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Dive into the research topics where Francislon S. Oliveira is active.

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Featured researches published by Francislon S. Oliveira.


PLOS Neglected Tropical Diseases | 2016

ZIKV – CDB: A Collaborative Database to Guide Research Linking SncRNAs and ZIKA Virus Disease Symptoms

Victor Satler Pylro; Francislon S. Oliveira; Daniel Kumazawa Morais; Sara Cuadros-Orellana; Fabiano Sviatopolk-Mirsky Pais; Julliane Dutra Medeiros; Juliana Assis Geraldo; Jack A. Gilbert; Angela Cristina Volpini; Gabriel da Rocha Fernandes

Background In early 2015, a ZIKA Virus (ZIKV) infection outbreak was recognized in northeast Brazil, where concerns over its possible links with infant microcephaly have been discussed. Providing a causal link between ZIKV infection and birth defects is still a challenge. MicroRNAs (miRNAs) are small noncoding RNAs (sncRNAs) that regulate post-transcriptional gene expression by translational repression, and play important roles in viral pathogenesis and brain development. The potential for flavivirus-mediated miRNA signalling dysfunction in brain-tissue development provides a compelling hypothesis to test the perceived link between ZIKV and microcephaly. Methodology/Principal Findings Here, we applied in silico analyses to provide novel insights to understand how Congenital ZIKA Syndrome symptoms may be related to an imbalance in miRNAs function. Moreover, following World Health Organization (WHO) recommendations, we have assembled a database to help target investigations of the possible relationship between ZIKV symptoms and miRNA-mediated human gene expression. Conclusions/Significance We have computationally predicted both miRNAs encoded by ZIKV able to target genes in the human genome and cellular (human) miRNAs capable of interacting with ZIKV genomes. Our results represent a step forward in the ZIKV studies, providing new insights to support research in this field and identify potential targets for therapy.


BMC Microbiology | 2017

Effectiveness of ITS and sub-regions as DNA barcode markers for the identification of Basidiomycota (Fungi)

Fernanda Badotti; Francislon S. Oliveira; Cleverson Fernando Garcia; Aline B.M. Vaz; Paula Luize Camargos Fonseca; Laila A. Nahum; Guilherme Oliveira; Aristóteles Góes-Neto

BackgroundFungi are among the most abundant and diverse organisms on Earth. However, a substantial amount of the species diversity, relationships, habitats, and life strategies of these microorganisms remain to be discovered and characterized. One important factor hindering progress is the difficulty in correctly identifying fungi. Morphological and molecular characteristics have been applied in such tasks. Later, DNA barcoding has emerged as a new method for the rapid and reliable identification of species. The nrITS region is considered the universal barcode of Fungi, and the ITS1 and ITS2 sub-regions have been applied as metabarcoding markers. In this study, we performed a large-scale analysis of all the available Basidiomycota sequences from GenBank. We carried out a rigorous trimming of the initial dataset based in methodological principals of DNA Barcoding. Two different approaches (PCI and barcode gap) were used to determine the performance of the complete ITS region and sub-regions.ResultsFor most of the Basidiomycota genera, the three genomic markers performed similarly, i.e., when one was considered a good marker for the identification of a genus, the others were also; the same results were observed when the performance was insufficient. However, based on barcode gap analyses, we identified genomic markers that had a superior identification performance than the others and genomic markers that were not indicated for the identification of some genera. Notably, neither the complete ITS nor the sub-regions were useful in identifying 11 of the 113 Basidiomycota genera. The complex phylogenetic relationships and the presence of cryptic species in some genera are possible explanations of this limitation and are discussed.ConclusionsKnowledge regarding the efficiency and limitations of the barcode markers that are currently used for the identification of organisms is crucial because it benefits research in many areas. Our study provides information that may guide researchers in choosing the most suitable genomic markers for identifying Basidiomycota species.


PLOS ONE | 2012

Automatic assignment of prokaryotic genes to functional categories using literature profiling.

Raul Torrieri; Francislon S. Oliveira; Guilherme Oliveira; Roney Santos Coimbra

In the last years, there was an exponential increase in the number of publicly available genomes. Once finished, most genome projects lack financial support to review annotations. A few of these gene annotations are based on a combination of bioinformatics evidence, however, in most cases, annotations are based solely on sequence similarity to a previously known gene, which was most probably annotated in the same way. As a result, a large number of predicted genes remain unassigned to any functional category despite the fact that there is enough evidence in the literature to predict their function. We developed a classifier trained with term-frequency vectors automatically disclosed from text corpora of an ensemble of genes representative of each functional category of the J. Craig Venter Institute Comprehensive Microbial Resource (JCVI-CMR) ontology. The classifier achieved up to 84% precision with 68% recall (for confidence≥0.4), F-measure 0.76 (recall and precision equally weighted) in an independent set of 2,220 genes, from 13 bacterial species, previously classified by JCVI-CMR into unambiguous categories of its ontology. Finally, the classifier assigned (confidence≥0.7) to functional categories a total of 5,235 out of the ∼24 thousand genes previously in categories “Unknown function” or “Unclassified” for which there is literature in MEDLINE. Two biologists reviewed the literature of 100 of these genes, randomly picket, and assigned them to the same functional categories predicted by the automatic classifier. Our results confirmed the hypothesis that it is possible to confidently assign genes of a real world repository to functional categories, based exclusively on the automatic profiling of its associated literature. The LitProf - Gene Classifier web server is accessible at: www.cebio.org/litprofGC.


Nucleic Acids Research | 2018

MicrobiomeDB: a systems biology platform for integrating, mining and analyzing microbiome experiments

Francislon S. Oliveira; John Brestelli; Shon Cade; Jie Zheng; John Iodice; Steve Fischer; Cristina Aurrecoechea; Jessica C. Kissinger; Brian P. Brunk; Christian J. Stoeckert; Gabriel da Rocha Fernandes; David S. Roos; Daniel P. Beiting

Abstract MicrobiomeDB (http://microbiomeDB.org) is a data discovery and analysis platform that empowers researchers to fully leverage experimental variables to interrogate microbiome datasets. MicrobiomeDB was developed in collaboration with the Eukaryotic Pathogens Bioinformatics Resource Center (http://EuPathDB.org) and leverages the infrastructure and user interface of EuPathDB, which allows users to construct in silico experiments using an intuitive graphical ‘strategy’ approach. The current release of the database integrates microbial census data with sample details for nearly 14 000 samples originating from human, animal and environmental sources, including over 9000 samples from healthy human subjects in the Human Microbiome Project (http://portal.ihmpdcc.org/). Query results can be statistically analyzed and graphically visualized via interactive web applications launched directly in the browser, providing insight into microbial community diversity and allowing users to identify taxa associated with any experimental covariate.


Mammalian Genome | 2017

Whole genome sequencing of Guzera´ cattle reveals genetic variants in candidate genes for production, disease resistance, and heat tolerance

Izinara C. Rosse; Juliana G. Assis; Francislon S. Oliveira; Laura Hora Rios Leite; Flávio Marcos Gomes Araújo; Adhemar Zerlotini; Angela Cristina Volpini; Anderson J. Dominitini; Beatriz C. Lopes; Wagner Arbex; Marco Antonio Machado; M. G. C. D. Peixoto; Rui da Silva Verneque; Marta Fonseca Martins; Roney Santos Coimbra; M. V. G. B. Silva; Guilherme Oliveira; Maria Raquel Santos Carvalho

In bovines, artificial selection has produced a large number of breeds which differ in production, environmental adaptation, and health characteristics. To investigate the genetic basis of these phenotypical differences, several bovine breeds have been sequenced. Millions of new SNVs were described at every new breed sequenced, suggesting that every breed should be sequenced. Guzerat or Guzerá is an indicine breed resistant to drought and parasites that has been the base for some important breeds such as Brahman. Here, we describe the sequence of the Guzerá genome and the in silico functional analyses of intragenic breed-specific variations. Mate-paired libraries were generated using the ABI SOLiD system. Sequences were mapped to the Bos taurus reference genome (UMD 3.1) and 87% of the reference genome was covered at a 26X. Among the variants identified, 2,676,067 SNVs and 463,158 INDELs were homozygous, not found in any database searched, and may represent true differences between Guzerá and B. taurus. Functional analyses investigated with the NGS-SNP package focused on 1069 new, non-synonymous SNVs, splice-site variants (including acceptor and donor sites, and the conserved regions at both intron borders, referred to here as splice regions) and coding INDELs (NS/SS/I). These NS/SS/I map to 935 genes belonging to cell communication, environmental adaptation, signal transduction, sensory, and immune systems pathways. These pathways have been involved in phenotypes related to health, adaptation to the environment and behavior, and particularly, disease resistance and heat tolerance. Indeed, 105 of these genes are known QTLs for milk, meat and carcass, production, reproduction, and health traits. Therefore, in addition to describing new genetic variants, our approach provided groundwork for unraveling key candidate genes and mutations.


bioRxiv | 2018

TAG.ME: Taxonomic Assignment of Genetic Markers for Ecology

Douglas E. V. Pires; Francislon S. Oliveira; Felipe B. Correa; Daniel Kumazawa Morais; Gabriel da Rocha Fernandes

Background Sequencing of amplified genetic markers, such as the 16S rRNA gene, have been extensively used to characterize microbial community composition. Recent studies suggested that Amplicon Sequences Variants (ASV) should replace the Operational Taxonomic Units (OTU), given the arbitrary definition of sequence identity thresholds used to define units. Alignment-free methods are an interesting alternative for the taxonomic classification of the ASVs, preventing the introduction of biases from sequence identity thresholds. Results Here we present TAG.ME, a novel alignment-independent and amplicon-specific method for taxonomic assignment based on genetic markers. TAG.ME uses a multilevel supervised learning approach to create predictive models based on user-defined genetic marker genes. The predictive method can assign taxonomy to sequenced amplicons efficiently and effectively. We applied our method to assess gut and soil sample classification, and it outperformed alternative approaches, identifying a substantially larger proportion of species. Benchmark tests performed using the RDP database, and Mock communities reinforced the precise classification into deep taxonomic levels. Conclusion TAG.ME presents a new approach to assign taxonomy to amplicon sequences accurately. Our classification model, trained with amplicon specific sequences, can address resolution issues not solved by other methods and approaches that use the whole 16S rRNA gene sequence. TAG.ME is implemented as an R package and is freely available at http://gabrielrfernandes.github.io/tagme/


Molecular Ecology | 2017

Single‐cell sequencing unveils the lifestyle and CRISPR‐based population history of Hydrotalea sp. in acid mine drainage

J D Medeiros; Laura Hora Rios Leite; Victor Satler Pylro; Francislon S. Oliveira; V M Almeida; Gabriel da Rocha Fernandes; Anna Christina de Matos Salim; Flávio Marcos Gomes Araújo; Angela Cristina Volpini; Guilherme Oliveira; Sara Cuadros-Orellana

Acid mine drainage (AMD) is characterized by an acid and metal‐rich run‐off that originates from mining systems. Despite having been studied for many decades, much remains unknown about the microbial community dynamics in AMD sites, especially during their early development, when the acidity is moderate. Here, we describe draft genome assemblies from single cells retrieved from an early‐stage AMD sample. These cells belong to the genus Hydrotalea and are closely related to Hydrotalea flava. The phylogeny and average nucleotide identity analysis suggest that all single amplified genomes (SAGs) form two clades that may represent different strains. These cells have the genomic potential for denitrification, copper and other metal resistance. Two coexisting CRISPR‐Cas loci were recovered across SAGs, and we observed heterogeneity in the population with regard to the spacer sequences, together with the loss of trailer‐end spacers. Our results suggest that the genomes of Hydrotalea sp. strains studied here are adjusting to a quickly changing selective pressure at the microhabitat scale, and an important form of this selective pressure is infection by foreign DNA.


bioRxiv | 2016

Exploring miRNAs as the key to understand symptoms induced by ZIKA virus infection through a collaborative database.

Victor Satler Pylro; Francislon S. Oliveira; Daniel Kumazawa Morais; Sara Cuadros Orellana; Fabiano Sviatopolk-Mirsky Pais; Julliane Dutra Medeiros; Juliana Assis Geraldo; Jack A. Gilbert; Angela Cristina Volpini; Gabriel da Rocha Fernandes

Zika virus (ZIKV) is an emerging mosquito-borne flavivirus, first isolated in 1947 from the serum of a pyrexial rhesus monkey caged in the Zika Forest (Uganda/Africa)1. In 2007 ZIKV was reported to of been responsible for an outbreak of relatively mild disease, characterized by rash, arthralgia, and conjunctivitis on Yap Island, in the western Pacific Ocean2. In the past year, ZIKV has been circulating in the Americas, probably introduced through Easter Island (Chile), by French Polynesians3. In early 2015, a new outbreak was recognized in northeast Brazil4, where concerns over its possible links with infant microcephaly have been discussed5,6. Providing a definitive link between ZIKV infection and birth defects is still a big challenge7. MicroRNAs (miRNAs), are small noncoding RNAs that regulating post-transcriptional gene expression by translational repression, and play important roles in viral pathogenesis8 and brain development9. It is estimated that more than 60% of human protein-coding genes contain at least one conserved miRNA-binding site10. The potential for flavivirus-mediated miRNA signaling dysfunction in brain-tissue develop provides a compelling mechanism underlying perceived linked between ZIKV and microcephaly. Here, we provide strong evidences toward to understand the mechanism in which miRNAs can be linked to the “congenital Zika syndrome” symptoms. Moreover, following World Health Organization (WHO) recommendations11, we have assembled a database that could help target mechanistic investigations of this possible relationship between ZIKV symptoms and miRNA mediated human gene expression, helping to foster potential targets for therapy.


Microbial Ecology | 2016

BMPOS: a Flexible and User-Friendly Tool Sets for Microbiome Studies

Victor Satler Pylro; Daniel Kumazawa Morais; Francislon S. Oliveira; Fausto G. dos Santos; Leandro Nascimento Lemos; Guilherme Oliveira; Luiz Fernando Wurdig Roesch


International Journal for Parasitology | 2017

Helminth secretomes reflect different lifestyles and parasitized hosts

Yesid Cuesta-Astroz; Francislon S. Oliveira; Laila A. Nahum; Guilherme Oliveira

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