Real-Time Artificial Intelligence–Based Optical Diagnosis of Neoplastic Polyps during Colonoscopy

Ishita Barua(Oslo University Hospital), Paulina Wieszczy(Postgraduate School of Molecular Medicine), Shin‐ei Kudo(Showa University Northern Yokohama Hospital), Masashi Misawa(Showa University Northern Yokohama Hospital), Øyvind Holme(University of Oslo), Shraddha Gulati(King's College Hospital NHS Foundation Trust), Sophie Williams(King's College Hospital NHS Foundation Trust), Kensaku Mori(Nagoya University), Hayato Itoh(Nagoya University), Kazumi Takishima(Showa University Northern Yokohama Hospital), Kenichi Mochizuki(Showa University Northern Yokohama Hospital), Yuki Miyata(Showa University Northern Yokohama Hospital), Kentaro Mochida(Showa University Northern Yokohama Hospital), Yoshika Akimoto(Showa University Northern Yokohama Hospital), Takanori Kuroki(Showa University Northern Yokohama Hospital), Yuriko Morita(Showa University Northern Yokohama Hospital), Osamu Shiina(Showa University Northern Yokohama Hospital), Shun Kato(Showa University Northern Yokohama Hospital), Tetsuo Nemoto(Showa University Northern Yokohama Hospital), Bu Hayee(King's College Hospital NHS Foundation Trust), Mehul Patel(King's College Hospital NHS Foundation Trust), Nishmi Gunasingam(King's College Hospital NHS Foundation Trust), Alexandra Kent(King's College Hospital NHS Foundation Trust), Andrew Emmanuel(King's College Hospital NHS Foundation Trust), Carl Munck(Vestre Viken Hospital Trust), Jens Aksel Nilsen(Vestre Viken Hospital Trust), Stine Astrup Hvattum(Vestre Viken Hospital Trust), Svein Oskar Frigstad(Vestre Viken Hospital Trust), Petter Tandberg(Vestre Viken Hospital Trust), Magnus Løberg(University of Oslo), Mette Kalager(University of Oslo), Amyn Haji(King's College Hospital NHS Foundation Trust), Michael Bretthauer(University of Oslo), Yuichi Mori(Oslo University Hospital)
NEJM Evidence
April 13, 2022
Cited by 112

Abstract

BACKGROUND: Artificial intelligence using computer-aided diagnosis (CADx) in real time with images acquired during colonoscopy may help colonoscopists distinguish between neoplastic polyps requiring removal and nonneoplastic polyps not requiring removal. In this study, we tested whether CADx analyzed images helped in this decision-making process. METHODS: We performed a multicenter clinical study comparing a novel CADx-system that uses real-time ultra-magnifying polyp visualization during colonoscopy with standard visual inspection of small (≤5 mm in diameter) polyps in the sigmoid colon and the rectum for optical diagnosis of neoplastic histology. After committing to a diagnosis (i.e., neoplastic, uncertain, or nonneoplastic), all imaged polyps were removed. The primary end point was sensitivity for neoplastic polyps by CADx and visual inspection, compared with histopathology. Secondary end points were specificity and colonoscopist confidence level in unaided optical diagnosis. RESULTS: We assessed 1289 individuals for eligibility at colonoscopy centers in Norway, the United Kingdom, and Japan. We detected 892 eligible polyps in 518 patients and included them in analyses: 359 were neoplastic and 533 were nonneoplastic. Sensitivity for the diagnosis of neoplastic polyps with standard visual inspection was 88.4% (95% confidence interval [CI], 84.3 to 91.5) compared with 90.4% (95% CI, 86.8 to 93.1) with CADx (P=0.33). Specificity was 83.1% (95% CI, 79.2 to 86.4) with standard visual inspection and 85.9% (95% CI, 82.3 to 88.8) with CADx. The proportion of polyp assessment with high confidence was 74.2% (95% CI, 70.9 to 77.3) with standard visual inspection versus 92.6% (95% CI, 90.6 to 94.3) with CADx. CONCLUSIONS: Real-time polyp assessment with CADx did not significantly increase the diagnostic sensitivity of neoplastic polyps during a colonoscopy compared with optical evaluation without CADx. (Funded by the Research Council of Norway [Norges Forskningsråd], the Norwegian Cancer Society [Kreftforeningen], and the Japan Society for the Promotion of Science; UMIN number, UMIN000035213.)


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