| Literature DB >> 29770277 |
Bi-Wen Chen1,2, Wen-Xing Li2,3, Guang-Hui Wang1, Gong-Hua Li2,3, Jia-Qian Liu4, Jun-Juan Zheng2,3, Qian Wang2,3, Hui-Juan Li2,3, Shao-Xing Dai2,3, Jing-Fei Huang2,3,5.
Abstract
BACKGROUND: Alzheimer' disease (AD) is an ultimately fatal degenerative brain disorder that has an increasingly large burden on health and social care systems. There are only five drugs for AD on the market, and no new effective medicines have been discovered for many years. Chinese medicinal plants have been used to treat diseases for thousands of years, and screening herbal remedies is a way to develop new drugs.Entities:
Keywords: Alzheimer’s disease; Candidate drugs; Molecular docking
Year: 2018 PMID: 29770277 PMCID: PMC5951129 DOI: 10.7717/peerj.4756
Source DB: PubMed Journal: PeerJ ISSN: 2167-8359 Impact factor: 2.984
Details of the docking results of 30 anti-AD targets with the number of successfully docked TCM compounds.
| 1DB4 | PLA2(Phospholipase A2, membrane associated) | 8IN | −7.31 | −11.55 | 5,290 |
| 1DQA | HMG-COA(3-hydroxy-3-methylglutaryl-coenzyme A reductase) | NAP | −7.42 | −9.78 | 437 |
| 1NME | Caspase-3 | 159 | −4.57 | −10.24 | 21,028 |
| 1OJA | MAOB(Amine oxidase [flavin-containing] B) | ISN | −6.58 | −12.2 | 11,173 |
| 1TB7 | PDE4(cAMP-specific 3′,5′-cyclic phosphodiesterase 4D) | AMP | −6.47 | −14.5 | 17,375 |
| 1TN6 | Ftase(Protein farnesyltransferase subunit beta) | FII | −6.59 | −11.9 | 14,437 |
| 2AFW | QC(Glutaminyl-peptide cyclotransferase) | AHN | −4.48 | −11.11 | 23,635 |
| 2AZ5 | TNF(Tumor necrosis factor) | 307 | −5.66 | −9.53 | 9,261 |
| 2D0T | IDO(Indoleamine 2,3-dioxygenase 1) | PIM | −5.71 | −12.4 | 20,739 |
| 2DQ7 | Fyn(Tyrosine-protein kinase Fyn) | STU | −10.28 | −12.41 | 63 |
| 2VQM | HDAC(Histone deacetylase 4) | HA3 | −7.11 | −11.33 | 5,356 |
| 2Z5Y | MAOA(Amine oxidase [flavin-containing] A) | HRM | −7.96 | −12.8 | 5,299 |
| 3A4O | lyn(Tyrosine-protein kinase Lyn) | STU | −9.4 | −12.53 | 431 |
| 3G9N | JNK(Mitogen-activated protein kinase 10) | J88 | −7.19 | −10.36 | 1,606 |
| 3IKA | EGFR(Epidermal growth factor receptor) | 0UN | −7.64 | −11.45 | 6,324 |
| 3KMR | RAR(Retinoic acid receptor alpha) | EQN | −12.65 | −11.4 | 0 |
| 3O3U | RAGE(Advanced glycosylation end product-specific receptor) | MLR | −7.76 | −14.08 | 13,309 |
| 4DJU | BACE-1(Beta-secretase 1) | 0KK | −7.12 | −12.2 | 14,161 |
| 4EY5 | AchE(Acetylcholinesterase) | HUP | −8.5 | −10.6 | 329 |
| 4MS4 | GABA(B)(Gamma-aminobutyric acid type B receptor subunit 1) | 2C0 | −5.73 | −10.6 | 13,107 |
| 4OC7 | RXR(Retinoic acid receptor RXR-alpha) | 2QO | −8.48 | −11.3 | 708 |
| 4XAR | MGLUR(Metabotropic glutamate receptor 3) | 40F | −4.98 | −8.5 | 9,244 |
| 4YLK | DYRK1A(Dual specificity tyrosine-phosphorylation-regulated kinase 1A) | 4E2 | −8.13 | −12.54 | 7,167 |
| 4ZGM | GLP-1R(Glucagon-like peptide 1 receptor) | 32M | −3.31 | −9.06 | 24,782 |
| 4ZZJ | SIRT1(NAD-dependent protein deacetylase sirtuin-1) | 4TQ | −6.89 | −8.86 | 108 |
| 5A46 | FGFR1(Fibroblast growth factor receptor 1) | 38O | −8.54 | −12.8 | 699 |
| 5AFH | α7NACHR(Neuronal acetylcholine receptor subunit alpha-7) | L0B | −6.02 | −9.64 | 6,934 |
| 5H8S | AMPA(Glutamate receptor 2) | 5YC | −5.3 | −8.44 | 8,926 |
| 5HK1 | SIG-1R(Sigma non-opioid intracellular receptor 1) | 61W | −9.29 | −12.8 | 1,281 |
| 5IH5 | CKI-δ(Casein kinase I isoform delta) | AUE | −7.62 | −12.5 | 5,998 |
Notes.
‘Binding Energy of Original Ligand’ indicates the docking energy of the ligand embedded in the crystal structure.
The number of compounds with better docking scores than that of the original ligand embedded in the crystal structure.
Figure 1The docking energy scores of the top 0.5% TCM compounds and original ligands for 30 targets.
Red boxes represent the top 0.5% of compounds for each target protein. Blue points represent the target proteins’ embedded ligands.
Figure 2The docking pose interactions between the target proteins and ligands including their best-binding TCM compounds and original ligands and the pharmacophore of SIRT1.
(A) The 3D structures and binding model of ligands including best ligand and original ligand to the target protein AchE. The best ligand is green and the original ligand is magenta. The top panel shows the amino acid residues lying within 5 Å from the best ligand, and the bottom panel shows the amino acid residues lying within 5 Å from the original ligand. (B) The pharmacophore of SIRT1 using top 10 TCM compounds binding for the target protein. The hydrogen bond acceptor is in green and the hydrophobic centers are in blue.
Figure 3The exact number of candidate anti-AD compounds and their plants associated with each anti-AD target protein.
The number is tagged above each column, and the target proteins are displayed on the horizontal axis.
AD targets and their best-associated plant with the most compounds docking with the target.
| PLA2 | Bletilla(5) | HMG-COA | Morus(9) | Caspase-3 | Paeonia(4) |
| MAOB | Corydalis(16) | PDE4 | Isatis(4) | Ftase | Panax(8) |
| QC | Panax(4) | TNF | Panax(10) | IDO | Morus(7) |
| Fyn | Papaver(11) | HDAC | Bletilla(5) | MAOA | Corydalis(11) |
| lyn | Claviceps(5) | JNK | Morus(8) | EGFR | Artemisia(7) |
| RAR | Rauwolfia(8) | RAGE | Fritillaria(7) | BACE-1 | Lonicera(6) |
| AchE | Piper(6) | SIRT1 | Panax(18) | GABA(B) | Morus(11) |
| RXR | Salvia(10) | MGLUR | Morus(4) | DYRK1A | Strychnos(6) |
| GLP-1R | Panax(9) | FGFR1 | Rheum(6) | α7NACHR | Panax(8) |
| AMPA | Panax(7) | SIG-1R | Corydalis(7) | CKI-δ | Salvia(11) |
Notes.
The numbers in this table are compound numbers which the best-associated plant for each target protein contains.
The docking energy of TCM compounds is higher than that of the original ligand for RAR protein.
Figure 4The network containing the target proteins and their best-associated plants.
Pink boxes represent target proteins. Green boxes represent compounds.
Figure 5The network containing the anti-AD target proteins, TCM compounds and structurally identical drugs.
Pink boxes represent targets. Yellow boxes represent compounds. Blue boxes represent drugs. The structures of TCM compounds are also shown.
Figure 6The 10 clusters of anti-AD TCM compounds and their primary targets.
The Generate Maximal Common Substructure component must contain the proportion of the cluster molecules. The proportion was set to 0.5 to find the largest maximal common substructure contained in at least 50% of the cluster molecules.
ADMET and logP properties of 11 candidate drugs.
| (3S)-1-(3,4-Dihydroxyphenyl)-7-(4-hydroxyphenyl)heptan-3-ol(5862) | 3 | 2 | FALSE | 0 | FALSE | 4.578 | AchE |
| (3S)-1-(3,4-Dihydroxyphenyl)-7-(4-hydroxyphenyl)- (6E)-6-hepten-3-ol(5863) | 3 | 2 | FALSE | 0 | FALSE | 4.134 | AchE,GABA(B), MGLUR |
| (3R)-1-(3,4-Dihydroxyphenyl)-7-(4-hydroxyphenyl)heptan-3-ol(5868) | 3 | 2 | FALSE | 0 | FALSE | 4.578 | GABA(B) |
| (3R)-1-(3,4-Dihydroxyphenyl)-7-(4-hydroxyphenyl)- (6E)-6-hepten-3-ol(5869) | 3 | 2 | FALSE | 0 | FALSE | 4.134 | AchE |
| pallidine(9593) | 3 | 2 | FALSE | 0 | FALSE | 1.913 | MAOB |
| 4,5-di-o-caffeoyl,quinic,acid(10639) | 3 | 2 | FALSE | 0 | FALSE | 3.477 | PDE4 |
| Anagyrine(16167) | 3 | 1 | FALSE | 0 | FALSE | 2.053 | AchE |
| Blestrin D(26629) | 3 | 2 | FALSE | 0 | FALSE | 4.578 | PLA2,QC,HDAC, JNK,GABA(B) |
| Dibothrioclinin II(28468) | 4 | 2 | FALSE | 0 | FALSE | 1.222 | Ftase,QC,HDAC, GLP-1R,AMPA |
| 5,7-Dihydroxy-6,8-dimethyl-3-(4′-hydroxy-3′-methoxybenzyl)chroman-4-one(28814) | 3 | 2 | FALSE | 0 | FALSE | 1.144 | RAR |
| Glabroisoflavanone A(30713) | 3 | 2 | FALSE | 0 | FALSE | 1.913 | MAOA |
Figure 72D structure and corresponding plants of 11 compounds with favorable ADMET properties.