Computation in BioInformatics. Группа авторов

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Название Computation in BioInformatics
Автор произведения Группа авторов
Жанр Базы данных
Серия
Издательство Базы данных
Год выпуска 0
isbn 9781119654766



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against NS2B-NS3 protease of dengue 2 virus (DENV-2). In this study, admetSAR was used to screen the ADMET properties of the compounds extracted from Carica papaya [49].

      In 2014, molecular dynamics study was carried out to evaluate the constancy of the complexes of protein-ligand and individual protein. The study was also carried out for double mutant (toho-1-R274N/R276N in Escherichia coli) and triple mutant (toho-1-E166A/R274N/R276N in Escherichia coli) systems of class A β-lactamases and also for point mutant (SHV-E166A in Klebsiella pneumoniae) [50].

      In 2014, to reveal the potential anti-mycobacterium activity of pyrrole hydrazine derivatives which acts on enoyl-acyl carrier protein reductase was carried out using CoMFA and CoMSIA analysis [51].

      In 2016, Malathi and Ramaiah performed structure-based virtual screening to analyze the inhibtors that are potential for OXA-10 ESBL expressing P. aeruginosa. This was done in opposition to millions of compounds that are present in ZINC database. For this study, Molinspiration tool was used. The tool was used to filter the imipenem analogs that is based on the Lipinski’s rule of five [52].

      In 2016, identification of novel inhibitors for Penicillin binding protein 2a (PBP2a) of ceftaroline-resistant methicillin-resistant Staphylococcus aureus (MRSA) was used for virtual screening using Dock blaster server [53].

      Acinetobacter baumannii (A. baumannii), a Gram negative, coccobacilli which is associated with nosocomial infections has developed resistance to all known classes of antibiotics. The infections have been treated with the carbapenem group of antibiotics like imipenem and meropenem. According to the reports, A. baumannii has obtained resistance to imipenem due to the secretion of carbapenem hydrolysing class D betalactamases (CHDLs). A study was carried out in 2016, to search for the possible mechanism of imipenem resistance in OXA-143 and OXA-231 (D224A) CHDLs expressing A. baumannii. This was performed using molecular docking and dynamics simulation studies.

      In 2017, Suganya et al. investigated the anti-dyslipidemic property. This property was studied on plant compounds against HMG-CoA reductase. Molecular dynamic study was performed to analyze the stability of the rutin-HMG CoA complex. It was observed that the resulted plots reveal the constancy of the Epicatechin-HMG CoA complex instead of the free HMG CoA [55].

      In 2018, Kist et al. have performed a search which was ligand-based Pharmacophore in order to investigate non-ATP competitive inhibitors for mammalian or mechanistic target of rapamycin (mTOR).

      The spatial arrangement of protein model and ligand model was generated in order to design a model by ZINCPharmer platform.

      This was done with the help of hydrophobic interactions of residues like C19, C5, C21, C45, C43, and C49 of rapamycin. Thus, it results in the generation of eight new inhibitors with better activity [56].

      The field of bioinformatics plays a pivotal role in designing novel synthetic drugs. Bioinformatics is providing a huge support in order to overcome the cost and time in drug discovery and development. A broad range of softwares and databases related to drug can be obtained using bioinformatics, thereby helping in drug designing purposes. For drug designing, the tools which were discussed in this chapter are playing a major role in the enhancement of modified drugs development. With the use of bioinformatics tools in designing drugs, promising drug candidates can be constructed thereby providing a hope for betterment in drug discovery area.

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