. Gellibert F, Woolven J, Fouchet MH, Mathews N, Goodland H, Lovegrove V, Laroze A, Nguyen VL, Sautet S, Wang R, Janson C, Smith W, Krysa G, Boullay V, De Gouville AC, Huet S, Hartley D (2004) Identification of 1,5-naphthyridine derivatives as a novel series of potent and selective TGF-beta type I receptor inhibitors. J Med Chem 47:4494–4506

    CAS  PubMed  Google Scholar 

  19. Goldberg FW, Ward RA, Powell SJ, Debreczeni JE, Norman RA, Roberts NJ, Dishington AP, Gingell HJ, Wickson KF, Roberts AL (2009) Rapid generation of a high quality lead for transforming growth factor-beta (TGF-beta) type I receptor (ALK5). J Med Chem 52:7901–7905

    CAS  PubMed  Google Scholar 

  20. Roth GJ, Heckel A, Brandl T, Grauert M, Hoerer S, Kley JT, Schnapp G, Baum P, Mennerich D, Schnapp A, Park JE (2010) Design, synthesis, and evaluation of indolinones as inhibitors of the transforming growth factor β receptor I (TGFβRI). J Med Chem 53:7287–7295

    CAS  PubMed  Google Scholar 

  21. Gellibert F, Fouchet MH, Nguyen VL, Wang R, Krysa G, Gouville ACD, Huet S, Dodic N (2009) Design of novel quinazoline derivatives and related analogues as potent and selective ALK5 inhibitors. Bioorg Med Chem Lett 19:2277–2281

    CAS  PubMed  Google Scholar 

  22. Bonafoux D, Chuaqui C, Boriack-Sjodin PA, Fitch C, Hankins G, Josiah S, Black C, Hetu G, Ling L, Lee WC (2009) 2-Aminoimidazoles inhibitors of TGF-β receptor 1. Bioorg Med Chem Lett 19:912–916

    CAS  PubMed  Google Scholar 

  23. Guckian K, Carter MB, Lin EY, Choi M, Sun L, Boriack-Sjodin PA, Chuaqui C, Lane B, Cheung K, Ling L, Lee WC (2010) Pyrazolone based TGF beta R1 kinase inhibitors. Bioorg Med Chem Lett 20:326–329

    CAS  PubMed  Google Scholar 

  24. Ogunjimi AA, Zeqiraj E, Ceccarelli DF, Sicheri F, Wrana JL, David L (2012) Structural basis for specificity of TGFβ family receptor small molecule inhibitors. Cell Signal 24:476–483

    CAS  PubMed  Google Scholar 

  25. Czodrowski P, Hölzemann G, Barnickel G, Greiner H, Musil D (2015) Selection of fragments for kinase inhibitor design: decoration is key. J Med Chem 58:457–465

    CAS  PubMed  Google Scholar 

  26. Tebben AJ, Ruzanov M, Gao M, Xie D, Kiefer SE, Yan C, Newitt JA, Zhang L, Kim K, Lu H, Kopcho LM, Sheriff S (2016) Crystal structures of apo and inhibitor-bound TGFβ R2 kinase domain: insights into TGFβR isoform selectivity. Acta Crystallogr D Struct Biol 72:658–674

    CAS  PubMed  Google Scholar 

  27. Goldberg FW, Daunt P, Pearson SE, Greenwood R, Grist M, Debreczeni JÉ (2016) Identification and optimisation of a series of N-(4-anilino-2-pyridyl)acetamide activin receptor-like kinase 1 (ALK1) inhibitors. Med Chem Comm 7:1204–1208

    CAS  Google Scholar 

  28. Zhang Y, Zhao Y, Tebben AJ, Sheriff S, Ruzanov M, Fereshteh MP, Fan Y, Lippy J, Swanson J, Ho CP, Wautlet BS, Rose A, Parrish K, Yang Z, Donnell AF, Zhang L, Fink BE, Vite GD, Augustine-Rauch K, Fargnoli J, Borzilleri RM (2018) Discovery of 4-azaindole inhibitors of TGF beta RI as immuno-oncology agents. ACS Med Chem Lett 9:1117–1122

    CAS  PubMed  PubMed Central  Google Scholar 

  29. Sabat M, Wang H, Scorah N, Lawson JD, Atienza J, Kamran R, Hixon MS, Dougan DR (2017) Design, synthesis and optimization of 7-substituted-pyrazolo[4,3-b]pyridine ALK5 (activin receptor-like kinase 5) inhibitors. Bioorg Med Chem Lett 27:1955–1961

    CAS  PubMed  Google Scholar 

  30. Sutherland JJ, Nandigam RK, Erickson JA, Vieth M (2007) Lessons in molecular recognition. 2. Assessing and improving cross-docking accuracy. J Chem Inf Model 47:2293–2302

    CAS  PubMed  Google Scholar 

  31. Mysinger MM, Michael C, Irwin JJ, Shoichet BK (2012) Directory of useful decoys, enhanced (DUD-E): better ligands and decoys for better benchmarking. J Med Chem 55:6582–6594

    CAS  PubMed  PubMed Central  Google Scholar 

  32. Diller DJ, Merz KM (2015) High throughput docking for library design and library prioritization. Proteins 43:113–124

    Google Scholar 

  33. Wu G, Robertson DH, Brooks CL, Vieth M (2010) Detailed analysis of grid-based molecular docking: a case study of CDOCKER—a CHARMm-based MD docking algorithm. J Comput Chem 24:1549–1562

    Google Scholar 

  34. Chinnasamy S, Selvaraj G, Kaushik AC, Kaliamurthi S, Chandrabose S, Singh SK, Thirugnanasambandam R, Gu KR, Wei DQ (2019) Molecular docking and molecular dynamics simulation studies to identify potent AURKA inhibitors: assessing the performance of density functional theory, MM-GBSA and mass action kinetics calculations. J Biomol Struct Dyn 37:1–11

    Google Scholar 

  35. Chu YY, Kaushik AC, Wang XG, Wang W, Zhang YF, Shan XQ, Salahub DR, Xiong Y, Wei DQ (2019) DTI-CDF: a cascade deep forest model towards the prediction of drug–target interactions based on hybrid features. Brief Bioinform. https://doi.org/10.1093/bib/bbz152

    Article  PubMed  Google Scholar 

  36. Hashemzadeh S, Ramezani F, Rafii-Tabar H (2019) Study of molecular mechanism of the interaction between MEK1/2 and trametinib with docking and molecular dynamic simulation. Interdiscip Sci 11:115–124

    CAS  PubMed  Google Scholar 

  37. Li J, Fu A, Zhang L (2019) An overview of scoring functions used for protein–ligand interactions in molecular docking. Interdiscip Sci 11:320–328

    PubMed  Google Scholar 

  38. Nguyen PTV, Yu H, Keller PA (2018) Molecular docking studies to explore potential binding pockets and inhibitors for chikungunya virus envelope glycoproteins. Interdiscip Sci 10:515–524

    CAS  PubMed  Google Scholar 

Download references

Acknowledgements

Not applicable.

Funding

Research reported in this publication was supported by the Fundamental and Advanced Research Projects of Chongqing City (cstc2017jcyjAX0352) and the Research Projects of Chongqing Medical University (NSFYY201824, ZHYX2019022). The funding bodies played no role in the design of the study and collection, analysis, and interpretation of data and in writing the manuscript.

Author information

Authors and Affiliations

Authors

Contributions

Authors WS and JJH have performed evaluation and validation of docking methods and scoring functions and drafted the manuscript. LRY has completed the literature search. DP outlined the research strategy and revised the manuscript. All authors read and approved the final manuscript.

Corresponding author

Correspondence to Ping Deng.

Ethics declarations

Ethics approval and consent to participate

Not applicable.

Consent for publication

Not applicable.

Competing interests

The authors declare that they have no competing interests.

Additional information

Publisher's Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Supplementary information

Additional file 1: Table S1.

Crystal structures of TβR1 with inhibitors reported in PDB. Table S2. Physicochemical properties of each crystallographic ligand. MW, molecular weight; HBD, Number of hydrogen bond donors; HBA, Number of hydrogen bond receptors. Table S3. Physicochemical properties of compounds in the test set. NC, Number of compounds; MW, molecular weight; nROT, Number of rotatable bonds; nHBA, Number of hydrogen acceptor donors; nHBA, Number of hydrogen bond receptors; nRings, Number of rings. Fig. S1. Overlay of 22 TβR1 proteins in the PDB. Except for the Gly367-Gly374 region (far away from the binding site) of 1RW8 and 1PY5, the rest of the crystal structures were well overlapped.

Rights and permissions

Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data.

Reprints and permissions

About this article

Check for updates. Verify currency and authenticity via CrossMark

Cite this article

Wang, S., Jiang, JH., Li, RY. et al. Docking-based virtual screening of TβR1 inhibitors: evaluation of pose prediction and scoring functions. BMC Chemistry 14, 52 (2020). https://doi.org/10.1186/s13065-020-00704-3

Download citation

  • Received:

  • Accepted:

  • Published:

  • DOI: https://doi.org/10.1186/s13065-020-00704-3

Keywords