Artificial intelligence-assisted optical diagnosis for the resect-and-discard strategy in clinical practice: the Artificial intelligence BLI Characterization (ABC) study

Author:

Rondonotti Emanuele1ORCID,Hassan Cesare2,Tamanini Giacomo1,Antonelli Giulio23,Andrisani Gianluca4,Leonetti Giovanni25,Paggi Silvia1,Amato Arnaldo1ORCID,Scardino Giulia1,Di Paolo Dhanai16,Mandelli Giovanna1,Lenoci Nicoletta1,Terreni Natalia1,Andrealli Alida1,Maselli Roberta78,Spadaccini Marco78,Galtieri Piera Alessia8,Correale Loredana2,Repici Alessandro78,Di Matteo Francesco Maria4,Ambrosiani Luciana9,Filippi Emanuela9,Sharma Prateek1011,Radaelli Franco1

Affiliation:

1. Gastroenterology Unit, Valduce Hospital, Como, Italy

2. Digestive Endoscopy Unit, Nuovo Regina Margherita Hospital, Rome, Italy

3. Department of Translational and Precision Medicine, Sapienza University of Rome, Rome, Italy

4. Digestive Endoscopy Unit, Campus Bio-Medico, University of Rome, Rome, Italy

5. Endoscopy Unit, Casa di Cura Nuova Santa Teresa, Viterbo, Italy

6. Department of Gastroenterology and Hepatology, Foundation IRCCS Ca’ Granda Ospedale Maggiore Policlinico, Milan, Italy

7. Department of Biomedical Sciences, Humanitas University, Rozzano, Milan, Italy

8. Endoscopy Unit, Humanitas Clinical and Research Center IRCCS, Rozzano, Milan, Italy

9. Pathology Department, Valduce Hospital, Como, Italy

10. Department of Gastroenterology, Kansas City VA Medical Center, Kansas City, Missouri, USA

11. Department of Gastroenterology and Hepatology, University of Kansas Medical Center, Kansas City, Kansas, USA

Abstract

Abstract Background Optical diagnosis of colonic polyps is poorly reproducible outside of high volume referral centers. The present study aimed to assess whether real-time artificial intelligence (AI)-assisted optical diagnosis is accurate enough to implement the leave-in-situ strategy for diminutive (≤ 5 mm) rectosigmoid polyps (DRSPs). Methods Consecutive colonoscopy outpatients with ≥ 1 DRSP were included. DRSPs were categorized as adenomas or nonadenomas by the endoscopists, who had differing expertise in optical diagnosis, with the assistance of a real-time AI system (CAD-EYE). The primary end point was ≥ 90 % negative predictive value (NPV) for adenomatous histology in high confidence AI-assisted optical diagnosis of DRSPs (Preservation and Incorporation of Valuable endoscopic Innovations [PIVI-1] threshold), with histopathology as the reference standard. The agreement between optical- and histology-based post-polypectomy surveillance intervals (≥ 90 %; PIVI-2 threshold) was also calculated according to European Society of Gastrointestinal Endoscopy (ESGE) and United States Multi-Society Task Force (USMSTF) guidelines. Results Overall 596 DRSPs were retrieved for histology in 389 patients; an AI-assisted high confidence optical diagnosis was made in 92.3 %. The NPV of AI-assisted optical diagnosis for DRSPs (PIVI-1) was 91.0 % (95 %CI 87.1 %–93.9 %). The PIVI-2 threshold was met with 97.4 % (95 %CI 95.7 %–98.9 %) and 92.6 % (95 %CI 90.0 %–95.2 %) of patients according to ESGE and USMSTF, respectively. AI-assisted optical diagnosis accuracy was significantly lower for nonexperts (82.3 %, 95 %CI 76.4 %–87.3 %) than for experts (91.9 %, 95 %CI 88.5 %–94.5 %); however, nonexperts quickly approached the performance levels of experts over time. Conclusion AI-assisted optical diagnosis matches the required PIVI thresholds. This does not however offset the need for endoscopistsʼ high level confidence and expertise. The AI system seems to be useful, especially for nonexperts.

Publisher

Georg Thieme Verlag KG

Subject

Gastroenterology

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