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dc.contributor.editorUdrescu, Lucreția
dc.contributor.editorKurunczi, Ludovic
dc.contributor.editorBogdan, Paul
dc.contributor.editorUdrescu, Mihai
dc.date.accessioned2023-01-05T12:37:41Z
dc.date.available2023-01-05T12:37:41Z
dc.date.issued2022
dc.identifierONIX_20230105_9783036561349_128
dc.identifier.urihttps://directory.doabooks.org/handle/20.500.12854/95899
dc.description.abstractThe discovery of new drugs is one of pharmaceutical research's most exciting and challenging tasks. Unfortunately, the conventional drug discovery procedure is chronophagous and seldom successful; furthermore, new drugs are needed to address our clinical challenges (e.g., new antibiotics, new anticancer drugs, new antivirals).Within this framework, drug repositioning—finding new pharmacodynamic properties for already approved drugs—becomes a worthy drug discovery strategy.Recent drug discovery techniques combine traditional tools with in silico strategies to identify previously unaccounted properties for drugs already in use. Indeed, big data exploration techniques capitalize on the ever-growing knowledge of drugs' structural and physicochemical properties, drug–target and drug–drug interactions, advances in human biochemistry, and the latest molecular and cellular biology discoveries.Following this new and exciting trend, this book is a collection of papers introducing innovative computational methods to identify potential candidates for drug repositioning. Thus, the papers in the Special Issue In Silico Strategies for Prospective Drug Repositionings introduce a wide array of in silico strategies such as complex network analysis, big data, machine learning, molecular docking, molecular dynamics simulation, and QSAR; these strategies target diverse diseases and medical conditions: COVID-19 and post-COVID-19 pulmonary fibrosis, non-small lung cancer, multiple sclerosis, toxoplasmosis, psychiatric disorders, or skin conditions.
dc.languageEnglish
dc.subject.classificationthema EDItEUR::M Medicine and Nursingen_US
dc.subject.classificationthema EDItEUR::K Economics, Finance, Business and Management::KN Industry and industrial studies::KND Manufacturing industriesen_US
dc.subject.otherCOVID-19
dc.subject.otherdrug repurposing
dc.subject.othertopological data analysis
dc.subject.otherpersistent Betti function
dc.subject.otherSARS-CoV-2
dc.subject.othernetwork-based pharmacology
dc.subject.othercombination therapy
dc.subject.othernucleoside GS-441524
dc.subject.otherfluoxetine
dc.subject.othersynergy
dc.subject.otherantidepressant
dc.subject.othernatural compounds
dc.subject.otherQSAR
dc.subject.othermolecular docking
dc.subject.otherdrug repositioning
dc.subject.otherUK Biobank
dc.subject.othervaccine
dc.subject.otherLC-2/ad cell line
dc.subject.otherdrug discovery
dc.subject.otherdocking
dc.subject.otherMM-GBSA calculation
dc.subject.othermolecular dynamics
dc.subject.othercytotoxicity assay
dc.subject.otherGWAS
dc.subject.othermultiple sclerosis
dc.subject.otheroxidative stress
dc.subject.otherrepurposing
dc.subject.otherADME-Tox
dc.subject.otherbioinformatics
dc.subject.othercomplex network analysis
dc.subject.othermodularity clustering
dc.subject.otherATC code
dc.subject.otherhidradenitis suppurativa
dc.subject.otheracne inversa
dc.subject.othertranscriptome
dc.subject.otherproteome
dc.subject.othercomorbid disorder
dc.subject.otherbiomarker
dc.subject.othersignaling pathway
dc.subject.otherdruggable gene
dc.subject.otherdrug-repositioning
dc.subject.otherMEK inhibitor
dc.subject.otherMM/GBSA
dc.subject.otherGlide docking
dc.subject.otherMD simulation
dc.subject.otherMM/PBSA
dc.subject.othersingle-cell RNA sequencing
dc.subject.otherpulmonary fibrosis
dc.subject.otherbiological networks
dc.subject.otherp38α MAPK
dc.subject.otherallosteric inhibitors
dc.subject.otherin silico screening
dc.subject.othercomputer-aided drug discovery
dc.subject.othernetwork analysis
dc.subject.otherpsychiatric disorders
dc.subject.othermedications
dc.subject.otherpsychiatry
dc.subject.othermental disorders
dc.subject.othertoxoplasmosis
dc.subject.otherToxoplasma gondii
dc.subject.otherin vitro screening
dc.subject.otherdrug targets
dc.subject.otherdrug-disease interaction
dc.subject.othertarget-disease interaction
dc.subject.otherDPP4 inhibitors
dc.subject.otherlipid rafts
dc.titleIn Silico Strategies for Prospective Drug Repositionings
dc.typebook
oapen.identifier.doi10.3390/books978-3-0365-6133-2
oapen.relation.isPublishedBy46cabcaa-dd94-4bfe-87b4-55023c1b36d0
oapen.relation.isbn9783036561349
oapen.relation.isbn9783036561332
oapen.pages288
oapen.place.publicationBasel


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