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A New Artificial Intelligence-Based Method for Identifying Mycobacterium Tuberculosis in Ziehl-Neelsen Stain on Tissue.
Zurac, Sabina; Mogodici, Cristian; Poncu, Teodor; Trascau, Mihai; Popp, Cristiana; Nichita, Luciana; Cioplea, Mirela; Ceachi, Bogdan; Sticlaru, Liana; Cioroianu, Alexandra; Busca, Mihai; Stefan, Oana; Tudor, Irina; Voicu, Andrei; Stanescu, Daliana; Mustatea, Petronel; Dumitru, Carmen; Bastian, Alexandra.
Afiliação
  • Zurac S; Department of Pathology, Colentina University Hospital, 21 Stefan Cel Mare Str., Sector 2, 020125 Bucharest, Romania.
  • Mogodici C; Zaya Artificial Intelligence, 9A Stefan Cel Mare Str., 077190 Voluntari, Romania.
  • Poncu T; Department of Pathology, Faculty of Dental Medicine, University of Medicine and Pharmacy Carol Davila, 37 Dionisie Lupu Str., Sector 1, 020021 Bucharest, Romania.
  • Trascau M; Zaya Artificial Intelligence, 9A Stefan Cel Mare Str., 077190 Voluntari, Romania.
  • Popp C; Zaya Artificial Intelligence, 9A Stefan Cel Mare Str., 077190 Voluntari, Romania.
  • Nichita L; Department of Computer Science, Faculty of Automatic Control and Computers, University Politehnica of Bucharest, 313 Splaiul Independentei, Sector 6, 060042 Bucharest, Romania.
  • Cioplea M; Zaya Artificial Intelligence, 9A Stefan Cel Mare Str., 077190 Voluntari, Romania.
  • Ceachi B; Department of Computer Science, Faculty of Automatic Control and Computers, University Politehnica of Bucharest, 313 Splaiul Independentei, Sector 6, 060042 Bucharest, Romania.
  • Sticlaru L; Department of Pathology, Colentina University Hospital, 21 Stefan Cel Mare Str., Sector 2, 020125 Bucharest, Romania.
  • Cioroianu A; Zaya Artificial Intelligence, 9A Stefan Cel Mare Str., 077190 Voluntari, Romania.
  • Busca M; Department of Pathology, Colentina University Hospital, 21 Stefan Cel Mare Str., Sector 2, 020125 Bucharest, Romania.
  • Stefan O; Zaya Artificial Intelligence, 9A Stefan Cel Mare Str., 077190 Voluntari, Romania.
  • Tudor I; Department of Pathology, Faculty of Dental Medicine, University of Medicine and Pharmacy Carol Davila, 37 Dionisie Lupu Str., Sector 1, 020021 Bucharest, Romania.
  • Voicu A; Department of Pathology, Colentina University Hospital, 21 Stefan Cel Mare Str., Sector 2, 020125 Bucharest, Romania.
  • Stanescu D; Zaya Artificial Intelligence, 9A Stefan Cel Mare Str., 077190 Voluntari, Romania.
  • Mustatea P; Zaya Artificial Intelligence, 9A Stefan Cel Mare Str., 077190 Voluntari, Romania.
  • Dumitru C; Department of Computer Science, Faculty of Automatic Control and Computers, University Politehnica of Bucharest, 313 Splaiul Independentei, Sector 6, 060042 Bucharest, Romania.
  • Bastian A; Department of Pathology, Colentina University Hospital, 21 Stefan Cel Mare Str., Sector 2, 020125 Bucharest, Romania.
Diagnostics (Basel) ; 12(6)2022 Jun 17.
Article em En | MEDLINE | ID: mdl-35741294
ABSTRACT
Mycobacteria identification is crucial to diagnose tuberculosis. Since the bacillus is very small, finding it in Ziehl-Neelsen (ZN)-stained slides is a long task requiring significant pathologist's effort. We developed an automated (AI-based) method of identification of mycobacteria. We prepared a training dataset of over 260,000 positive and over 700,000,000 negative patches annotated on scans of 510 whole slide images (WSI) of ZN-stained slides (110 positive and 400 negative). Several image augmentation techniques coupled with different custom computer vision architectures were used. WSIs automatic analysis was followed by a report indicating areas more likely to present mycobacteria. Our model performs AI-based diagnosis (the final decision of the diagnosis of WSI belongs to the pathologist). The results were validated internally on a dataset of 286,000 patches and tested in pathology laboratory settings on 60 ZN slides (23 positive and 37 negative). We compared the pathologists' results obtained by separately evaluating slides and WSIs with the results given by a pathologist aided by automatic analysis of WSIs. Our architecture showed 0.977 area under the receiver operating characteristic curve. The clinical test presented 98.33% accuracy, 95.65% sensitivity, and 100% specificity for the AI-assisted method, outperforming any other AI-based proposed methods for AFB detection.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2022 Tipo de documento: Article