Your browser doesn't support javascript.
loading
White light computer-aided optical diagnosis of diminutive colorectal polyps in routine clinical practice.
Rondonotti, Emanuele; Bergna, Irene Maria Bambina; Paggi, Silvia; Amato, Arnaldo; Andrealli, Alida; Scardino, Giulia; Tamanini, Giacomo; Lenoci, Nicoletta; Mandelli, Giovanna; Terreni, Natalia; Rocchetto, SImone; Piagnani, Alessandra; Di Paolo, Dhanai; Bina, Niccolò; Filippi, Emanuela; Ambrosiani, Luciana; Hassan, Cesare; Correale, Loredana; Radaelli, Franco.
Afiliação
  • Rondonotti E; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Bergna IMB; University of Milan, Milano, Italy.
  • Paggi S; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Amato A; Gastroenterology and Digestive Endoscopy Unit, Alessandro Manzoni Hospital, Lecco, Italy.
  • Andrealli A; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Scardino G; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Tamanini G; Gastroenterology and Digestive Endoscopy Unit, Alessandro Manzoni Hospital, Lecco, Italy.
  • Lenoci N; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Mandelli G; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Terreni N; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Rocchetto S; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Piagnani A; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Di Paolo D; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Bina N; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Filippi E; University of Milan, Milano, Italy.
  • Ambrosiani L; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Hassan C; University of Milan, Milano, Italy.
  • Correale L; Gastroenterology Unit, Valduce Hospital, Como, Italy.
  • Radaelli F; Gastroenterology Unit, Valduce Hospital, Como, Italy.
Endosc Int Open ; 12(5): E676-E683, 2024 May.
Article em En | MEDLINE | ID: mdl-38774861
ABSTRACT
Background and study aims Artificial Intelligence (AI) systems could make the optical diagnosis (OD) of diminutive colorectal polyps (DCPs) more reliable and objective. This study was aimed at prospectively evaluating feasibility and diagnostic performance of AI-standalone and AI-assisted OD of DCPs in a real-life setting by using a white light-based system (GI Genius, Medtronic Co, Minneapolis, Minnesota, United States). Patients and methods Consecutive colonoscopy outpatients with at least one DCP were evaluated by 11 endoscopists (5 experts and 6 non-experts in OD). DCPs were classified in real time by AI (AI-standalone OD) and by the endoscopist with the assistance of AI (AI-assisted OD), with histopathology as the reference standard. Results Of the 480 DCPs, AI provided the outcome "adenoma" or "non-adenoma" in 81.4% (95% confidence interval [CI] 77.5-84.6). Sensitivity, specificity, positive and negative predictive value, and accuracy of AI-standalone OD were 97.0% (95% CI 94.0-98.6), 38.1% (95% CI 28.9-48.1), 80.1% (95% CI 75.2-84.2), 83.3% (95% CI 69.2-92.0), and 80.5% (95% CI 68.7-82.8%), respectively. Compared with AI-standalone, the specificity of AI-assisted OD was significantly higher (58.9%, 95% CI 49.7-67.5) and a trend toward an increase was observed for other diagnostic performance measures. Overall accuracy and negative predictive value of AI-assisted OD for experts and non-experts were 85.8% (95% CI 80.0-90.4) vs. 80.1% (95% CI 73.6-85.6) and 89.1% (95% CI 75.6-95.9) vs. 80.0% (95% CI 63.9-90.4), respectively. Conclusions Standalone AI is able to provide an OD of adenoma/non-adenoma in more than 80% of DCPs, with a high sensitivity but low specificity. The human-machine interaction improved diagnostic performance, especially when experts were involved.
Palavras-chave

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article