Avisos

Edital de Credenciamento n°01/2022

O Programa de Pós-graduação em Engenharia de Computação (PPGEC) da Universidade de Pernambuco anunciao processo de credenciamento daqueles que integrarão o corpo docente do Programa. No documento de divulgação (disponíveis ao fim do texto) se encontram mais informações. -

EDITAL (AQUI)

Edital Aberto

Entrega do Pré Projeto de Qualificação da turma 2021.1 - Ano 2022.1

Atenção

Informamos que o prazo limite para entrega dos pré-projetos de qualificação da Turma 2021.1 será até o dia 08/04/2022, entregues eletronicamente para o email da secretaria ( O endereço de e-mail address está sendo protegido de spambots. Você precisa ativar o JavaScript enabled para vê-lo. ). As apresentações dos pré-projetos serão realizadas entre os dias 25/04/2022 a 29/04/2022. Lembramos que as informações: data, horário e link da sala remota ou sala física serão divulgados no dia 24/04/2022.

Divulgação - Defesa Nº 246

Aluno: Thomás Tabosa de Oliveira

Título: “Development of machine learning models to aid in the diagnosis of arboviruses using clinical data”

Orientadora: Patricia Takako Endo - (PPGEC)

Co-orientador: Vanderson de Souza Sampaio - (FMT)

Examinador Externo: Ivanovitch Silva - (UFRN)

Examinador Interno: Wellington Pinheiro dos Santos - (PPGEC)

Data-hora: 30/Março/2022 (9:00h) - AM
Local: Formato Remoto (https://meet.google.com/exr-vomk-qhu)


Resumo:

Among the neglected tropical diseases (NTDs), arboviruses have a significant number of cases worldwide. In addition, the effects of the lockdown caused by COVID-19 contributed to the increase in cases of this type of virus. Its correct classification is a complex process due to the great similarity of symptoms between arboviruses. In addition, the lack of laboratory tests, especially in the interior of the country, is an additional obstacle to this problem. Given this context, this work proposes a machine learning model to assist health professionals in the clinical diagnosis of patients suspected of the most common arboviruses, Dengue and Chikungunya. For this, the model will make a multi-class classification between DENGUE, CHIKUNGUNYA and INCONCLUSIVE, to identify patients who do not have any of this two diseases. Eight models were initially tested and optimized through Grid Search technique, feature selection techniques were also performed to select the best attributes (symptoms and patient history) from the dataset. Finally, an evaluation of the selected attributes was also carried out with experts in the field to create a model that is more interpretable for health professionals. This work developed the GBM-Specialist, a Gradient Boosting model validated by experts, which achieved 76% sensitivity in the CHIKUNGUNYA class. Finally, a prototype, VALERIA, was developed so that the model can be used by healthcare professionals in real-world application.

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