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Dive into the research topics where Pavel S. Demenkov is active.

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Featured researches published by Pavel S. Demenkov.


BMC Systems Biology | 2015

ANDSystem: an Associative Network Discovery System for automated literature mining in the field of biology

Vladimir A. Ivanisenko; Olga V. Saik; Nikita V. Ivanisenko; Evgeny S. Tiys; Timofey V. Ivanisenko; Pavel S. Demenkov; N. A. Kolchanov

BackgroundSufficient knowledge of molecular and genetic interactions, which comprise the entire basis of the functioning of living systems, is one of the necessary requirements for successfully answering almost any research question in the field of biology and medicine. To date, more than 24 million scientific papers can be found in PubMed, with many of them containing descriptions of a wide range of biological processes. The analysis of such tremendous amounts of data requires the use of automated text-mining approaches. Although a handful of tools have recently been developed to meet this need, none of them provide error-free extraction of highly detailed information.ResultsThe ANDSystem package was developed for the reconstruction and analysis of molecular genetic networks based on an automated text-mining technique. It provides a detailed description of the various types of interactions between genes, proteins, microRNAs, metabolites, cellular components, pathways and diseases, taking into account the specificity of cell lines and organisms. Although the accuracy of ANDSystem is comparable to other well known text-mining tools, such as Pathway Studio and STRING, it outperforms them in having the ability to identify an increased number of interaction types.ConclusionThe use of ANDSystem, in combination with Pathway Studio and STRING, can improve the quality of the automated reconstruction of molecular and genetic networks. ANDSystem should provide a useful tool for researchers working in a number of different fields, including biology, biotechnology, pharmacology and medicine.


Journal of Integrative Bioinformatics | 2010

Visualization and analysis of a cardio vascular disease- and MUPP1-related biological network combining text mining and data warehouse approaches.

Björn Sommer; Evgeny S. Tiys; Benjamin Kormeier; Klaus Hippe; Sebastian Jan Janowski; Timofey V. Ivanisenko; Anatoly O. Bragin; Patrizio Arrigo; Pavel S. Demenkov; Alexey V. Kochetov; Vladimir A. Ivanisenko; N. A. Kolchanov; Ralf Hofestädt

Detailed investigation of socially important diseases with modern experimental methods has resulted in the generation of large volume of valuable data. However, analysis and interpretation of this data needs application of efficient computational techniques and systems biology approaches. In particular, the techniques allowing the reconstruction of associative networks of various biological objects and events can be useful. In this publication, the combination of different techniques to create such a network associated with an abstract cell environment is discussed in order to gain insights into the functional as well as spatial interrelationships. It is shown that experimentally gained knowledge enriched with data warehouse content and text mining data can be used for the reconstruction and localization of a cardiovascular disease developing network beginning with MUPP1/MPDZ (multi-PDZ domain protein).


Journal of Bioinformatics and Computational Biology | 2013

SUBCELLULAR LOCALIZATION CHARTS: A NEW VISUAL METHODOLOGY FOR THE SEMI-AUTOMATIC LOCALIZATION OF PROTEIN-RELATED DATA SETS

Björn Sommer; Benjamin Kormeier; Pavel S. Demenkov; Patrizio Arrigo; Klaus Hippe; Özgür Ates; Alexey V. Kochetov; Vladimir A. Ivanisenko; N. A. Kolchanov; Ralf Hofestädt

The CELLmicrocosmos PathwayIntegration (CmPI) was developed to support and visualize the subcellular localization prediction of protein-related data such as protein-interaction networks. From the start it was possible to manually analyze the localizations by using an interactive table. It was, however, quite complicated to compare and analyze the different localization results derived from data integration as well as text-mining-based databases. The current software release provides a new interactive visual workflow, the Subcellular Localization Charts. As an application case, a MUPP1-related protein-protein interaction network is localized and semi-automatically analyzed. It will be shown that the workflow was dramatically improved and simplified. In addition, it is now possible to use custom protein-related data by using the SBML format and get a view of predicted protein localizations mapped onto a virtual cell model.


Journal of Biomolecular Structure & Dynamics | 2013

The substitutions G245C and G245D in the Zn(2+)-binding pocket of the p53 protein result in differences of conformational flexibility of the DNA-binding domain.

S.S. Pintus; Nikita V. Ivanisenko; Pavel S. Demenkov; T.V. Ivanisenko; Nickolay A. Kolchanov; Vladimir A. Ivanisenko

Transcription activation of the proapoptotic target genes is a means by which the p53 protein implements its function of tumor suppression. Zn2+ is a known regulator of p53 binding to the target genes. We have previously obtained an evidence that amino acid substitutions in the p53 Zn2+-binding pocket can presumably exert an influence on Zn2+ position in the Zn2+-p53 complex and thereby affect p53 binding to DNA. With these background considerations, our aim was to estimate the effect of the putative changes in the Zn2+ position in its binding pocket due to the G245C and G245D substitutions on the conformation of the p53 DNA-binding motif. Statistical analysis of the molecular dynamics (MD) trajectories of the mutant p53-Zn2+ complexes was used to detect significant deviations in conformation of the mutant p53 forms. MD simulations demonstrated that (1) the two substitutions in the Zn2+-binding pocket caused changes in the conformation of the p53 DNA-binding motif, as compared with the wild-type (WT) p53; (2) binding of Zn2+ to the p53 mutant forms reduced the effect of the substitutions on conformational change; and (3) Zn2+ binding in the normal position compensated the effect of the mutations on the conformation in comparison to the altered Zn2+ position.


BMC Systems Biology | 2015

Molecular association of pathogenetic contributors to pre-eclampsia (pre-eclampsia associome)

Andrey S. Glotov; Evgeny S. Tiys; Elena S Vashukova; Vladimir S. Pakin; Pavel S. Demenkov; Olga V. Saik; Timofey V. Ivanisenko; Olga N Arzhanova; Elena V. Mozgovaya; Marina Sabirovna Zainulina; N. A. Kolchanov; Vladislav S. Baranov; Vladimir A. Ivanisenko

BackgroundPre-eclampsia is the most common complication occurring during pregnancy. In the majority of cases, it is concurrent with other pathologies in a comorbid manner (frequent co-occurrences in patients), such as diabetes mellitus, gestational diabetes and obesity. Providing bronchial asthma, pulmonary tuberculosis, certain neurodegenerative diseases and cancers as examples, we have shown previously that pairs of inversely comorbid pathologies (rare co-occurrences in patients) are more closely related to each other at the molecular genetic level compared with randomly generated pairs of diseases. Data in the literature concerning the causes of pre-eclampsia are abundant. However, the key mechanisms triggering this disease that are initiated by other pathological processes are thus far unknown. The aim of this work was to analyse the characteristic features of genetic networks that describe interactions between comorbid diseases, using pre-eclampsia as a case in point.ResultsThe use of ANDSystem, Pathway Studio and STRING computer tools based on text-mining and database-mining approaches allowed us to reconstruct associative networks, representing molecular genetic interactions between genes, associated concurrently with comorbid disease pairs, including pre-eclampsia, diabetes mellitus, gestational diabetes and obesity. It was found that these associative networks statistically differed in the number of genes and interactions between them from those built for randomly chosen pairs of diseases. The associative network connecting all four diseases was composed of 16 genes (PLAT, ADIPOQ, ADRB3, LEPR, HP, TGFB1, TNFA, INS, CRP, CSRP1, IGFBP1, MBL2, ACE, ESR1, SHBG, ADA). Such an analysis allowed us to reveal differential gene risk factors for these diseases, and to propose certain, most probable, theoretical mechanisms of pre-eclampsia development in pregnant women. The mechanisms may include the following pathways: [TGFB1 or TNFA]-[IL1B]-[pre-eclampsia]; [TNFA or INS]-[NOS3]-[pre-eclampsia]; [INS]-[HSPA4 or CLU]-[pre-eclampsia]; [ACE]-[MTHFR]-[pre-eclampsia].ConclusionsFor pre-eclampsia, diabetes mellitus, gestational diabetes and obesity, we showed that the size and connectivity of the associative molecular genetic networks, which describe interactions between comorbid diseases, statistically exceeded the size and connectivity of those built for randomly chosen pairs of diseases. Recently, we have shown a similar result for inversely comorbid diseases. This suggests that comorbid and inversely comorbid diseases have common features concerning structural organization of associative molecular genetic networks.


Immunogenetics | 2014

Insights into pathophysiology of dystropy through the analysis of gene networks: an example of bronchial asthma and tuberculosis

Elena Yu. Bragina; Evgeny S. Tiys; Maxim B. Freidin; Lada Koneva; Pavel S. Demenkov; Vladimir A. Ivanisenko; N. A. Kolchanov; V. P. Puzyrev

Co-existence of bronchial asthma (BA) and tuberculosis (TB) is extremely uncommon (dystropic). We assume that this is caused by the interplay between genes involved into specific pathophysiological pathways that arrest simultaneous manifestation of BA and TB. Identification of common and specific genes may be important to determine the molecular genetic mechanisms leading to rare co-occurrence of these diseases and may contribute to the identification of susceptibility genes for each of these dystropic diseases. To address the issue, we propose a new methodological strategy that is based on reconstruction of associative networks that represent molecular relationships between proteins/genes associated with BA and TB, thus facilitating a better understanding of the biological context of antagonistic relationships between the diseases. The results of our study revealed a number of proteins/genes important for the development of both BA and TB.


Russian Journal of Genetics: Applied Research | 2014

Program complex SNP-MED for analysis of single-nucleotide polymorphism (SNP) effects on the function of genes associated with socially significant diseases

N. L. Podkolodnyy; D. A. Afonnikov; Yu. Yu. Vaskin; L. O. Bryzgalov; Vladimir A. Ivanisenko; Pavel S. Demenkov; M. P. Ponomarenko; D. A. Rasskazov; K. V. Gunbin; I. V. Protsyuk; I. Yu. Shutov; P. N. Leontyev; M. Yu. Fursov; N. P. Bondar; E. V. Antontseva; T. I. Merkulova; N. A. Kolchanov

We describe development and application of the new SNP-MED modular software system, designed to examine the influence of single-nucleotide polymorphisms (SNPs) on the function of genes associated with the risk of socially significant diseases. The SNP-MED system includes Genomics, Proteomics, and Gene Networks’ software components, and the Information Resource Database.


PLOS ONE | 2014

A New Stochastic Model for Subgenomic Hepatitis C Virus Replication Considers Drug Resistant Mutants

Nikita V. Ivanisenko; Elena L. Mishchenko; Ilya R. Akberdin; Pavel S. Demenkov; Vitaly A. Likhoshvai; Konstantin Kozlov; Dmitry Todorov; Vitaly V. Gursky; Maria Samsonova; Alexander M. Samsonov; Diana Clausznitzer; Lars Kaderali; N. A. Kolchanov; Vladimir A. Ivanisenko

As an RNA virus, hepatitis C virus (HCV) is able to rapidly acquire drug resistance, and for this reason the design of effective anti-HCV drugs is a real challenge. The HCV subgenomic replicon-containing cells are widely used for experimental studies of the HCV genome replication mechanisms, for drug testing in vitro and in studies of HCV drug resistance. The NS3/4A protease is essential for virus replication and, therefore, it is one of the most attractive targets for developing specific antiviral agents against HCV. We have developed a stochastic model of subgenomic HCV replicon replication, in which the emergence and selection of drug resistant mutant viral RNAs in replicon cells is taken into account. Incorporation into the model of key NS3 protease mutations leading to resistance to BILN-2061 (A156T, D168V, R155Q), VX-950 (A156S, A156T, T54A) and SCH 503034 (A156T, A156S, T54A) inhibitors allows us to describe the long term dynamics of the viral RNA suppression for various inhibitor concentrations. We theoretically showed that the observable difference between the viral RNA kinetics for different inhibitor concentrations can be explained by differences in the replication rate and inhibitor sensitivity of the mutant RNAs. The pre-existing mutants of the NS3 protease contribute more significantly to appearance of new resistant mutants during treatment with inhibitors than wild-type replicon. The model can be used to interpret the results of anti-HCV drug testing on replicon systems, as well as to estimate the efficacy of potential drugs and predict optimal schemes of their usage.


Journal of Biomolecular Structure & Dynamics | 2013

Accuracy of protein allergenicity prediction can be improved by taking into account data on allergenic protein discontinuous peptides

Anatoly O. Bragin; Pavel S. Demenkov; Nickolay A. Kolchanov; Vladimir A. Ivanisenko

Allergy poses major health problems in industrialized countries, affecting over 20% of the population. Proteins from transgenic foods, cosmetics, animal hair, and other ubiquitous sources can be allergens. For this reason, development of improved methods for the prediction of potential allergenicity of proteins is timely. The currently available approaches to allergenicity prediction are numerous. Some approaches relied heavily on information on protein three-dimensional (3D) structure for allergenicity prediction. They required knowledge about 3D structure of query protein, thereby considerably restricting analysis to only those proteins whose 3D structure was known. As a consequence, many proteins with unknown structure could be overlooked. We developed a new method for allergenicity prediction, using information on protein 3D structure only for training. Three-dimensional structures of known allergenic proteins were used for representing protein surface as patches designated as discontinuous peptides. Allergenicity was predicted through search of such peptides in query protein sequences. It was demonstrated that the information on the discontinuous peptides made feasible better prediction of allergenic proteins. The allergenicity prediction method is available at http://www-bionet.sscc.ru/psd/cgi-bin/programs/Allergen/allergen.cgi.


BMC Genomics | 2018

FunGeneNet: a web tool to estimate enrichment of functional interactions in experimental gene sets

Evgeny S. Tiys; Timofey V. Ivanisenko; Pavel S. Demenkov; Vladimir A. Ivanisenko

BackgroundEstimation of functional connectivity in gene sets derived from genome-wide or other biological experiments is one of the essential tasks of bioinformatics. A promising approach for solving this problem is to compare gene networks built using experimental gene sets with random networks. One of the resources that make such an analysis possible is CrossTalkZ, which uses the FunCoup database. However, existing methods, including CrossTalkZ, do not take into account individual types of interactions, such as protein/protein interactions, expression regulation, transport regulation, catalytic reactions, etc., but rather work with generalized types characterizing the existence of any connection between network members.ResultsWe developed the online tool FunGeneNet, which utilizes the ANDSystem and STRING to reconstruct gene networks using experimental gene sets and to estimate their difference from random networks. To compare the reconstructed networks with random ones, the node permutation algorithm implemented in CrossTalkZ was taken as a basis. To study the FunGeneNet applicability, the functional connectivity analysis of networks constructed for gene sets involved in the Gene Ontology biological processes was conducted. We showed that the method sensitivity exceeds 0.8 at a specificity of 0.95. We found that the significance level of the difference between gene networks of biological processes and random networks is determined by the type of connections considered between objects. At the same time, the highest reliability is achieved for the generalized form of connections that takes into account all the individual types of connections. By taking examples of the thyroid cancer networks and the apoptosis network, it is demonstrated that key participants in these processes are involved in the interactions of those types by which these networks differ from random ones.ConclusionsFunGeneNet is a web tool aimed at proving the functionality of networks in a wide range of sizes of experimental gene sets, both for different global networks and for different types of interactions. Using examples of thyroid cancer and apoptosis networks, we have shown that the links over-represented in the analyzed network in comparison with the random ones make possible a biological interpretation of the original gene/protein sets. The FunGeneNet web tool for assessment of the functional enrichment of networks is available at http://www-bionet.sscc.ru/fungenenet/.

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N. A. Kolchanov

Russian Academy of Sciences

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Olga V. Saik

Russian Academy of Sciences

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Evgeny S. Tiys

Russian Academy of Sciences

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Irina Medvedeva

Novosibirsk State University

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Inna N. Lavrik

Otto-von-Guericke University Magdeburg

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A. O. Bragin

Russian Academy of Sciences

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