Network Modeling Analysis in Health Informatics and Bioinformatics View Homepage


Ontology type: schema:Periodical     


Journal Info

START YEAR

2012

PUBLISHER

Springer Vienna

LANGUAGE

en

HOMEPAGE

http://link.springer.com/journal/13721

Recent publications latest 20 shown

  • 2019-12 Identification of target genes in cancer diseases using protein–protein interaction networks
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  • 2019-12 Design and prediction of favorable substitution site in trifluorophenyl-substituted homopiperazine, pyrazoline, triazepane derivatives as dipeptidyl peptidase IV Inhibitors: HQSAR and docking studies
  • 2019-12 Computational simulation of inhibitory effects of curcumin, retinoic acid and their conjugates on GSK-3 beta
  • 2019-12 Using multiple network alignment for studying connectomes
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  • 2019-12 Computational screening and ADMET-based study for targeting Plasmodium S-adenosyl-l-homocysteine hydrolase: top scoring inhibitors
  • 2018-12 A hybrid analytic approach for understanding patient demand for mental health services
  • 2018-12 Prediction of drug solubility on parallel computing architecture by support vector machines
  • 2018-12 Probing the structural requirements for angiotensin II receptor: molecular modeling studies
  • 2018-12 Applications of data hiding techniques in medical and healthcare systems: a survey
  • 2018-12 A new insight into identification of in silico analysis of natural compounds targeting GPR120
  • 2018-12 Structure-based optimization of tyrosine kinase inhibitors: a molecular docking study
  • 2018-12 Cancer drug target identification and node-level analysis of the network of MAPK pathways
  • 2018-12 Prediction of single nucleotide polymorphisms (SNPs) in apolipoprotein E gene and their possible associations with a deleterious effect on the structure and functional properties: an in silico approach
  • 2018-12 Molecular docking, MD simulation, DFT and ADME-toxicity study on analogs of zerumbone against IKK-β enzyme as anti-cancer agents
  • 2018-12 Network-based approach to understand dynamic behaviour of Wnt signaling pathway regulatory elements in colorectal cancer
  • 2018-12 Systems biology approach deciphering the biochemical signaling pathway and pharmacokinetic study of PI3K/mTOR/p53-Mdm2 module involved in neoplastic transformation
  • 2018-12 Social-network analysis in healthcare: analysing the effect of weighted influence in physician networks
  • 2018-12 Decoding methylation patterns in ovarian cancer using publicly available Next-Gen sequencing data
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