Javascript must be enabled to continue!
Machine learning for synergistic network pharmacology: a comprehensive overview
View through CrossRef
Abstract
Network pharmacology is an emerging area of systematic drug research that attempts to understand drug actions and interactions with multiple targets. Network pharmacology has changed the paradigm from ‘one-target one-drug’ to highly potent ‘multi-target drug’. Despite that, this synergistic approach is currently facing many challenges particularly mining effective information such as drug targets, mechanism of action, and drug and organism interaction from massive, heterogeneous data. To overcome bottlenecks in multi-target drug discovery, computational algorithms are highly welcomed by scientific community. Machine learning (ML) and especially its subfield deep learning (DL) have seen impressive advances. Techniques developed within these fields are now able to analyze and learn from huge amounts of data in disparate formats. In terms of network pharmacology, ML can improve discovery and decision making from big data. Opportunities to apply ML occur in all stages of network pharmacology research. Examples include screening of biologically active small molecules, target identification, metabolic pathways identification, protein–protein interaction network analysis, hub gene analysis and finding binding affinity between compounds and target proteins. This review summarizes the premier algorithmic concepts of ML in network pharmacology and forecasts future opportunities, potential applications as well as several remaining challenges of implementing ML in network pharmacology. To our knowledge, this study provides the first comprehensive assessment of ML approaches in network pharmacology, and we hope that it encourages additional efforts toward the development and acceptance of network pharmacology in the pharmaceutical industry.
Oxford University Press (OUP)
Title: Machine learning for synergistic network pharmacology: a comprehensive overview
Description:
Abstract
Network pharmacology is an emerging area of systematic drug research that attempts to understand drug actions and interactions with multiple targets.
Network pharmacology has changed the paradigm from ‘one-target one-drug’ to highly potent ‘multi-target drug’.
Despite that, this synergistic approach is currently facing many challenges particularly mining effective information such as drug targets, mechanism of action, and drug and organism interaction from massive, heterogeneous data.
To overcome bottlenecks in multi-target drug discovery, computational algorithms are highly welcomed by scientific community.
Machine learning (ML) and especially its subfield deep learning (DL) have seen impressive advances.
Techniques developed within these fields are now able to analyze and learn from huge amounts of data in disparate formats.
In terms of network pharmacology, ML can improve discovery and decision making from big data.
Opportunities to apply ML occur in all stages of network pharmacology research.
Examples include screening of biologically active small molecules, target identification, metabolic pathways identification, protein–protein interaction network analysis, hub gene analysis and finding binding affinity between compounds and target proteins.
This review summarizes the premier algorithmic concepts of ML in network pharmacology and forecasts future opportunities, potential applications as well as several remaining challenges of implementing ML in network pharmacology.
To our knowledge, this study provides the first comprehensive assessment of ML approaches in network pharmacology, and we hope that it encourages additional efforts toward the development and acceptance of network pharmacology in the pharmaceutical industry.
Related Results
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND
As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
The pandemic Covid-19 currently demands teachers to be able to use technology in teaching and learning process. But in reality there are still many teachers who have not been able ...
A comprehensive review of machine learning's role in enhancing network security and threat detection
A comprehensive review of machine learning's role in enhancing network security and threat detection
As network security threats continue to evolve in complexity and sophistication, there is a growing need for advanced solutions to enhance network security and threat detection cap...
Principles of clinical pharmacology
Principles of clinical pharmacology
Pharmacology is defined as the study of the effects of drugs on the function of a living organism. It is an integrative discipline that tackles drug/ compound behaviours in varied...
Network Automation
Network Automation
Purpose: The article "Network Automation in the Contemporary Economy" explores the concepts and methods of effective network management. The application stack, Jinja template engin...
Network Pharmacology and Computational Approach to Unveiling the Mechanism of Berberine in Depression
Network Pharmacology and Computational Approach to Unveiling the Mechanism of Berberine in Depression
Introduction:
Depression is a prevalent and often underdiagnosed neuropsychiatric disorder.
Natural herbal medicinal products are receiving more attention as po...
Machine Learning for Enhancing Mortgage Origination Processes: Streamlining and Improving Efficiency
Machine Learning for Enhancing Mortgage Origination Processes: Streamlining and Improving Efficiency
The mortgage industry, historically characterized by manual processes, paperwork, and complex decision-making, is on the brink of a digital revolution driven by machine learning (M...
Do People Believe Combined Hazards Can Present Synergistic Risks?
Do People Believe Combined Hazards Can Present Synergistic Risks?
The risk attributable to some hazard combinations can be greater than the sum of the risk attributable to each constituent hazard. Such “synergistic risks” occur in several domains...

