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Clinical validation of an artificial intelligence algorithm for classifying tuberculosis and pulmonary findings in chest radiographs
13
Zitationen
17
Autoren
2025
Jahr
Abstract
This retrospective clinical validation study assesses an AI algorithm's effectiveness in interpreting Chest X-rays (CXR). The results show the algorithm's performance is comparable to Group A physicians, using gold-standard analysis (Group B) as the reference. Notably, both Groups reported minimal influence of the algorithm on their decisions in most cases.
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Autoren
- Thiago Fellipe Ortiz de Camargo
- Guilherme Ribeiro
- Maria Carolina Bueno da Silva
- Luan Silva
- Pedro Paulo Teixeira e Silva Torres
- D. D. Silva
- Mayler Olombrada Nunes de Santos
- William Salibe-Filho
- Marcela Emer Egypto Rosa
- Magdala de Araújo Novaes
- Thiago Augusto Massarutto
- Osvaldo Landi
- Elaine Yanata
- Márcio R. C. Reis
- Gilberto Szarf
- Pedro Vieira Santana Netto
- Joselisa Péres Queiroz de Paiva