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Dive into the research topics where Fabio Oliveira Teixeira is active.

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Featured researches published by Fabio Oliveira Teixeira.


Transplantation Proceedings | 2011

Application of the Intelligent Techniques in Transplantation Databases: A Review of Articles Published in 2009 and 2010

Fernando Sequeira Sousa; Anderson Diniz Hummel; R.F. Maciel; F.M. Cohrs; Alex Esteves Jaccoud Falcão; Fabio Oliveira Teixeira; R. Baptista; Felipe Mancini; T.M. da Costa; Domingos Alves; Ivan Torres Pisa

The replacement of defective organs with healthy ones is an old problem, but only a few years ago was this issue put into practice. Improvements in the whole transplantation process have been increasingly important in clinical practice. In this context are clinical decision support systems (CDSSs), which have reflected a significant amount of work to use mathematical and intelligent techniques. The aim of this article was to present consideration of intelligent techniques used in recent years (2009 and 2010) to analyze organ transplant databases. To this end, we performed a search of the PubMed and Institute for Scientific Information (ISI) Web of Knowledge databases to find articles published in 2009 and 2010 about intelligent techniques applied to transplantation databases. Among 69 retrieved articles, we chose according to inclusion and exclusion criteria. The main techniques were: Artificial Neural Networks (ANN), Logistic Regression (LR), Decision Trees (DT), Markov Models (MM), and Bayesian Networks (BN). Most articles used ANN. Some publications described comparisons between techniques or the use of various techniques together. The use of intelligent techniques to extract knowledge from databases of healthcare is increasingly common. Although authors preferred to use ANN, statistical techniques were equally effective for this enterprise.


Journal of Biomedical Informatics | 2011

Use of Medical Subject Headings (MeSH) in Portuguese for categorizing web-based healthcare content

Felipe Mancini; Fernando Sequeira Sousa; Fabio Oliveira Teixeira; Alex Esteves Jaccoud Falcão; Anderson Diniz Hummel; Thiago Martini da Costa; Pável Calado; Luciano Vieira de Araújo; Ivan Torres Pisa

INTRODUCTION Internet users are increasingly using the worldwide web to search for information relating to their health. This situation makes it necessary to create specialized tools capable of supporting users in their searches. OBJECTIVE To apply and compare strategies that were developed to investigate the use of the Portuguese version of Medical Subject Headings (MeSH) for constructing an automated classifier for Brazilian Portuguese-language web-based content within or outside of the field of healthcare, focusing on the lay public. METHODS 3658 Brazilian web pages were used to train the classifier and 606 Brazilian web pages were used to validate it. The strategies proposed were constructed using content-based vector methods for text classification, such that Naive Bayes was used for the task of classifying vector patterns with characteristics obtained through the proposed strategies. RESULTS A strategy named InDeCS was developed specifically to adapt MeSH for the problem that was put forward. This approach achieved better accuracy for this pattern classification task (0.94 sensitivity, specificity and area under the ROC curve). CONCLUSIONS Because of the significant results achieved by InDeCS, this tool has been successfully applied to the Brazilian healthcare search portal known as Busca Saúde. Furthermore, it could be shown that MeSH presents important results when used for the task of classifying web-based content focusing on the lay public. It was also possible to show from this study that MeSH was able to map out mutable non-deterministic characteristics of the web.


Transplantation Proceedings | 2011

Artificial Intelligence Techniques: Predicting Necessity for Biopsy in Renal Transplant Recipients Suspected of Acute Cellular Rejection or Nephrotoxicity

Anderson Diniz Hummel; Rafael Fabio Maciel; Fernando Sequeira Sousa; Frederico Molina Cohrs; Alex Esteves Jaccoud Falcão; Fabio Oliveira Teixeira; R. Baptista; Felipe Mancini; T.M. da Costa; Domingos Alves; R.G.D.S. Rodrigues; R. Miranda; Ivan Torres Pisa

The gold standard for nephrotoxicity and acute cellular rejection (ACR) is a biopsy, an invasive and expensive procedure. More efficient strategies to screen patients for biopsy are important from the clinical and financial points of view. The aim of this study was to evaluate various artificial intelligence techniques to screen for the need for a biopsy among patients suspected of nephrotoxicity or ACR during the first year after renal transplantation. We used classifiers like artificial neural networks (ANN), support vector machines (SVM), and Bayesian inference (BI) to indicate if the clinical course of the event suggestive of the need for a biopsy. Each classifier was evaluated by values of sensitivity and area under the ROC curve (AUC) for each of the classifiers. The technique that showed the best sensitivity value as an indicator for biopsy was SVM with an AUC of 0.79 and an accuracy rate of 79.86%. The results were better than those described in previous works. The accuracy for an indication of biopsy screening was efficient enough to become useful in clinical practice.


Journal of Information Science | 2016

Applying the semantic web to represent an individual's academic and professional background

Fabio Oliveira Teixeira; Gabriela Tannus Branco de Araujo; Roberto S. Baptista; Luciano Vieira de Araújo; Ivan Torres Pisa

The Lattes Platform is a web-based system that brings together the academic, professional and scientific histories of students, teachers, researchers and other professionals linked to scientific and technological careers. The data are entered by users themselves and are the subject of much research and forecasting in relation to how educational resources are directed in Brazil. In this paper, we report our experience in applying the Linked Data principles to this system. We have also demonstrated the potential of federated queries using data from DBPedia.


Journal of health informatics | 2012

Análise de sentimentos sobre temas de saúde em mídia social

Gabriela Denise de Araujo; Fernando Sequeira Sousa; Fabio Oliveira Teixeira; Felipe Mancini; Edvane Birelo Lopes De Domenico; Marcelo de Paiva Guimarães; Ivan Torres Pisa


international conference on health informatics | 2009

Brazilian Health-related Content Web Search Portal - Presentation on a Method for its Development and Preliminary Results.

Felipe Mancini; Alex Esteves Jaccoud Falcão; Anderson Diniz Hummel; Thiago Martini da Costa; Cristina Lucia Feijó Ortolani; Fabio Oliveira Teixeira; Ivan Torres Pisa


Journal of health informatics | 2009

InDeCS: Método automatizado de classificação de páginas Web de Saúde usando mineração de texto e Descritores em Ciências da Saúde (DeCS)

Alex Esteves Jaccoud Falcão; Felipe Mancini; Thiago Martini da Costa; Anderson Diniz Hummel; Fabio Oliveira Teixeira; Daniel Sigulem; Ivan Torres Pisa


Journal of health informatics | 2018

Sentiment Analysis of Twitter’s Health Messages in Brazilian Portuguese

Gabriela Denise de Araujo; Fabio Oliveira Teixeira; Felipe Mancini; Marcelo de Paiva Guimarães; Ivan Torres Pisa


CIET:EnPED | 2018

HIPERMÍDIAS PARA O ENSINO DE ENFERMAGEM EM AMBIENTE DIGITAL DE APRENDIZAGEM

Izaildo Tavares Luna; Patrícia Neyva da Costa Pinheiro; Fabio Oliveira Teixeira


AMIA | 2013

Network Analysis applied to renal biopsy diagnostics.

Amanda R. Reis; Flávia Pena Nicolas; Roberto S. Baptista; Fabio Oliveira Teixeira; Felipe Mancini; Evandro Eduardo Seron Ruiz; Ivan Torres Pisa

Collaboration


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Felipe Mancini

Federal University of São Paulo

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Anderson Diniz Hummel

Federal University of São Paulo

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Fernando Sequeira Sousa

Federal University of São Paulo

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Thiago Martini da Costa

Federal University of São Paulo

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Daniel Sigulem

Federal University of São Paulo

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Domingos Alves

University of São Paulo

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Frederico Molina Cohrs

Federal University of São Paulo

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