Abstract

The discovery of new pharmaceutical drugs is one of the preeminent tasks—scientifically, economically, and socially—in biomedical research. Advances in informatics and computational biology have increased productivity at many stages of the drug discovery pipeline. Nevertheless, drug discovery has slowed, largely due to the reliance on small molecules as the primary source of novel hypotheses. Natural products (such as plant metabolites, animal toxins, and immunological components) comprise a vast and diverse source of bioactive compounds, some of which are supported by thousands of years of traditional medicine, and are largely disjoint from the set of small molecules used commonly for discovery. However, natural products possess unique characteristics that distinguish them from traditional small molecule drug candidates, requiring new methods and approaches for assessing their therapeutic potential. In this review, we investigate a number of state-of-the-art techniques in bioinformatics, cheminformatics, and knowledge engineering for data-driven drug discovery from natural products. We focus on methods that aim to bridge the gap between traditional small-molecule drug candidates and different classes of natural products. We also explore the current informatics knowledge gaps and other barriers that need to be overcome to fully leverage these compounds for drug discovery. Finally, we conclude with a “road map” of research priorities that seeks to realize this goal.

Highlights

  • Drug discovery is the process by which new pharmaceutical drugs are identified, and along with drug development, it comprises one of the most substantial activities in pharmaceutical science

  • We explore several major disciplines based upon informatics and computational methods—cheminformatics, bioinformatics, and semantic informatics—and their associated methods that can be used for Natural products (NPs) drug discovery

  • There is no definitive consensus on what groups of substances comprise “natural products,” with some authors restricting them to small molecule secondary metabolites (Nature Publishing Group, 2007), and others more broadly stating that an NP is any chemical substance produced by a living organism (National Center for Complementary and Integrative Health, 2017)

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Summary

INTRODUCTION

Drug discovery is the process by which new pharmaceutical drugs are identified, and along with drug development (validating, testing, and marketing a new drug), it comprises one of the most substantial activities in pharmaceutical science. Cheminformatics, for example, is the application of computer science to understanding and characterizing molecular attributes and chemical behavior of specific compounds These methods have generated massive libraries of small molecules to screen against specific therapeutic processes (Blaney and Martin, 1997). Bioinformatics techniques can be used to discover how candidate drugs cause therapeutic activity within the human body, which can include predicting interactions between drugs and proteins, analysis of impact on biological pathways and functions, and elucidating genomic variants that can alter drug response (Drews, 2000) Despite these technological advances in drug discovery, the approval of new therapeutic drugs has slowed considerably in recent years. We conclude with a recap of the major gaps currently facing the field of computational NP drug discovery, and suggest actions for the future that could help to resolve these problems

CLASSES OF THERAPEUTIC NATURAL PRODUCTS
Phytochemicals
Fungal Metabolites
Toxins
Antibodies
NPs With Limited Therapeutic Potential
CHEMINFORMATICS METHODS
Cheminformatics and Natural Products
BIOINFORMATICS METHODS
Bioinformatics and Natural Products
Semantic Methods and Natural Products
Comparing the Use of Informatics Disciplines in NP Drug Discovery
Data Needs for NP Drug Discovery
A Road Map for the Future of Natural Product Drug Discovery
Generating public HTS data for NPs
Utilizing clinical data
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