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Image dataset of urine test results on petri dishes for deep learning classification.
da Silva, Gabriel Rodrigues; Rosmaninho, Igor Batista; Zancul, Eduardo; de Oliveira, Vanessa Rita; Francisco, Gabriela Rodrigues; Dos Santos, Nathamy Fernanda; de Mello Macêdo, Karin; da Silva, Amauri José; de Lima, Érika Knabben; Lemo, Mara Elisa Borsato; Maldonado, Alessandra; Moura, Maria Emilia G; da Silva, Flávia Helena; Guimarães, Gustavo Stuani.
Afiliação
  • da Silva GR; University of São Paulo, School of Engineering, Av. Prof. Luciano Gualberto, 1380, Cidade Universitária, São Paulo-SP, 05508-010, Brazil.
  • Rosmaninho IB; University of São Paulo, School of Engineering, Av. Prof. Luciano Gualberto, 1380, Cidade Universitária, São Paulo-SP, 05508-010, Brazil.
  • Zancul E; University of São Paulo, School of Engineering, Av. Prof. Luciano Gualberto, 1380, Cidade Universitária, São Paulo-SP, 05508-010, Brazil.
  • de Oliveira VR; Grupo Fleury - Clinical Analysis, Av. Morumbi, 8860, São Paulo-SP, Brazil.
  • Francisco GR; Grupo Fleury - Clinical Analysis, Av. Morumbi, 8860, São Paulo-SP, Brazil.
  • Dos Santos NF; Grupo Fleury - Clinical Analysis, Av. Morumbi, 8860, São Paulo-SP, Brazil.
  • de Mello Macêdo K; Grupo Fleury - Clinical Analysis, Av. Morumbi, 8860, São Paulo-SP, Brazil.
  • da Silva AJ; Grupo Fleury - Clinical Analysis, Av. Morumbi, 8860, São Paulo-SP, Brazil.
  • de Lima ÉK; Grupo Fleury - Clinical Analysis, Av. Morumbi, 8860, São Paulo-SP, Brazil.
  • Lemo MEB; Grupo Fleury - Clinical Analysis, Av. Morumbi, 8860, São Paulo-SP, Brazil.
  • Maldonado A; Grupo Fleury - Clinical Analysis, Av. Morumbi, 8860, São Paulo-SP, Brazil.
  • Moura MEG; Grupo Fleury - Clinical Analysis, Av. Morumbi, 8860, São Paulo-SP, Brazil.
  • da Silva FH; Grupo Fleury - Clinical Analysis, Av. Morumbi, 8860, São Paulo-SP, Brazil.
  • Guimarães GS; Grupo Fleury - Clinical Analysis, Av. Morumbi, 8860, São Paulo-SP, Brazil.
Data Brief ; 47: 109034, 2023 Apr.
Article em En | MEDLINE | ID: mdl-36942098
Recent advancements in image analysis and interpretation technologies using computer vision techniques have shown potential for novel applications in clinical microbiology laboratories to support task automation aiming for faster and more reliable diagnostics. Deep learning models can be a valuable tool in the screening process, helping technicians spend less time classifying no-growth results and quickly separating the categories of tests that deserve further analysis. In this context, creating datasets with correctly classified images is fundamental for developing and improving such models. Therefore, a dataset of urine test Petri dishes images was collected following a standardized process, with controlled conditions of positioning and lighting. Image acquisition was conducted by applying a hardware chamber equipped with a led lightning source and a smartphone camera with 12 MP resolution. A software application was developed to support image classification and handling. Experienced microbiologists classified the images according to the positive, negative, and uncertain test results. The resulting dataset contains a total of 1500 images and can support the development of deep learning algorithms to classify urine exams according to their microbial growth.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Data Brief Ano de publicação: 2023 Tipo de documento: Article País de afiliação: Brasil País de publicação: Holanda

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Data Brief Ano de publicação: 2023 Tipo de documento: Article País de afiliação: Brasil País de publicação: Holanda