Significance of Network pharmacology
Network pharmacology is a comprehensive approach that integrates systems biology to explore the multidimensional effects of herbal combinations and forecast interactions among multiple compounds and target proteins. It emphasizes multi-drug and multi-target interactions, distinguishing it from traditional single-drug methods. This field of study focuses on the interactions of different drugs within biological networks and is crucial for drug development, analyzing how botanical bioactives work at a molecular level, particularly in Ayurvedic formulations, to enhance drug discovery and understanding of biological pathways.
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The concept of Network pharmacology in scientific sources
Network pharmacology is an innovative approach in drug development focusing on multi-drug and multi-target interactions within biological systems, enhancing drug discovery by analyzing molecular interactions of botanical bioactives and their effects on biological networks.
From: Journal of Ayurveda and Integrative Medicine
(1) A discipline that incorporates network analysis with pharmacology to enhance the understanding of natural compounds and their interactions.[1] (2) A promising field that investigates the connections between active components and potential targets in traditional medicines, focusing on the drug-target-pathway-disease interactions.[2] (3) An approach that integrates systems biology to study multidimensional effects of herbal combinations.[3] (4) An approach aimed at understanding the complex drug interactions in Ayurvedic formulations and their effects on various biological pathways.[4] (5) A method used to forecast the interaction of multiple compounds and target proteins to elucidate their effects on biological systems.[5]
From: Journal of Ayurveda and Holistic Medicine
(1) A field of study that focuses on how different drugs and their targets interact within biological networks.[6]