Artificial Intelligence Allows Leaving-In-Situ Colorectal Polyps

Cesare Hassan, Giuseppina Balsamo, Roberto Lorenzetti, Angelo Zullo, Giulio Antonelli, Cesare Hassan, Giuseppina Balsamo, Roberto Lorenzetti, Angelo Zullo, Giulio Antonelli

Abstract

Background & aims: Artificial Intelligence (AI) could support cost-saving strategies for colonoscopy because of its accuracy in the optical diagnosis of colorectal polyps. However, AI must meet predefined criteria to be implemented in clinical settings.

Methods: An approved computer-aided diagnosis (CADx) module for differentiating between adenoma and nonadenoma in unmagnified white-light colonoscopy was used in a consecutive series of colonoscopies. For each polyp, CADx output and subsequent endoscopist diagnosis with advanced imaging were matched against the histology gold standard. The primary outcome was the negative predictive value (NPV) of CADx for adenomatous histology for ≤5-mm rectosigmoid lesions. We also calculated the NPV for AI-assisted endoscopist predictions, and agreement between CADx and histology-based postpolypectomy surveillance intervals according to European and American guidelines.

Results: Overall, 544 polyps were removed in 162 patients, of which 295 (54.2%) were ≤5-mm rectosigmoid histologically verified lesions. CADx diagnosis was feasible in 291 of 295 (98.6%), and the NPV for ≤5-mm rectosigmoid lesions was 97.6% (95% CI, 94.1%-99.1%). There were 242 of 295 (82%) lesions that were amenable for a leave-in-situ strategy. Based on CADx output, 212 of 544 (39%) would be amenable to a resect-and-discard strategy, resulting in a 95.6% (95% CI, 90.8%-98.0%) and 95.9% (95% CI, 89.8%-98.4%) agreement between CADx- and histology-based surveillance intervals according to European and American guidelines, respectively. A similar NPV (97.6%; 95% CI, 94.8%-99.1%) for ≤5-mm rectosigmoids was achieved by AI-assisted endoscopists assessing polyps with electronic chromoendoscopy, with a CADx-concordant diagnosis in 97.2% of cases.

Conclusions: In this study, CADx without advanced imaging exceeded the benchmarks required for optical diagnosis of colorectal polyps. CADx could help implement cost-saving strategies in colonoscopy by reducing the burden of polypectomy and/or pathology.

Clinicaltrials: gov registration number: NCT04884581.

Keywords: Artificial Intelligence; Colonoscopy; Colorectal Cancer Screening; Colorectal Polyps; Diminutive Polyps; Leave in Situ; Machine Learning; Optical Diagnosis; Polyp Characterization; Resect and Discard; Virtual Chromoendoscopy.

Copyright © 2022 The Authors. Published by Elsevier Inc. All rights reserved.

Source: PubMed

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