Author:
Ochieng Peter Juma,Hussain Abrar,Dombi József,Krész Miklós
Abstract
AbstractAimThis study outlines an efficient weighted network centrality measure approach and its application in network pharmacology for exploring mechanisms of action of theRuellia prostrata(RP) andRuellia bignoniiflora(RB) herbal formula for treating rheumatoid arthritis.MethodIn our proposed method we first calculated interconnectivity scores all the network targets then computed weighted centrality score for all targets to identify of major network targets based on centrality score. We apply our technology to network pharmacology by constructing herb-compound-putative target network; compound-putative targets-RA target network; and imbalance multi-level herb-compound-putative target-RA target-PPI network. We then identify the major targets in the network based on our centrality measure approach. Finally we validated the major identified network targets using the enrichment analysis and a molecular docking simulation.ResultThe results reveled our proposed weighted network centrality approach outperform classical centrality measure in identification of influential nodes in four real complex networks based on SI model simulation. Application of our approach to network pharmacology shows that 57 major targets of which 33 targets including 8 compositive compounds, 15 putative target and 10 therapeutic targets played an important role in the network and directly linked to rheumatoid arthritis. Enrichment analysis confirmed that putative targets were frequently involved in TNF, CCR5, IL-17 and G-protein coupled receptors signaling pathways which are critical in the progression of rheumatoid arthritis. The molecular docking simulation indicated four targets had significant binding affinity to major protein targets. Glyceryl diacetate-2-Oleate and Oleoyl chloride showed the best binding affinity to all targets proteins and were within Lipinski limits. ADMET prediction also confirm both compounds had no toxic effect on human hence potential lead drug compounds for treating rheumatoid arthritis.ConclusionThis study developed an efficient weighted network centrality approach as tool for identification of major network targets. Network pharmacology findings provides promising results that could lead us to design and discover of alternative drug compounds. Though our approach is a purely in silico method, clinical experiments are required to test and validate the hypotheses of our computational methods.
Publisher
Springer Science and Business Media LLC
Subject
Computational Mathematics,Computer Networks and Communications,Multidisciplinary
Reference99 articles.
1. Abramson SB (2008) Nitric oxide in inflammation and pain associated with osteoarthritis. Arthritis Res Ther 10(2):1–7
2. Agarwal S, Mehrotra R (2016) An overview of molecular docking. JSM Chem 4(2):1024–1028
3. Allen FH, Motherwell WS (2002) Applications of the Cambridge structural database in organic chemistry and crystal chemistry. Acta Crystallogr B 58(3):407–422
4. Amberger JS, Bocchini CA, Scott AF, Hamosh A (2019) Omim. org: leveraging knowledge across phenotype-gene relationships. Nucleic Acids Res 47(D1):1038–1043
5. Anderson J, Caplan L, Yazdany J, Robbins ML, Neogi T, Michaud K, Saag KG, O’dell JR, Kazi S (2012) Rheumatoid arthritis disease activity measures: American college of rheumatology recommendations for use in clinical practice. Arthritis Care Res 64(5):640–647
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