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1.
PLoS Pathog ; 18(10): e1010887, 2022 10.
Article in English | MEDLINE | ID: mdl-36223427

ABSTRACT

Plasmodium parasites are reliant on the Apicomplexan AP2 (ApiAP2) transcription factor family to regulate gene expression programs. AP2 DNA binding domains have no homologs in the human or mosquito host genomes, making them potential antimalarial drug targets. Using an in-silico screen to dock thousands of small molecules into the crystal structure of the AP2-EXP (Pf3D7_1466400) AP2 domain (PDB:3IGM), we identified putative AP2-EXP interacting compounds. Four compounds were found to block DNA binding by AP2-EXP and at least one additional ApiAP2 protein. Our top ApiAP2 competitor compound perturbs the transcriptome of P. falciparum trophozoites and results in a decrease in abundance of log2 fold change > 2 for 50% (46/93) of AP2-EXP target genes. Additionally, two ApiAP2 competitor compounds have multi-stage anti-Plasmodium activity against blood and mosquito stage parasites. In summary, we describe a novel set of antimalarial compounds that interact with AP2 DNA binding domains. These compounds may be used for future chemical genetic interrogation of ApiAP2 proteins or serve as starting points for a new class of antimalarial therapeutics.


Subject(s)
Antimalarials , DNA-Binding Proteins , Plasmodium , Humans , Antimalarials/pharmacology , Antimalarials/metabolism , DNA/metabolism , Plasmodium/drug effects , Plasmodium/genetics , Protozoan Proteins/metabolism , DNA-Binding Proteins/metabolism
2.
ACS Omega ; 3(2): 2261-2272, 2018 Feb 28.
Article in English | MEDLINE | ID: mdl-30023828

ABSTRACT

Lipoxygenases are a family of cytosolic, peripheral membrane enzymes, which catalyze the hydroperoxidation of polyunsaturated fatty acids and are implicated in the pathogenesis of major human diseases. Over the years, a substantial number of scientific reports have introduced inhibitors active against one or another subtype of the enzyme, but the selectivity issue has proved to be a major challenge for drug design. In the present work, we assembled a dataset of 317 structurally diverse molecules hitherto reported as active against 15S-LOX1, 12S-LOX1, and 15S-LOX2 and identified, using supervised machine learning, a set of structural descriptors responsible for the binding selectivity toward the enzyme 15S-LOX1. We subsequently incorporated these descriptors in the training of QSAR models for LOX1 activity and selectivity. The best performing classifiers are two stacked models that include an ensemble of support vector machine, random forest, and k-nearest neighbor algorithms. These models not only can predict LOX1 activity/inactivity but also can discriminate with high accuracy between molecules that exhibit selective activity toward either one of the isozymes 15S-LOX1 and 12S-LOX1.

4.
Sci Rep ; 7: 46226, 2017 04 07.
Article in English | MEDLINE | ID: mdl-28387314

ABSTRACT

With an aging patient population and increasing complexity in patient disease trajectories, physicians are often met with complex patient histories from which clinical decisions must be made. Due to the increasing rate of adverse events and hospitals facing financial penalties for readmission, there has never been a greater need to enforce evidence-led medical decision-making using available health care data. In the present work, we studied a cohort of 7,741 patients, of whom 4,080 were diagnosed with cancer, surgically treated at a University Hospital in the years 2004-2012. We have developed a methodology that allows disease trajectories of the cancer patients to be estimated from free text in electronic health records (EHRs). By using these disease trajectories, we predict 80% of patient events ahead in time. By control of confounders from 8326 quantified events, we identified 557 events that constitute high subsequent risks (risk > 20%), including six events for cancer and seven events for metastasis. We believe that the presented methodology and findings could be used to improve clinical decision support and personalize trajectories, thereby decreasing adverse events and optimizing cancer treatment.


Subject(s)
Electronic Health Records , Neoplasms/epidemiology , Confounding Factors, Epidemiologic , Decision Support Systems, Clinical , Disease Progression , Health Status , Humans , Morbidity , Neoplasms/diagnosis , Norway
5.
PLoS One ; 12(2): e0162642, 2017.
Article in English | MEDLINE | ID: mdl-28245241

ABSTRACT

Peroxisome proliferator-activated receptor γ (PPARγ) is a well-known target for thiazolidinedione antidiabetic drugs. In this paper, we present the synthesis and biological evaluation of a series of dihydropyrano[2,3-c]pyrazole derivatives as a novel family of PPARγ partial agonists. Two analogues were found to display high affinity for PPARγ with potencies in the micro molar range. Both of these hits were selective against PPARγ, since no activity was measured when tested against PPARα, PPARδ and RXRα. In addition, a novel modelling approach based on multiple individual flexible alignments was developed for the identification of ligand binding interactions in PPARγ. In combination with cell-based transactivation experiments, the flexible alignment model provides an excellent analytical tool to evaluate and visualize the effect of ligand chemical structure with respect to receptor binding mode and biological activity.


Subject(s)
PPAR gamma/agonists , PPAR gamma/metabolism , Pyrans/chemical synthesis , Pyrans/pharmacology , Pyrazoles/chemical synthesis , Pyrazoles/pharmacology , Animals , Binding Sites , Binding, Competitive , Cell Line, Tumor , Drug Design , Humans , Inhibitory Concentration 50 , Ligands , Mice , Protein Binding , Protein Conformation , Thermodynamics , Transcription Factors/metabolism
6.
J Mol Graph Model ; 63: 99-109, 2016 Jan.
Article in English | MEDLINE | ID: mdl-26722761

ABSTRACT

Lipoxygenases (LOXs) are nonheme, iron-containing dioxygenases that catalyze the dioxygenation of polyunsaturated fatty acids and are widely distributed among plant and animal species. Human LOXs, now identified as key enzymes in the pathogenesis of major disorders, have increasingly drawn the attention as targets and great effort has been made for the discovery and design of suitable inhibitors, to which end both pharmacological and computational methods have been employed. In the present work, using pharmacophore modeling and docking, we attempt to elucidate the inhibition of LOX1 with a new inhibitor, albidoside, an iridoid glucoside isolated from plants of the Scutellaria genus. Through a pharmacophore approach, complementarities between the ligand and the binding site are explored and a plausible mode of binding with the protein is suggested for albidoside.


Subject(s)
Glycine max/chemistry , Iridoids/chemistry , Lipoxygenase Inhibitors/chemistry , Lipoxygenase/chemistry , Plant Proteins/antagonists & inhibitors , Small Molecule Libraries/chemistry , Binding Sites , Catalytic Domain , Hydrophobic and Hydrophilic Interactions , Kinetics , Ligands , Molecular Docking Simulation , Molecular Dynamics Simulation , Plant Proteins/chemistry , Protein Binding , Protein Structure, Secondary , Glycine max/enzymology , Static Electricity , Structure-Activity Relationship , Thermodynamics
7.
Prog Lipid Res ; 61: 149-62, 2016 Jan.
Article in English | MEDLINE | ID: mdl-26703188

ABSTRACT

The nuclear receptor peroxisome proliferator-activated receptor γ (PPARγ) is the key decisive factor controlling the development of adipocytes. Ligand-mediated activation of PPARγ occurs early during adipogenesis and is thought to prime adipose conversion. Although several fatty acids and their derivatives are known to bind to and activate PPARγ, the identity of the ligand(s) responsible for initiating adipocyte differentiation is still a matter of debate. Here we review recent data on pathways involved in ligand production as well as possible endogenous, adipogenic PPARγ agonists.


Subject(s)
Adipogenesis , PPAR gamma/physiology , Adipocytes/physiology , Animals , Fatty Acids/metabolism , Humans , Lipid Metabolism , Oxidation-Reduction , Prostaglandins
8.
PLoS Comput Biol ; 11(2): e1004048, 2015 Feb.
Article in English | MEDLINE | ID: mdl-25668218

ABSTRACT

Recent research has demonstrated that consumption of food -especially fruits and vegetables- can alter the effects of drugs by interfering either with their pharmacokinetic or pharmacodynamic processes. Despite the recognition of such drug-food associations as an important element for successful therapeutic interventions, a systematic approach for identifying, predicting and preventing potential interactions between food and marketed or novel drugs is not yet available. The overall objective of this work was to sketch a comprehensive picture of the interference of ∼ 4,000 dietary components present in ∼1800 plant-based foods with the pharmacokinetics and pharmacodynamics processes of medicine, with the purpose of elucidating the molecular mechanisms involved. By employing a systems chemical biology approach that integrates data from the scientific literature and online databases, we gained a global view of the associations between diet and dietary molecules with drug targets, metabolic enzymes, drug transporters and carriers currently deposited in DrugBank. Moreover, we identified disease areas and drug targets that are most prone to the negative effects of drug-food interactions, showcasing a platform for making recommendations in relation to foods that should be avoided under certain medications. Lastly, by investigating the correlation of gene expression signatures of foods and drugs we were able to generate a completely novel drug-diet interactome map.


Subject(s)
Computational Biology/methods , Food-Drug Interactions , Models, Molecular , Phytochemicals , Animals , Databases, Factual , Diet , Disease , Gene Expression Profiling , Humans , Mice
9.
Nucleic Acids Res ; 43(Database issue): D940-5, 2015 Jan.
Article in English | MEDLINE | ID: mdl-25106869

ABSTRACT

There is rising evidence of an inverse association between chronic diseases and diets characterized by rich fruit and vegetable consumption. Dietary components may act directly or indirectly on the human genome and modulate multiple processes involved in disease risk and disease progression. However, there is currently no exhaustive resource on the health benefits associated to specific dietary interventions, or a resource covering the broad molecular content of food. Here we present the first release of NutriChem, available at http://cbs.dtu.dk/services/NutriChem-1.0, a database generated by text mining of 21 million MEDLINE abstracts for information that links plant-based foods with their small molecule components and human disease phenotypes. NutriChem contains text-mined data for 18478 pairs of 1772 plant-based foods and 7898 phytochemicals, and 6242 pairs of 1066 plant-based foods and 751 diseases. In addition, it includes predicted associations for 548 phytochemicals and 252 diseases. To the best of our knowledge this database is the only resource linking the chemical space of plant-based foods with human disease phenotypes and provides a foundation for understanding mechanistically the consequences of eating behaviors on health.


Subject(s)
Databases, Factual , Diet , Plants, Edible , Disease , Humans , Internet , Phenotype , Phytochemicals , Preventive Medicine
10.
BMC Genomics ; 15: 380, 2014 May 17.
Article in English | MEDLINE | ID: mdl-24886433

ABSTRACT

BACKGROUND: Epidemiological studies in the recent years have investigated the relationship between dietary habits and disease risk demonstrating that diet has a direct effect on public health. Especially plant-based diets -fruits, vegetables and herbs- are known as a source of molecules with pharmacological properties for treatment of several malignancies. Unquestionably, for developing specific intervention strategies to reduce cancer risk there is a need for a more extensive and holistic examination of the dietary components for exploring the mechanisms of action and understanding the nutrient-nutrient interactions. Here, we used colon cancer as a proof-of-concept for understanding key regulatory sites of diet on the disease pathway. RESULTS: We started from a unique vantage point by having a database of 158 plants positively associated to colon cancer reduction and their molecular composition (~3,500 unique compounds). We generated a comprehensive picture of the interaction profile of these edible and non-edible plants with a predefined candidate colon cancer target space consisting of ~1,900 proteins. This knowledge allowed us to study systematically the key components in colon cancer that are targeted synergistically by phytochemicals and identify statistically significant and highly correlated protein networks that could be perturbed by dietary habits. CONCLUSION: We propose here a framework for interrogating the critical targets in colon cancer processes and identifying plant-based dietary interventions as important modifiers using a systems chemical biology approach. Our methodology for better delineating prevention of colon cancer by nutritional interventions relies heavily on the availability of information about the small molecule constituents of our diet and it can be expanded to any other disease class that previous evidence has linked to lifestyle.


Subject(s)
Colonic Neoplasms/prevention & control , Diet , Colonic Neoplasms/metabolism , Humans , Phytochemicals/administration & dosage
11.
PLoS Comput Biol ; 10(1): e1003432, 2014 Jan.
Article in English | MEDLINE | ID: mdl-24453957

ABSTRACT

Awareness that disease susceptibility is not only dependent on genetic make up, but can be affected by lifestyle decisions, has brought more attention to the role of diet. However, food is often treated as a black box, or the focus is limited to few, well-studied compounds, such as polyphenols, lipids and nutrients. In this work, we applied text mining and Naïve Bayes classification to assemble the knowledge space of food-phytochemical and food-disease associations, where we distinguish between disease prevention/amelioration and disease progression. We subsequently searched for frequently occurring phytochemical-disease pairs and we identified 20,654 phytochemicals from 16,102 plants associated to 1,592 human disease phenotypes. We selected colon cancer as a case study and analyzed our results in three directions; i) one stop legacy knowledge-shop for the effect of food on disease, ii) discovery of novel bioactive compounds with drug-like properties, and iii) discovery of novel health benefits from foods. This works represents a systematized approach to the association of food with health effect, and provides the phytochemical layer of information for nutritional systems biology research.


Subject(s)
Data Mining/methods , Disease Susceptibility , Medical Informatics/methods , Algorithms , Bayes Theorem , Colonic Neoplasms/therapy , Disease Progression , Food , Humans , Life Style , Lipids/chemistry , Nutritional Sciences , Phenotype , Phytochemicals/therapeutic use , Plants/chemistry , Software , Systems Biology
12.
Brief Bioinform ; 15(6): 942-52, 2014 Nov.
Article in English | MEDLINE | ID: mdl-23908249

ABSTRACT

As both the amount of generated biological data and the processing compute power increase, computational experimentation is no longer the exclusivity of bioinformaticians, but it is moving across all biomedical domains. For bioinformatics to realize its translational potential, domain experts need access to user-friendly solutions to navigate, integrate and extract information out of biological databases, as well as to combine tools and data resources in bioinformatics workflows. In this review, we present services that assist biomedical scientists in incorporating bioinformatics tools into their research. We review recent applications of Cytoscape, BioGPS and DAVID for data visualization, integration and functional enrichment. Moreover, we illustrate the use of Taverna, Kepler, GenePattern, and Galaxy as open-access workbenches for bioinformatics workflows. Finally, we mention services that facilitate the integration of biomedical ontologies and bioinformatics tools in computational workflows.


Subject(s)
Computational Biology/methods , Biological Ontologies , Computational Biology/trends , Data Interpretation, Statistical , Database Management Systems , Female , High-Throughput Nucleotide Sequencing/statistics & numerical data , Humans , Male , Software , Translational Research, Biomedical
13.
J Chem Inf Model ; 53(4): 923-37, 2013 Apr 22.
Article in English | MEDLINE | ID: mdl-23432662

ABSTRACT

Full agonists to the peroxisome proliferator-activated receptor (PPAR)γ, such as Rosiglitazone, have been associated with a series of undesired side effects, such as weight gain, fluid retention, cardiac hypertrophy, and hepatotoxicity. Nevertheless, PPARγ is involved in the expression of genes that control glucose and lipid metabolism and is an important target for drugs against type 2 diabetes, dyslipidemia, atherosclerosis, and cardiovascular disease. In an effort to identify novel PPARγ ligands with an improved pharmacological profile, emphasis has shifted to selective ligands with partial agonist binding properties. Toward this end we applied an integrated in silico/in vitro workflow, based on pharmacophore- and structure-based virtual screening of the ZINC library, coupled with competitive binding and transactivation assays, and adipocyte differentiation and gene expression studies. Hit compound 9 was identified as the most potent ligand (IC50 = 0.3 µM) and a relatively poor inducer of adipocyte differentiation. The binding mode of compound 9 was confirmed by molecular dynamics simulation, and the calculated free energy of binding was -8.4 kcal/mol. A novel functional group, the carbonitrile group, was identified to be a key substituent in the ligand-protein interactions. Further studies on the transcriptional regulation properties of compound 9 revealed a gene regulatory profile that was to a large extent unique, however functionally closer to that of a partial agonist.


Subject(s)
Adipocytes/drug effects , Drug Discovery , Hypoglycemic Agents/chemistry , Molecular Docking Simulation , PPAR gamma/agonists , Small Molecule Libraries/chemistry , 3T3-L1 Cells , Adipocytes/metabolism , Animals , Binding Sites , Binding, Competitive , Cell Differentiation/drug effects , Gene Expression Regulation/drug effects , Humans , Hypoglycemic Agents/pharmacology , Kinetics , Ligands , Mice , Molecular Dynamics Simulation , PPAR gamma/chemistry , PPAR gamma/genetics , Protein Binding , Rosiglitazone , Small Molecule Libraries/pharmacology , Structure-Activity Relationship , Thermodynamics , Thiazolidinediones/chemistry , Thiazolidinediones/pharmacology
14.
Nucleic Acids Res ; 41(Database issue): D464-9, 2013 Jan.
Article in English | MEDLINE | ID: mdl-23185041

ABSTRACT

ChemProt-2.0 (http://www.cbs.dtu.dk/services/ChemProt-2.0) is a public available compilation of multiple chemical-protein annotation resources integrated with diseases and clinical outcomes information. The database has been updated to >1.15 million compounds with 5.32 millions bioactivity measurements for 15 290 proteins. Each protein is linked to quality-scored human protein-protein interactions data based on more than half a million interactions, for studying diseases and biological outcomes (diseases, pathways and GO terms) through protein complexes. In ChemProt-2.0, therapeutic effects as well as adverse drug reactions have been integrated allowing for suggesting proteins associated to clinical outcomes. New chemical structure fingerprints were computed based on the similarity ensemble approach. Protein sequence similarity search was also integrated to evaluate the promiscuity of proteins, which can help in the prediction of off-target effects. Finally, the database was integrated into a visual interface that enables navigation of the pharmacological space for small molecules. Filtering options were included in order to facilitate and to guide dynamic search of specific queries.


Subject(s)
Databases, Chemical , Disease , Pharmaceutical Preparations/chemistry , Proteins/drug effects , Computer Graphics , Drug Therapy , Drug-Related Side Effects and Adverse Reactions , Humans , Internet , Protein Interaction Mapping , Proteins/chemistry , Sequence Analysis, Protein , User-Computer Interface
15.
ISME J ; 7(4): 730-42, 2013 Apr.
Article in English | MEDLINE | ID: mdl-23178670

ABSTRACT

The bacteria that colonize the gastrointestinal tracts of mammals represent a highly selected microbiome that has a profound influence on human physiology by shaping the host's metabolic and immune system activity. Despite the recent advances on the biological principles that underlie microbial symbiosis in the gut of mammals, mechanistic understanding of the contributions of the gut microbiome and how variations in the metabotypes are linked to the host health are obscure. Here, we mapped the entire metabolic potential of the gut microbiome based solely on metagenomics sequencing data derived from fecal samples of 124 Europeans (healthy, obese and with inflammatory bowel disease). Interestingly, three distinct clusters of individuals with high, medium and low metabolic potential were observed. By illustrating these results in the context of bacterial population, we concluded that the abundance of the Prevotella genera is a key factor indicating a low metabolic potential. These metagenome-based metabolic signatures were used to study the interaction networks between bacteria-specific metabolites and human proteins. We found that thirty-three such metabolites interact with disease-relevant protein complexes several of which are highly expressed in cells and tissues involved in the signaling and shaping of the adaptive immune system and associated with squamous cell carcinoma and bladder cancer. From this set of metabolites, eighteen are present in DrugBank providing evidence that we carry a natural pharmacy in our guts. Furthermore, we established connections between the systemic effects of non-antibiotic drugs and the gut microbiome of relevance to drug side effects and health-care solutions.


Subject(s)
Bacteria/classification , Gastrointestinal Tract/microbiology , Inflammatory Bowel Diseases/microbiology , Metabolome , Metagenome , Obesity/microbiology , Bacteria/genetics , Bacteria/isolation & purification , Bacteria/metabolism , Feces/microbiology , Gastrointestinal Tract/metabolism , Humans , Metagenomics , Pharmaceutical Preparations/metabolism , Symbiosis
16.
Mol Biosyst ; 8(6): 1678-85, 2012 Jun.
Article in English | MEDLINE | ID: mdl-22446744

ABSTRACT

The parasite Plasmodium falciparum is the main agent responsible for malaria. In this study, we exploited a recently published chemical library from GlaxoSmithKline (GSK) that had previously been confirmed to inhibit parasite growth of the wild type (3D7) and the multi-drug resistance (D2d) strains, in order to uncover the weak links in the proteome of the parasite. We predicted 293 proteins of P. falciparum, including the six out of the seven verified targets for P. falciparum malaria treatment, as targets of 4645 GSK active compounds. Furthermore, we prioritized druggable targets, based on a number of factors, such as essentiality for growth, lack of homology with human proteins, and availability of experimental data on ligand activity with a non-human homologue of a parasite protein. We have additionally prioritized predicted ligands based on their polypharmacology profile, with focus on validated essential proteins and the effect of their perturbations on the metabolic network of P. falciparum, as well as indication of drug resistance emergence. Finally, we predict potential off-target effects on the human host with associations to cancer, neurological and dermatological disorders, based on integration of available chemical-protein and protein-protein interaction data. Our work suggests that a large number of the P. falciparum proteome is potentially druggable and could therefore serve as novel drug targets in the fight against malaria. At the same time, prioritized compounds from the GSK library could serve as lead compounds to medicinal chemists for further optimization.


Subject(s)
Antimalarials/chemistry , Drug Discovery/methods , Genome, Protozoan , Genomics/methods , Plasmodium falciparum/genetics , Antimalarials/pharmacology , Chromosome Mapping , Cluster Analysis , Plasmodium falciparum/drug effects , Small Molecule Libraries/chemistry , Small Molecule Libraries/pharmacology
17.
Genet Epidemiol ; 35(5): 318-32, 2011 Jul.
Article in English | MEDLINE | ID: mdl-21484861

ABSTRACT

Meta-analyses of large-scale association studies typically proceed solely within one data type and do not exploit the potential complementarities in other sources of molecular evidence. Here, we present an approach to combine heterogeneous data from genome-wide association (GWA) studies, protein-protein interaction screens, disease similarity, linkage studies, and gene expression experiments into a multi-layered evidence network which is used to prioritize the entire protein-coding part of the genome identifying a shortlist of candidate genes. We report specifically results on bipolar disorder, a genetically complex disease where GWA studies have only been moderately successful. We validate one such candidate experimentally, YWHAH, by genotyping five variations in 640 patients and 1,377 controls. We found a significant allelic association for the rs1049583 polymorphism in YWHAH (adjusted P = 5.6e-3) with an odds ratio of 1.28 [1.12-1.48], which replicates a previous case-control study. In addition, we demonstrate our approach's general applicability by use of type 2 diabetes data sets. The method presented augments moderately powered GWA data, and represents a validated, flexible, and publicly available framework for identifying risk genes in highly polygenic diseases. The method is made available as a web service at www.cbs.dtu.dk/services/metaranker.


Subject(s)
Genome-Wide Association Study/statistics & numerical data , Bipolar Disorder/genetics , Data Interpretation, Statistical , Databases, Genetic , Diabetes Mellitus, Type 2/genetics , Genetic Association Studies , Humans , Models, Genetic , Models, Statistical , Polymorphism, Single Nucleotide , Protein Interaction Mapping/statistics & numerical data
18.
Biotechnol Adv ; 29(1): 94-110, 2011.
Article in English | MEDLINE | ID: mdl-20851174

ABSTRACT

One of the most intriguing groups of enzymes, the feruloyl esterases (FAEs), is ubiquitous in both simple and complex organisms. FAEs have gained importance in biofuel, medicine and food industries due to their capability of acting on a large range of substrates for cleaving ester bonds and synthesizing high-added value molecules through esterification and transesterification reactions. During the past two decades extensive studies have been carried out on the production and partial characterization of FAEs from fungi, while much less is known about FAEs of bacterial or plant origin. Initial classification studies on FAEs were restricted on sequence similarity and substrate specificity on just four model substrates and considered only a handful of FAEs belonging to the fungal kingdom. This study centers on the descriptor-based classification and structural analysis of experimentally verified and putative FAEs; nevertheless, the framework presented here is applicable to every poorly characterized enzyme family. 365 FAE-related sequences of fungal, bacterial and plantae origin were collected and they were clustered using Self Organizing Maps followed by k-means clustering into distinct groups based on amino acid composition and physico-chemical composition descriptors derived from the respective amino acid sequence. A Support Vector Machine model was subsequently constructed for the classification of new FAEs into the pre-assigned clusters. The model successfully recognized 98.2% of the training sequences and all the sequences of the blind test. The underlying functionality of the 12 proposed FAE families was validated against a combination of prediction tools and published experimental data. Another important aspect of the present work involves the development of pharmacophore models for the new FAE families, for which sufficient information on known substrates existed. Knowing the pharmacophoric features of a small molecule that are essential for binding to the members of a certain family opens a window of opportunities for tailored applications of FAEs.


Subject(s)
Carboxylic Ester Hydrolases/chemistry , Carboxylic Ester Hydrolases/classification , Computational Biology/methods , Drug Design , Models, Molecular , Algorithms , Amino Acid Sequence , Carboxylic Ester Hydrolases/genetics , Molecular Sequence Data , Phylogeny , Substrate Specificity
19.
Nucleic Acids Res ; 39(Database issue): D367-72, 2011 Jan.
Article in English | MEDLINE | ID: mdl-20935044

ABSTRACT

Systems pharmacology is an emergent area that studies drug action across multiple scales of complexity, from molecular and cellular to tissue and organism levels. There is a critical need to develop network-based approaches to integrate the growing body of chemical biology knowledge with network biology. Here, we report ChemProt, a disease chemical biology database, which is based on a compilation of multiple chemical-protein annotation resources, as well as disease-associated protein-protein interactions (PPIs). We assembled more than 700,000 unique chemicals with biological annotation for 30,578 proteins. We gathered over 2-million chemical-protein interactions, which were integrated in a quality scored human PPI network of 428,429 interactions. The PPI network layer allows for studying disease and tissue specificity through each protein complex. ChemProt can assist in the in silico evaluation of environmental chemicals, natural products and approved drugs, as well as the selection of new compounds based on their activity profile against most known biological targets, including those related to adverse drug events. Results from the disease chemical biology database associate citalopram, an antidepressant, with osteogenesis imperfect and leukemia and bisphenol A, an endocrine disruptor, with certain types of cancer, respectively. The server can be accessed at http://www.cbs.dtu.dk/services/ChemProt/.


Subject(s)
Databases, Factual , Drug Discovery , Pharmaceutical Preparations/chemistry , Proteins/drug effects , Disease/genetics , Genes , Humans , Protein Interaction Mapping , Proteins/chemistry , Proteins/metabolism
20.
Article in English | MEDLINE | ID: mdl-20936122

ABSTRACT

Metabolomics is a rapidly evolving discipline that involves the systematic study of endogenous small molecules that characterize the metabolic pathways of biological systems. The study of metabolism at a global level has the potential to contribute significantly to biomedical research, clinical medical practice, as well as drug discovery. In this paper, we present the most up-to-date metabolite and metabolic pathway resources, and we summarize the statistical, and machine-learning tools used for the analysis of data from clinical metabolomics. Through specific applications on cancer, diabetes, neurological and other diseases, we demonstrate how these tools can facilitate diagnosis and identification of potential biomarkers for use within disease diagnosis. Additionally, we discuss the increasing importance of the integration of metabolomics data in drug discovery. On a case-study based on the Human Metabolome Database (HMDB) and the Chinese Natural Product Database (CNPD), we demonstrate the close relatedness of the two data sets of compounds, and we further illustrate how structural similarity with human metabolites could assist in the design of novel pharmaceuticals and the elucidation of the molecular mechanisms of medicinal plants.


Subject(s)
Drug Discovery , Metabolomics , Biomarkers/metabolism , Databases, Factual , Humans
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