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1.
Drug Discov Today ; 17(15-16): 869-74, 2012 Aug.
Article in English | MEDLINE | ID: mdl-22627007

ABSTRACT

Computational biologists use network analysis to uncover relationships between various data types of interest for drug discovery. For example, signalling and metabolic pathways are commonly used to understand disease states and drug mechanisms. However, several other flavours of network analysis techniques are also applicable in a drug discovery context. Recent advances include networks that encompass relationships between diseases, molecular mechanisms and gene targets. Even social networks that mirror interactions within the scientific community are helping to foster collaborations and novel research. We review how these different types of network analysis approaches facilitate drug discovery and their associated challenges.


Subject(s)
Drug Discovery , Computational Biology , Humans , Protein Interaction Mapping , Signal Transduction , Social Support
2.
PLoS Comput Biol ; 7(6): e1002060, 2011 Jun.
Article in English | MEDLINE | ID: mdl-21738454

ABSTRACT

A general paucity of knowledge about the metabolic state of Mycobacterium tuberculosis within the host environment is a major factor impeding development of novel drugs against tuberculosis. Current experimental methods do not allow direct determination of the global metabolic state of a bacterial pathogen in vivo, but the transcriptional activity of all encoded genes has been investigated in numerous microarray studies. We describe a novel algorithm, Differential Producibility Analysis (DPA) that uses a metabolic network to extract metabolic signals from transcriptome data. The method utilizes Flux Balance Analysis (FBA) to identify the set of genes that affect the ability to produce each metabolite in the network. Subsequently, Rank Product Analysis is used to identify those metabolites predicted to be most affected by a transcriptional signal. We first apply DPA to investigate the metabolic response of E. coli to both anaerobic growth and inactivation of the FNR global regulator. DPA successfully extracts metabolic signals that correspond to experimental data and provides novel metabolic insights. We next apply DPA to investigate the metabolic response of M. tuberculosis to the macrophage environment, human sputum and a range of in vitro environmental perturbations. The analysis revealed a previously unrecognized feature of the response of M. tuberculosis to the macrophage environment: a down-regulation of genes influencing metabolites in central metabolism and concomitant up-regulation of genes that influence synthesis of cell wall components and virulence factors. DPA suggests that a significant feature of the response of the tubercle bacillus to the intracellular environment is a channeling of resources towards remodeling of its cell envelope, possibly in preparation for attack by host defenses. DPA may be used to unravel the mechanisms of virulence and persistence of M. tuberculosis and other pathogens and may have general application for extracting metabolic signals from other "-omics" data.


Subject(s)
Models, Biological , Mycobacterium tuberculosis/physiology , Systems Biology/methods , Tuberculosis/microbiology , Algorithms , Anaerobiosis , Cluster Analysis , Escherichia coli/genetics , Escherichia coli/metabolism , Gene Expression Profiling , Gene Expression Regulation, Bacterial , Host-Pathogen Interactions , Humans , Macrophages/microbiology , Metabolic Networks and Pathways , Mycobacterium tuberculosis/genetics , Mycobacterium tuberculosis/metabolism , Oligonucleotide Array Sequence Analysis , Reproducibility of Results , Sputum/microbiology
3.
Drug Discov Today ; 16(11-12): 512-9, 2011 Jun.
Article in English | MEDLINE | ID: mdl-21440664

ABSTRACT

Next-generation sequencing (NGS) technologies represent a paradigm shift in sequencing capability. The technology has already been extensively applied to biological research, resulting in significant and remarkable insights into the molecular biology of cells. In this review, we focus on current and potential applications of the technology as applied to the drug discovery and development process. Early applications have focused on the oncology and infectious disease therapeutic areas, with emerging use in biopharmaceutical development and vaccine production in evidence. Although this technology has great potential, significant challenges remain, particularly around the storage, transfer and analysis of the substantial data sets generated.


Subject(s)
Biopharmaceutics/methods , Drug Discovery/methods , High-Throughput Screening Assays/methods , Pharmacogenetics/methods , Sequence Analysis, DNA/methods , Animals , Humans , Polymorphism, Genetic , Precision Medicine/methods , Sequence Analysis, RNA/methods , Software
4.
Metab Eng ; 10(5): 227-33, 2008 Sep.
Article in English | MEDLINE | ID: mdl-18611443

ABSTRACT

Using flux variability analysis of a genome scale metabolic network of Streptomyces coelicolor, a series of reactions were identified, from disparate pathways that could be combined into an actinorhodin-generating mini-network. Candidate process feed nutrients that might be expected to influence this network were used in process simulations and in silico predictions compared to experimental findings. Ranking potential process feeds by flux balance analysis optimisation, using either growth or antibiotic production as objective function, did not correlate with experimental actinorhodin yields in fed processes. However, the effect of the feeds on glucose assimilation rate (using glucose uptake as objective function) ranked them in the same order as in vivo antibiotic production efficiency, consistent with results of a robustness analysis of the effect of glucose assimilation on actinorhodin production.


Subject(s)
Anti-Bacterial Agents/biosynthesis , Energy Metabolism/physiology , Genome, Bacterial/physiology , Glucose/metabolism , Streptomyces coelicolor/metabolism , Anthraquinones/metabolism , Streptomyces coelicolor/genetics
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