An in silico study: Novel targets for potential drug and vaccine design against drug resistant H. pylori

Gastric cancer risk and adverse ramifications by augmented multi-drug resistance (MDR) of Helicobacter pylori are alarming serious health concern. Combating through available drugs is a difficult task due to lack of appropriate common targets against genetically diverse strains. To improve efficacy,...

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Veröffentlicht in:Microbial pathogenesis 2018-09, Vol.122, p.156-161
Hauptverfasser: Pasala, Chiranjeevi, Chilamakuri, Chandra Sekhar Reddy, Katari, Sudheer Kumar, Nalamolu, Ravina Madhulitha, Bitla, Aparna R., Umamaheswari, Amineni
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Sprache:eng
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Zusammenfassung:Gastric cancer risk and adverse ramifications by augmented multi-drug resistance (MDR) of Helicobacter pylori are alarming serious health concern. Combating through available drugs is a difficult task due to lack of appropriate common targets against genetically diverse strains. To improve efficacy, the effective targets should be identified and critically assessed. In the present study, we aim to predict the potential novel targets against H. pylori strains by employing computer aided approach. The genomic dataset of 53 H. pylori strains was comparatively processed and eventually predicted 826 ‘conserved gene products’. Further, we performed subtractive genomic approach in search of promising crucial targets through the combination of in silico analyses. Codon adaptation index (CAI) value calculation and literature surveys were also done in order to find highly expressed gene products with novelty. Consequently, four enzymes and three membrane proteins were prioritized as new therapeutic and vaccine targets respectively which found to have more interactors in network with high-confidence score, druggability, antigenicity and molecular weight
ISSN:0882-4010
1096-1208
DOI:10.1016/j.micpath.2018.05.037