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Effectiveness of a Deep-learning Polyp Detection System in Prospectively Collected Colonoscopy Videos With Variable Bowel Preparation Quality.

Publication ,  Journal Article
Becq, A; Chandnani, M; Bharadwaj, S; Baran, B; Ernest-Suarez, K; Gabr, M; Glissen-Brown, J; Sawhney, M; Pleskow, DK; Berzin, TM
Published in: J Clin Gastroenterol
July 2020

BACKGROUND: Colonoscopy is the gold standard for polyp detection, but polyps may be missed. Artificial intelligence (AI) technologies may assist in polyp detection. To date, most studies for polyp detection have validated algorithms in ideal endoscopic conditions. AIM: To evaluate the performance of a deep-learning algorithm for polyp detection in a real-world setting of routine colonoscopy with variable bowel preparation quality. METHODS: We performed a prospective, single-center study of 50 consecutive patients referred for colonoscopy. Procedural videos were analyzed by a validated deep-learning AI polyp detection software that labeled suspected polyps. Videos were then re-read by 5 experienced endoscopists to categorize all possible polyps identified by the endoscopist and/or AI, and to measure Boston Bowel Preparation Scale. RESULTS: In total, 55 polyps were detected and removed by the endoscopist. The AI system identified 401 possible polyps. A total of 100 (24.9%) were categorized as "definite polyps;" 53/100 were identified and removed by the endoscopist. A total of 63 (15.6%) were categorized as "possible polyps" and were not removed by the endoscopist. In total, 238/401 were categorized as false positives. Two polyps identified by the endoscopist were missed by AI (false negatives). The sensitivity of AI for polyp detection was 98.8%, the positive predictive value was 40.6%. The polyp detection rate for the endoscopist was 62% versus 82% for the AI system. Mean segmental Boston Bowel Preparation Scale were similar (2.64, 2.59, P=0.47) for true and false positives, respectively. CONCLUSIONS: A deep-learning algorithm can function effectively to detect polyps in a prospectively collected series of colonoscopies, even in the setting of variable preparation quality.

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Published In

J Clin Gastroenterol

DOI

EISSN

1539-2031

Publication Date

July 2020

Volume

54

Issue

6

Start / End Page

554 / 557

Location

United States

Related Subject Headings

  • Prospective Studies
  • Humans
  • Gastroenterology & Hepatology
  • Deep Learning
  • Colonoscopy
  • Colonic Polyps
  • Artificial Intelligence
  • 3202 Clinical sciences
  • 1103 Clinical Sciences
 

Citation

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Becq, A., Chandnani, M., Bharadwaj, S., Baran, B., Ernest-Suarez, K., Gabr, M., … Berzin, T. M. (2020). Effectiveness of a Deep-learning Polyp Detection System in Prospectively Collected Colonoscopy Videos With Variable Bowel Preparation Quality. J Clin Gastroenterol, 54(6), 554–557. https://doi.org/10.1097/MCG.0000000000001272
Becq, Aymeric, Madhuri Chandnani, Shishira Bharadwaj, Bülent Baran, Kenneth Ernest-Suarez, Moamen Gabr, Jeremy Glissen-Brown, Mandeep Sawhney, Douglas K. Pleskow, and Tyler M. Berzin. “Effectiveness of a Deep-learning Polyp Detection System in Prospectively Collected Colonoscopy Videos With Variable Bowel Preparation Quality.J Clin Gastroenterol 54, no. 6 (July 2020): 554–57. https://doi.org/10.1097/MCG.0000000000001272.
Becq A, Chandnani M, Bharadwaj S, Baran B, Ernest-Suarez K, Gabr M, et al. Effectiveness of a Deep-learning Polyp Detection System in Prospectively Collected Colonoscopy Videos With Variable Bowel Preparation Quality. J Clin Gastroenterol. 2020 Jul;54(6):554–7.
Becq, Aymeric, et al. “Effectiveness of a Deep-learning Polyp Detection System in Prospectively Collected Colonoscopy Videos With Variable Bowel Preparation Quality.J Clin Gastroenterol, vol. 54, no. 6, July 2020, pp. 554–57. Pubmed, doi:10.1097/MCG.0000000000001272.
Becq A, Chandnani M, Bharadwaj S, Baran B, Ernest-Suarez K, Gabr M, Glissen-Brown J, Sawhney M, Pleskow DK, Berzin TM. Effectiveness of a Deep-learning Polyp Detection System in Prospectively Collected Colonoscopy Videos With Variable Bowel Preparation Quality. J Clin Gastroenterol. 2020 Jul;54(6):554–557.

Published In

J Clin Gastroenterol

DOI

EISSN

1539-2031

Publication Date

July 2020

Volume

54

Issue

6

Start / End Page

554 / 557

Location

United States

Related Subject Headings

  • Prospective Studies
  • Humans
  • Gastroenterology & Hepatology
  • Deep Learning
  • Colonoscopy
  • Colonic Polyps
  • Artificial Intelligence
  • 3202 Clinical sciences
  • 1103 Clinical Sciences