Literature DB >> 26689499

Providing data science support for systems pharmacology and its implications to drug discovery.

Thomas Hart1,2, Lei Xie3,4.   

Abstract

INTRODUCTION: The conventional one-drug-one-target-one-disease drug discovery process has been less successful in tracking multi-genic, multi-faceted complex diseases. Systems pharmacology has emerged as a new discipline to tackle the current challenges in drug discovery. The goal of systems pharmacology is to transform huge, heterogeneous, and dynamic biological and clinical data into interpretable and actionable mechanistic models for decision making in drug discovery and patient treatment. Thus, big data technology and data science will play an essential role in systems pharmacology. AREAS COVERED: This paper critically reviews the impact of three fundamental concepts of data science on systems pharmacology: similarity inference, overfitting avoidance, and disentangling causality from correlation. The authors then discuss recent advances and future directions in applying the three concepts of data science to drug discovery, with a focus on proteome-wide context-specific quantitative drug target deconvolution and personalized adverse drug reaction prediction. EXPERT OPINION: Data science will facilitate reducing the complexity of systems pharmacology modeling, detecting hidden correlations between complex data sets, and distinguishing causation from correlation. The power of data science can only be fully realized when integrated with mechanism-based multi-scale modeling that explicitly takes into account the hierarchical organization of biological systems from nucleic acid to proteins, to molecular interaction networks, to cells, to tissues, to patients, and to populations.

Entities:  

Keywords:  Data Science; drug discovery; machine learning; multi-scale modeling; systems pharmacology

Mesh:

Year:  2016        PMID: 26689499      PMCID: PMC4988863          DOI: 10.1517/17460441.2016.1135126

Source DB:  PubMed          Journal:  Expert Opin Drug Discov        ISSN: 1746-0441            Impact factor:   6.098


  76 in total

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Review 3.  Pharmacodynamic Drug-Drug Interactions.

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Review 4.  Using Big Data to Discover Diagnostics and Therapeutics for Gastrointestinal and Liver Diseases.

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6.  A Systems Pharmacology Approach for Identifying the Multiple Mechanisms of Action for the Rougui-Fuzi Herb Pair in the Treatment of Cardiocerebral Vascular Diseases.

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8.  Improved genome-scale multi-target virtual screening via a novel collaborative filtering approach to cold-start problem.

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9.  Molecular mechanisms involved in the side effects of fatty acid amide hydrolase inhibitors: a structural phenomics approach to proteome-wide cellular off-target deconvolution and disease association.

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