Colonoscopy and artificial intelligence: Bridging the gap or a gap needing to be bridged?

[1]  Xuqiang Bian,et al.  Study on detection rate of polyps and adenomas in artificial-intelligence-aided colonoscopy , 2019, Saudi journal of gastroenterology : official journal of the Saudi Gastroenterology Association.

[2]  Peixi Liu,et al.  Effect of a deep-learning computer-aided detection system on adenoma detection during colonoscopy (CADe-DB trial): a double-blind randomised study. , 2020, The lancet. Gastroenterology & hepatology.

[3]  Thomas Wittenberg,et al.  Artificial Intelligence-Based Polyp Detection in Colonoscopy: Where Have We Been, Where Do We Stand, and Where Are We Headed? , 2020, Visceral Medicine.

[4]  P. Bossuyt,et al.  Polyp Miss Rate Determined by Tandem Colonoscopy: A Systematic Review , 2006, The American Journal of Gastroenterology.

[5]  Eun Mi Song,et al.  Endoscopic diagnosis and treatment planning for colorectal polyps using a deep-learning model , 2020, Scientific Reports.

[6]  Cynthia S. Johnson,et al.  Improving measurement of the adenoma detection rate and adenoma per colonoscopy quality metric: the Indiana University experience. , 2014, Gastrointestinal endoscopy.

[7]  Muhammad F Dawwas,et al.  Adenoma detection rate and risk of colorectal cancer and death. , 2014, The New England journal of medicine.

[8]  R. Bisschops,et al.  Leaving colorectal polyps in place can be achieved with high accuracy using blue light imaging (BLI) , 2018, United European gastroenterology journal.

[9]  A. Abadir,et al.  Artificial Intelligence in Gastrointestinal Endoscopy , 2020, Clinical endoscopy.

[10]  K. Chayama,et al.  Computer-aided diagnosis of colorectal polyp histology by using a real-time image recognition system and narrow-band imaging magnifying colonoscopy. , 2016, Gastrointestinal endoscopy.

[11]  J. Cha,et al.  Participation by experienced endoscopy nurses increases the detection rate of colon polyps during a screening colonoscopy: a multicenter, prospective, randomized study. , 2011, Gastrointestinal endoscopy.

[12]  J. S. Kim,et al.  Improved Accuracy in Optical Diagnosis of Colorectal Polyps Using Convolutional Neural Networks with Visual Explanations. , 2020, Gastroenterology.

[13]  K. Mori,et al.  Real-Time Use of Artificial Intelligence in Identification of Diminutive Polyps During Colonoscopy , 2018, Annals of Internal Medicine.

[14]  Ibrahim Habli,et al.  Artificial intelligence in health care: accountability and safety , 2020, Bulletin of the World Health Organization.

[15]  W. Leung,et al.  ACCURACY OF ARTIFICIAL INTELLIGENCE ON HISTOLOGY PREDICTION AND DETECTION OF COLORECTAL POLYPS: A SYSTEMATIC REVIEW AND META-ANALYSIS. , 2020, Gastrointestinal endoscopy.

[16]  Y. Mori,et al.  Artificial intelligence for polyp detection during colonoscopy: a systematic review and meta-analysis , 2020, Endoscopy.

[17]  E. Kuipers,et al.  Quality evaluation of colonoscopy reporting and colonoscopy performance in daily clinical practice. , 2012, Gastrointestinal endoscopy.

[18]  Masahiro Oda,et al.  Impact of an automated system for endocytoscopic diagnosis of small colorectal lesions: an international web-based study , 2016, Endoscopy.

[19]  K. Mori,et al.  Fully automated diagnostic system with artificial intelligence using endocytoscopy to identify the presence of histologic inflammation associated with ulcerative colitis (with video). , 2019, Gastrointestinal endoscopy.

[20]  C. Hassan,et al.  Narrow-band Imaging International Colorectal Endoscopic Classification to predict polyp histology: REDEFINE study (with videos). , 2016, Gastrointestinal endoscopy.

[21]  J. Inadomi,et al.  Diversity of endoscopy center operations and practice variation across California’s safety-net hospital system: a statewide survey , 2013, BMC Research Notes.

[22]  Thomas Rösch,et al.  Simplifying Resect and Discard Strategies for Real‐Time Assessment of Diminutive Colorectal Polyps , 2017, Clinical gastroenterology and hepatology : the official clinical practice journal of the American Gastroenterological Association.

[23]  A. Jemal,et al.  Global cancer transitions according to the Human Development Index (2008-2030): a population-based study. , 2012, The Lancet. Oncology.

[24]  S. Kudo,et al.  Diagnosis of colorectal tumorous lesions by magnifying endoscopy. , 1996, Gastrointestinal endoscopy.

[25]  Loren Laine,et al.  What Level of Bowel Prep Quality Requires Early Repeat Colonoscopy: Systematic Review and Meta-Analysis of the Impact of Preparation Quality on Adenoma Detection Rate , 2014, The American Journal of Gastroenterology.

[26]  Vani Konda,et al.  ASGE Technology Committee systematic review and meta-analysis assessing the ASGE PIVI thresholds for adopting real-time endoscopic assessment of the histology of diminutive colorectal polyps. , 2015, Gastrointestinal endoscopy.

[27]  Kazuki Sumiyama,et al.  Real-time computer-aided diagnosis of diminutive rectosigmoid polyps using an auto-fluorescence imaging system and novel color intensity analysis software , 2019, Scandinavian journal of gastroenterology.

[28]  Nicolas Chapados,et al.  Real-time differentiation of adenomatous and hyperplastic diminutive colorectal polyps during analysis of unaltered videos of standard colonoscopy using a deep learning model , 2017, Gut.

[29]  The Colon Endoscopic Bubble Scale (CEBuS): a 2-phase evaluation study. , 2020, Endoscopy.

[30]  M. Wallace,et al.  Efficacy of Real-Time Computer-Aided Detection of Colorectal Neoplasia in a Randomized Trial. , 2020, Gastroenterology.

[31]  Gary S Collins,et al.  Guidelines for clinical trial protocols for interventions involving artificial intelligence: the SPIRIT-AI Extension , 2020, Nature Medicine.

[32]  C. Hassan,et al.  Performance of artificial intelligence for colonoscopy regarding adenoma and polyp detection: a meta-analysis. , 2020, Gastrointestinal endoscopy.

[33]  Jaron J. R. Chong,et al.  Canadian Association of Radiologists White Paper on Artificial Intelligence in Radiology , 2018, Canadian Association of Radiologists journal = Journal l'Association canadienne des radiologistes.

[34]  Henry Horng-Shing Lu,et al.  Accurate Classification of Diminutive Colorectal Polyps Using Computer-Aided Analysis. , 2017, Gastroenterology.

[35]  Lian-lian Wu,et al.  A NOVEL ARTIFICIAL INTELLIGENCE SYSTEM FOR THE ASSESSMENT OF BOWEL PREPARATION , 2019, Endoscopy.

[36]  A. M. Leufkens,et al.  Factors influencing the miss rate of polyps in a back-to-back colonoscopy study , 2012, Endoscopy.

[37]  Amitabh Chak,et al.  Quality Indicators for Colonoscopy , 2006, Gastrointestinal endoscopy.

[38]  D. Rex,et al.  Colonoscopic miss rates of adenomas determined by back-to-back colonoscopies. , 1997, Gastroenterology.

[39]  Gheorghe Doros,et al.  The Boston bowel preparation scale: a valid and reliable instrument for colonoscopy-oriented research. , 2007, Gastrointestinal endoscopy.

[40]  T. Berzin,et al.  Lower Adenoma Miss Rate of Computer-aided Detection-Assisted Colonoscopy vs Routine White-Light Colonoscopy in a Prospective Tandem Study. , 2020, Gastroenterology.

[41]  E. Dekker,et al.  Natural history of diminutive and small colorectal polyps: a systematic literature review. , 2017, Gastrointestinal endoscopy.

[42]  M. Leader,et al.  Quality of colonoscopy performance among gastroenterology and surgical trainees: a need for common training standards for all trainees? , 2011, Endoscopy.

[43]  D. Mateus,et al.  Optical classification of neoplastic colorectal polyps – a computer-assisted approach (the COACH study) , 2018, Scandinavian journal of gastroenterology.

[44]  M. Kudo,et al.  Magnifying Narrow Band Imaging (NBI) for the Diagnosis of Localized Colorectal Lesions Using the Japan NBI Expert Team (JNET) Classification , 2017, Oncology.

[45]  David C. Kale,et al.  Do no harm: a roadmap for responsible machine learning for health care , 2019, Nature Medicine.

[46]  K. Mori,et al.  Artificial intelligence and colonoscopy: Current status and future perspectives , 2019, Digestive endoscopy : official journal of the Japan Gastroenterological Endoscopy Society.

[47]  Ulas Bagci,et al.  Quality assurance of computer-aided detection and diagnosis in colonoscopy. , 2019, Gastrointestinal endoscopy.

[48]  W. Zhou,et al.  Detection of colorectal adenomas with a real-time computer-aided system (ENDOANGEL): a randomised controlled study. , 2020, The lancet. Gastroenterology & hepatology.

[49]  A. Bitton,et al.  High adherence to surveillance guidelines in IBD patients results in low colorectal cancer and dysplasia rates, while rates of dysplasia are low before the suggested onset of surveillance. , 2019, Journal of Crohn's & colitis.

[50]  K. Mori,et al.  Artificial Intelligence-assisted System Improves Endoscopic Identification of Colorectal Neoplasms. , 2020, Clinical gastroenterology and hepatology : the official clinical practice journal of the American Gastroenterological Association.

[51]  Sheng-Bing Zhao,et al.  Magnitude, Risk Factors, and Factors Associated With Adenoma Miss Rate of Tandem Colonoscopy: A Systematic Review and Meta-analysis. , 2019, Gastroenterology.

[52]  T. Berzin,et al.  Real-time automatic detection system increases colonoscopic polyp and adenoma detection rates: a prospective randomised controlled study , 2019, Gut.

[53]  J. Ioannidis,et al.  Artificial intelligence versus clinicians: systematic review of design, reporting standards, and claims of deep learning studies , 2020, BMJ.

[54]  Gary S. Collins,et al.  Reporting of artificial intelligence prediction models , 2019, The Lancet.

[55]  C. Trautwein,et al.  Computer-based classification of small colorectal polyps by using narrow-band imaging with optical magnification. , 2011, Gastrointestinal endoscopy.

[56]  C. Naugler,et al.  Defining Benchmarks for Adenoma Detection Rate and Adenomas Per Colonoscopy in Patients Undergoing Colonoscopy Due to a Positive Fecal Immunochemical Test , 2016, The American Journal of Gastroenterology.

[57]  Shinji Tanaka,et al.  Validation of a simple classification system for endoscopic diagnosis of small colorectal polyps using narrow-band imaging. , 2012, Gastroenterology.

[58]  Alessandro Repici,et al.  New artificial intelligence system: first validation study versus experienced endoscopists for colorectal polyp detection , 2019, Gut.

[59]  Hiroaki Ikematsu,et al.  Meshed capillary vessels by use of narrow-band imaging for differential diagnosis of small colorectal polyps. , 2009, Gastrointestinal endoscopy.

[60]  K. Ohtsuka,et al.  Development and Validation of a Deep Neural Network for Accurate Evaluation of Endoscopic Images From Patients with Ulcerative Colitis. , 2020, Gastroenterology.

[61]  Simon C. Mathews,et al.  Improvement in Colonoscopy Quality Metrics in Clinical Practice from 2000 to 2014. , 2019, Gastrointestinal endoscopy.

[62]  E. Kuipers,et al.  Performance measures for lower gastrointestinal endoscopy: a European Society of Gastrointestinal Endoscopy (ESGE) Quality Improvement Initiative , 2016, Endoscopy.

[63]  F. Bray,et al.  Global trends in colorectal cancer mortality: projections to the year 2035 , 2019, International journal of cancer.

[64]  Laurent Beaugerie,et al.  Cancers complicating inflammatory bowel disease. , 2015, The New England journal of medicine.

[65]  Charles J. Kahi,et al.  The American Society for Gastrointestinal Endoscopy PIVI (Preservation and Incorporation of Valuable Endoscopic Innovations) on real-time endoscopic assessment of the histology of diminutive colorectal polyps. , 2011, Gastrointestinal endoscopy.

[66]  M. Wallace,et al.  Should We Resect and Discard Low Risk Diminutive Colon Polyps , 2019, Clinical endoscopy.

[67]  Shai Ben-David,et al.  Understanding Machine Learning: From Theory to Algorithms , 2014 .

[68]  M. Wallace,et al.  Trainee participation is associated with increased small adenoma detection. , 2011, Gastrointestinal endoscopy.

[69]  T. Berzin,et al.  Physician sentiment toward artificial intelligence (AI) in colonoscopic practice: a survey of US gastroenterologists , 2020, Endoscopy International Open.

[70]  Mustafa Suleyman,et al.  Key challenges for delivering clinical impact with artificial intelligence , 2019, BMC Medicine.

[71]  T. Matsuda,et al.  Diagnostic yield of the Japan NBI Expert Team (JNET) classification for endoscopic diagnosis of superficial colorectal neoplasms in a large-scale clinical practice database , 2019, United European gastroenterology journal.

[72]  M. Wallace,et al.  Quality in colonoscopy reporting: an assessment of compliance and performance improvement. , 2012, Digestive and Liver Disease.

[73]  Xiu-Li Zuo,et al.  Impact of real-time automatic quality control system on colorectal polyp and adenoma detection: a prospective randomized controlled study (with video). , 2020, Gastrointestinal endoscopy.

[74]  Douglas K Rex,et al.  Narrow-band imaging without optical magnification for histologic analysis of colorectal polyps. , 2009, Gastroenterology.

[75]  S. Kudo,et al.  Artificial intelligence in colonoscopy ‐ Now on the market. What's next? , 2020, Journal of gastroenterology and hepatology.

[76]  S. Park,et al.  Methodologic Guide for Evaluating Clinical Performance and Effect of Artificial Intelligence Technology for Medical Diagnosis and Prediction. , 2018, Radiology.

[77]  R. Valori,et al.  Causes of Post-colonoscopy Colorectal Cancers Based on World Endoscopy Organization System of Analysis. , 2020, Gastroenterology.

[78]  S. Wexner,et al.  Inter‐observer and intra‐observer variability in the diagnosis of dysplasia in patients with inflammatory bowel disease: correlation of pathological and endoscopic findings , 2014, Colorectal disease : the official journal of the Association of Coloproctology of Great Britain and Ireland.

[79]  C. Hassan,et al.  Performance of a new integrated computer-assisted system (CADe/CADx) for detection and characterization of colorectal neoplasia , 2021, Endoscopy.

[80]  S. Kudo,et al.  Comparison of Targeted vs Random Biopsies for Surveillance of Ulcerative Colitis-Associated Colorectal Cancer. , 2016, Gastroenterology.