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1.
Front Chem ; 11: 1292869, 2023.
Article in English | MEDLINE | ID: mdl-37927570

ABSTRACT

Identifying compound-protein interaction plays a vital role in drug discovery. Artificial intelligence (AI), especially machine learning (ML) and deep learning (DL) algorithms, are playing increasingly important roles in compound-protein interaction (CPI) prediction. However, ML relies on learning from large sample data. And the CPI for specific target often has a small amount of data available. To overcome the dilemma, we propose a virtual screening model, in which word2vec is used as an embedding tool to generate low-dimensional vectors of SMILES of compounds and amino acid sequences of proteins, and the modified multi-grained cascade forest based gcForest is used as the classifier. This proposed method is capable of constructing a model from raw data, adjusting model complexity according to the scale of datasets, especially for small scale datasets, and is robust with few hyper-parameters and without over-fitting. We found that the proposed model is superior to other CPI prediction models and performs well on the constructed challenging dataset. We finally predicted 2 new inhibitors for clusters of differentiation 47(CD47) which has few known inhibitors. The IC50s of enzyme activities of these 2 new small molecular inhibitors targeting CD47-SIRPα interaction are 3.57 and 4.79 µM respectively. These results fully demonstrate the competence of this concise but efficient tool for CPI prediction.

2.
Neurotherapeutics ; 20(2): 339-358, 2023 03.
Article in English | MEDLINE | ID: mdl-36735180

ABSTRACT

As cancer therapies advance and patient survival improves, there has been growing concern about the long-term adverse effects that patients may experience following treatment, and concerns have been raised about such persistent, progressive, and often irreversible adverse effects. Chemotherapy is a potentially life-extending treatment, and chemotherapy-induced peripheral neuropathy (CIPN) is one of its most common long-term toxicities. At present, strategies for the prevention and treatment of CIPN are still an open problem faced by medicine, and there has been a large amount of previous evidence that oxidative damage is involved in the process of CIPN. In this review, we focus on the lines of defense involving antioxidants that exert the effect of inhibiting CIPN. We also provide an update on the targets and clinical prospects of different antioxidants (melatonin, N-acetylcysteine, vitamins, α-lipoic acid, mineral elements, phytochemicals, nutritional antioxidants, cytoprotectants and synthetic compounds) in the treatment of CIPN with the help of preclinical and clinical studies, emphasizing the great potential of antioxidants as adjuvant strategies to mitigate CIPN.


Subject(s)
Antineoplastic Agents , Peripheral Nervous System Diseases , Humans , Antineoplastic Agents/adverse effects , Antioxidants/therapeutic use , Peripheral Nervous System Diseases/chemically induced , Peripheral Nervous System Diseases/drug therapy , Peripheral Nervous System Diseases/prevention & control , Acetylcysteine/adverse effects , Oxidative Stress
3.
Expert Opin Ther Pat ; 31(8): 723-743, 2021 Aug.
Article in English | MEDLINE | ID: mdl-33645365

ABSTRACT

INTRODUCTION: Fibrosis is a serious disease that occurs in many organs, such as kidney, liver and lung. The deterioration of these organs ultimately leads to death. Due to the complex mechanisms of fibrosis, research and development of antifibrotic drugs is difficult. One solution is to focus on core pathways, one of which is the TGF-ß signaling pathway. In virtually every type of fibrosis, TGF-ß signaling is recognized as a critical pathway. AREA COVERED: This review discusses patents on active molecules related to the TGF-ß signaling. Molecules targeting components related to the activation of TGF-ß are introduced. Several strategies preventing signal propagation from active TGF-ß to downstream targets are also introduced, including TGF-ß antibodies, TGF-ß ligand traps, and inhibitors of TGF-ß receptor kinases. Finally, molecules affecting downstream targets in both canonical and noncanonical TGF-ß signaling pathways are described. EXPERT OPINION: Since the approval of pirfenidone, targeting TGF-ß signaling has been anticipated as an effective therapy for fibrosis. The potential of this therapy has been further supported by emerging patents on the TGF-ß signaling. This pathway can be entirely inhibited, from the activation of TGF-ß to downstream signaling. Inhibiting TGF-ß signaling is expected to provide more effective treatments for fibrosis.


Subject(s)
Drug Development , Fibrosis/drug therapy , Transforming Growth Factor beta/antagonists & inhibitors , Animals , Fibrosis/pathology , Humans , Molecular Targeted Therapy , Patents as Topic , Signal Transduction/drug effects
4.
Eur J Med Chem ; 196: 112317, 2020 Jun 15.
Article in English | MEDLINE | ID: mdl-32311606

ABSTRACT

The emergence of antibiotic-resistant Mycobacterium Tuberculosis (Mtb) infections compels new treatment strategies, of which targeting trans-translation is promising. During the trans-translation process, the ribosomal protein S1 (RpsA) plays a key role, and the Ala438 mutant is related to pyrazinamide (PZA) resistance, which shows its effects after being hydrolysed to pyrazinoic acid (POA). In this study, based on the structure of the RpsA C-terminal domain (RpsA-CTD) and POA complex, new compounds were designed. After being synthesized, the compounds were tested in vitro with saturation transfer difference (STD), fluorescence quenching titration (FQT) and chemical shift perturbation (CSP) experiments. Finally, six of the 17 new compounds have high affinity for both RpsA-CTD and its Ala438 deletion mutant. The active compounds provide new choices for targeting trans-translation in Mtb, and the analysis of the structure-activity relationships will be helpful for further structural modifications based on derivatives of 2-((hypoxanthine-2-yl)thio)acetic acid and 2-((5-hydroxylflavone-7-yl)oxy)acetamide.


Subject(s)
Acetamides/pharmacology , Anti-Bacterial Agents/pharmacology , Hypoxanthine/pharmacology , Mycobacterium tuberculosis/drug effects , Ribosomal Proteins/antagonists & inhibitors , Tuberculosis, Multidrug-Resistant/drug therapy , Acetamides/chemical synthesis , Acetamides/chemistry , Anti-Bacterial Agents/chemical synthesis , Anti-Bacterial Agents/chemistry , Drug Discovery , Hypoxanthine/chemical synthesis , Hypoxanthine/chemistry , Microbial Sensitivity Tests , Molecular Docking Simulation , Molecular Structure , Ribosomal Proteins/metabolism , Tuberculosis, Multidrug-Resistant/metabolism
5.
J Cheminform ; 12(1): 42, 2020 Jun 08.
Article in English | MEDLINE | ID: mdl-33430983

ABSTRACT

With the rise of artificial intelligence (AI) in drug discovery, de novo molecular generation provides new ways to explore chemical space. However, because de novo molecular generation methods rely on abundant known molecules, generated molecules may have a problem of novelty. Novelty is important in highly competitive areas of medicinal chemistry, such as the discovery of kinase inhibitors. In this study, de novo molecular generation based on recurrent neural networks was applied to discover a new chemical space of kinase inhibitors. During the application, the practicality was evaluated, and new inspiration was found. With the successful discovery of one potent Pim1 inhibitor and two lead compounds that inhibit CDK4, AI-based molecular generation shows potentials in drug discovery and development.

6.
Future Med Chem ; 12(2): 127-145, 2020 01.
Article in English | MEDLINE | ID: mdl-31718293

ABSTRACT

Aim: CDK4/6 have critical roles in the early stage of the cell cycle. CDK2 acts later in the cell cycle and has a considerably broader range of protein substrates, some of which are essential for normal cell proliferation. Therefore, increasing the selectivity of cyclin-dependent kinase (CDK) inhibitors is critical. Methodology: In this study, we construct a versatile, specific CDK4 pharmacophore model that not only matches well with 8119 of the reported 9349 CDK4/6 inhibitors but also differentiates from the CDK2 pharmacophore. Results & Conclusion: we demonstrate the activity and selectivity determinants of CDK4/6 selective inhibitors based on the CDK4 pharmacophore model. Finally, we propose the future optimization strategy for CDK4/6 selective inhibitors, providing a theoretical basis for further research and development of CDK4/6 selective inhibitors.


Subject(s)
Cyclin-Dependent Kinase 4/antagonists & inhibitors , Cyclin-Dependent Kinase 6/antagonists & inhibitors , Drug Development , Enzyme Inhibitors/pharmacology , Cyclin-Dependent Kinase 4/metabolism , Cyclin-Dependent Kinase 6/metabolism , Enzyme Inhibitors/chemical synthesis , Enzyme Inhibitors/chemistry , Humans , Models, Molecular
8.
Future Med Chem ; 11(3): 165-177, 2019 Feb.
Article in English | MEDLINE | ID: mdl-30556417

ABSTRACT

Aim: Descriptors of molecules are important in the discovery of lead compounds. Most of these descriptors are used to represent molecular structures, although structural formulas are the most intuitive representation. Convolutional neural networks (ConvNets) are effective for managing intuitive information. Results/methodology: Convolutional neural networks (ConvNets) based on two-dimensional structural formulas were used for the preliminary screening of CDK4 inhibitors. After supervised learning of our homemade dataset, our models screened out ten approved drugs, including indocyanine green and candesartan cilexetil, with IC50 values of 2.0 and 5.2 µM, respectively. Conclusion: Depending only on intuitive information, the developed method was shown to be feasible, thus providing a new method of lead compound discovery.

9.
Expert Opin Drug Discov ; 13(12): 1091-1102, 2018 12.
Article in English | MEDLINE | ID: mdl-30449189

ABSTRACT

Introduction: Artificial intelligence systems based on neural networks (NNs) find rules for drug discovery according to training molecules, but first, the molecules need to be represented in certain ways. Molecular descriptors and fingerprints have been used as inputs for artificial neural networks (ANNs) for a long time, while other ways for describing molecules are used only for storing and presenting molecules. With the development of deep learning, variants of ANNs are now able to use different kinds of inputs, which provide researchers with more choices for drug discovery. Areas covered: The authors provide a brief overview of the applications of NNs in drug discovery. Combined with the characteristics of different ways for describing molecules, corresponding methods based on NNs provide new choices for drug discovery, including de novo drug design, ligand-based drug design, and receptor-based drug design. Expert opinion: Various ways for describing molecules can be inputs of NN-based models, and these models achieve satisfactory results in metrics. Although most of the models have not been widely applied and tested in practice, they can be the basis for automatic drug discovery in the future.


Subject(s)
Drug Design , Drug Discovery/methods , Neural Networks, Computer , Artificial Intelligence , Deep Learning , Humans , Ligands
10.
Future Med Chem ; 9(17): 1983-1994, 2017 11.
Article in English | MEDLINE | ID: mdl-29076756

ABSTRACT

AIM: Resistance to conventional antibiotics has spurred interest in exploring new antimicrobial strategies. Suppressing quorum sensing within biofilm is a promising antimicrobial strategy. LasR in quorum sensing system of the Gram-negative bacteria, Pseudomonas aeruginosa, directly enhances virulence and antibiotic resistance, with QscR as its indirect suppressor, so targeting both of them can synergistically take the effect. METHODOLOGY/RESULTS: An in silico protocol combining pharmacophores with molecular docking was applied. Pharmacophores of QscR agonists and LasR antagonists were prepared for preliminary screening, followed by counter-screen using a pharmacophore model of LasR agonists and molecular docking of LasR. Four compounds with novel scaffolds were confirmed as potential biofilm inhibitors with preliminary experimental data. CONCLUSION: Novel biofilm inhibitors can be found with the method.


Subject(s)
Anti-Bacterial Agents/pharmacology , Bacterial Proteins/agonists , Bacterial Proteins/antagonists & inhibitors , Biofilms/drug effects , Pseudomonas aeruginosa/drug effects , Quorum Sensing/drug effects , Repressor Proteins/agonists , Trans-Activators/antagonists & inhibitors , Anti-Bacterial Agents/chemistry , Drug Evaluation, Preclinical , Microbial Sensitivity Tests , Models, Molecular , Structure-Activity Relationship
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