| Literature DB >> 30201875 |
Ke Han1, Lei Zhang2, Miao Wang3, Rui Zhang4, Chunyu Wang5, Chengzhi Zhang6.
Abstract
Chinese herbal medicine has recently gained worldwide attention. The curative mechanism of Chinese herbal medicine is compared with that of western medicine at the molecular level. The treatment mechanism of most Chinese herbal medicines is still not clear. How do we integrate Chinese herbal medicine compounds with modern medicine? Chinese herbal medicine drug-like prediction method is particularly important. A growing number of Chinese herbal source compounds are now widely used as drug-like compound candidates. An important way for pharmaceutical companies to develop drugs is to discover potentially active compounds from related herbs in Chinese herbs. The methods for predicting the drug-like properties of Chinese herbal compounds include the virtual screening method, pharmacophore model method and machine learning method. In this paper, we focus on the prediction methods for the medicinal properties of Chinese herbal medicines. We analyze the advantages and disadvantages of the above three methods, and then introduce the specific steps of the virtual screening method. Finally, we present the prospect of the joint application of various methods.Entities:
Keywords: Chinese herbal compounds; comparative study; drug-likeness; virtual screening
Mesh:
Substances:
Year: 2018 PMID: 30201875 PMCID: PMC6225236 DOI: 10.3390/molecules23092303
Source DB: PubMed Journal: Molecules ISSN: 1420-3049 Impact factor: 4.411
Figure 1Annual release of compound structure and total structure quantity statistics.
The application examples of virtual screening technology.
| Author | Title | Application | Ref. |
|---|---|---|---|
| Li, X.; Kang, H.; Liu, W.; Singhal, S.; Jiao, N.; Wang, Y.; Zhu, L.; Zhu, R. | In silico design of novel proton-pump inhibitors with reduced adverse effects. | Virtual screening is used to select molecules with the desired pKa values | [ |
| Azad, I.; Nasibullah, M.; Khan, T.; Hassan, F.; Akhter, Y. | Exploring the novel heterocyclic derivatives as lead molecules for design and development of potent anticancer agents. | Used a novel heterocyclic derivative as a lead compound to perform virtual screening on 27 compounds previously screened to develop an effective anticancer drug | [ |
| McKerrow, J.H.; Lipinski, C.A. | The rule of five should not impede anti-parasitic drug development. | Proposed five rules for drug-like | [ |
| Fong, P.; Ao, C.N.; Tou, K.I.; Huang, K.M.; Cheong, C.C.; Meng, L.R | Experimental and in silico analysis of cordycepin and its derivatives as endometrial cancer treatment. | Used molecular docking scores to evaluate the possibility of cordycepin and its derivatives as therapeutic agents for endometrial cancer | [ |
| Ai, H.; Wu, X.; Qi, M.; Zhang, L.; Hu, H.; Zhao, Q.; Zhao, J.; Liu, H. | Study on the mechanisms of active compounds in traditional Chinese medicine for the treatment of influenza virus by virtual screening. | The study utilizes structure-based molecular docking techniques to screen for more than 10,000 molecular structures | [ |
| Onawole, A.T.; Kolapo, T.U.; Sulaiman, K.O.; Adegoke, R.O. | Structure based virtual screening of the ebola virus trimeric glycoprotein using consensus scoring. | Used the co-product score method to evaluate the three drug candidates currently selected for the treatment of the Ebola virus | [ |
Figure 2The results diagram of 21 scoring functions in CASF [52].
Figure 3PharmaGistpharmacophore model development training set representative compound structure schematic (1. PDB ID: 4BNH 2. PDB ID: 4BID 3. PDB ID: 3VW6).
The application examples of pharmacophore model.
| Author | Title | Application | Ref. |
|---|---|---|---|
| Bemis, G.W.; Murcko, M.A. | Properties of known drugs. 2. Side chains. | found a large amount of information available in the corresponding analysis of the molecular structure of drugs | [ |
| Wang, J.; Hou, T. | Drug and drug candidate building block analysis. | combined statistically relevant methods to compare a variety of predicted molecules with known drug molecules for more comprehensive attributes | [ |
| Starosyla, S.A.; Volynets, G.P.; Bdzhola, V.G.; Golub, A.G.; Protopopov, M.V.; Yarmoluk, S.M. | Ask1 pharmacophore model derived from diverse classes of inhibitors. | The location of the pharmacophore features in the model corresponds to the conformation of the ASK1 high activity inhibitor, which interacts with the binding site of ASK1 | [ |
| Shang, J.; Hu, B.; Wang, J.; Zhu, F.; Kang, Y.; Li, D.; Sun, H.; Kong, D.X.; Hou, T. | Cheminformatic insight into the differences between terrestrial and marine originated natural products. | used chemical informatics to study the physical and chemical structures and pharmacological pharmacophores of terrestrial and marine natural products | [ |
The application examples of machine learning method.
| Author | Title | Application | Ref. |
|---|---|---|---|
| Ekins, S.; de Siqueira-Neto, J.L.; McCall, L.I.; Sarker, M.; Yadav, M.; Ponder, E.L.; Kallel, E.A.; Kellar, D.; Chen, S.; Arkin, M. | Machine learning models and pathway genome data base for trypanosomacruzi drug discovery. | developed a Bayesian machine learning model for screening active compounds for the treatment of neural tube defects caused by trypanosomacruzi | [ |
| Schneider, B.; Balbas-Martinez, V.; Jergens, A.E.; Troconiz, I.F.; Allenspach, K.; Mochel, J.P. | Model-based reverse translation between veterinary and human medicine: The one health initiative. | have established a network model based on recursive partitioning algorithms based on 3117 drugs and 2238 non-pharmaceuticals, but the effect is not particularly ideal | [ |
| Yosipof, A.; Guedes, R.C.; Garcia-Sosa, A.T. | Data mining and machine learning models for predicting drug likeness and their disease or organ category. | used a variety of different machine learning methods to form a new integrated learning method called AL Boost | [ |
| Huang, T.; Ning, Z.; Hu, D.; Zhang, M.; Zhao, L.; Lin, C.; Zhong, L.L.D.; Yang, Z.; Xu, H.; Bian, Z. | Uncovering the mechanisms of Chinese herbal medicine (mazirenwan) for functional constipation by focused network pharmacology approach. | The method incorporates a variety of machine learning methods for predicting possible targets for representative compounds | [ |
| Zhou, W.; Wang, J.; Wu, Z.; Huang, C.; Lu, A.; Wang, Y. | Systems pharmacology exploration of botanic drug pairs reveals the mechanism for treating different diseases. | used a machine-based C-P network analysis and C-P-T network analysis method to predict and analyze the extracted active compounds | [ |