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Data integration in systems biology: characterization of biological phenomena from structural and functional information

Grant number: 10/52138-8
Support type:Regular Research Grants
Duration: April 01, 2011 - September 30, 2013
Field of knowledge:Physical Sciences and Mathematics - Computer Science
Cooperation agreement: Microsoft Research
Principal Investigator:Ronaldo Fumio Hashimoto
Grantee:Ronaldo Fumio Hashimoto
Home Institution: Instituto de Matemática e Estatística (IME). Universidade de São Paulo (USP). São Paulo , SP, Brazil

Abstract

One of the most challenging research problem of System Biology nowadays is the inference (or reverseengineering) of gene regulatory networks (GRNs) from expression profiles. This research issue became important after the development of high-throughput technologies for extraction of gene expressions, such as DNA microarrays [74] or SAGE [84], and more recently RNA-Seq [86]. This problem regards on discover regulatory relationships between biological molecules in order to recover a complex network of interrelationships, which can reveal/describe not only diverse biological functions but also the dynamics of molecular activities. It is very important to understand how many biological processes happen and in most cases, how to prevent it from happening (diseases). In the context of expression profiles, a big challenge that researchers need to face is the large number of variables or genes (thousands) for just a few experiments available (dozens). In order to infer relationships among those variables, it is needed a great effort in developing novel computational and statistical techniques that are able to alleviate the intrinsic error estimation committed in the presence of small number of samples with huge dimensionalities. In general, it is not possible to recover the GRNs very accurately. The main reasons for this are thee lack information about the biological organism, the high complexity of the networks and the intrinsic noise of the expression measurements. Thus, infer, analyse and compare the interrelationship between genes with precision, generating Gene Regulatory Networks (GRNs), is an open research problem. (AU)

Scientific publications
(References retrieved automatically from Web of Science and SciELO through information on FAPESP grants and their corresponding numbers as mentioned in the publications by the authors)
SIMOES, SERGIO N.; MARTINS, JR., DAVID C.; PEREIRA, CARLOS A. B.; HASHIMOTO, RONALDO F.; BRENTANI, HELENA. NERI: network-medicine based integrative approach for disease gene prioritization by relative importance. BMC Bioinformatics, v. 16, n. 19 DEC 16 2015. Web of Science Citations: 6.
SWARNKAR, TRIPTI; SIMOES, SERGIO NERY; ANURA, ANJI; BRENTANI, HELENA; CHATTERJEE, JYOTIRMOY; HASHIMOTO, RONALDO FUMIO; MARTINS, DAVID CORREA; MITRA, PABITRA. Identifying dense subgraphs in protein-protein interaction network for gene selection from microarray data. NETWORK MODELING AND ANALYSIS IN HEALTH INFORMATICS AND BIOINFORMATICS, v. 4, n. 1 DEC 2015. Web of Science Citations: 1.
LOPES, FABRICIO M.; RAY, SHUBHRA SANKAR; HASHIMOTO, RONALDO F.; CESAR, JR., ROBERTO M. Entropic Biological Score: a cell cycle investigation for GRNs inference. Gene, v. 541, n. 2, p. 129-137, MAY 15 2014. Web of Science Citations: 14.

Please report errors in scientific publications list by writing to: cdi@fapesp.br.