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A Randomized Controlled Multicenter Study of Artificial Intelligence Assisted Digestive Endoscopy

Zhejiang University logo

Zhejiang University

Status

Unknown

Conditions

Artificial Intelligence

Treatments

Behavioral: Careful examination during endoscopic procedures to identify lesions

Study type

Observational

Funder types

Other

Identifiers

NCT04071678
研2019-262

Details and patient eligibility

About

Digestive endoscopy center of the second affiliated hospital of medical college of zhejiang university and engineers of naki medical co., ltd. in Hong Kong independently developed an ai-assisted diagnostic model of digestive endoscopy in the early stage, namely the deep learning model.The deep learning model through the early stage of the study, is able to identify lesions of digest tract.The sensitivity for the diagnosis of some diseases, such as colon polyps, is 99%. On the one hand, this auxiliary diagnostic model can guide endoscopic examination for beginners; on the other hand, it can improve the detection rate of lesions and reduce the rate of missed diagnosis; on the other hand, the overall operating efficiency of the endoscopic center is improved, which is conducive to the quality control of endoscopic examination. Now the AI-assisted diagnostic model has been further improved, and it is planned to carry out further clinical verification in the digestive endoscopy center of our hospital. It is connected to the endoscopic system of our hospital and used simultaneously with the existing image-text system of endoscopy to compare the practicability, sensitivity and specificity of AI-assisted diagnosis model in the diagnosis of digestive tract diseases, and focus on the quality control of endoscopic examination.

Full description

Digestive endoscopy center of the second affiliated hospital of medical college of zhejiang university and engineers of naki medical co., ltd. in Hong Kong independently developed an ai-assisted diagnostic model of digestive endoscopy in the early stage, namely the deep learning model。The deep learning model through the early stage of the study, is able to identify lesions of colon polyps, colorectal cancer, colorectal apophysis lesions, colonic diverticulum, ulcerative colitis, gastric ulcer, gastric polyps, submucosal uplift, reflux esophagitis, esophageal ulcer, esophageal polyp, esophageal erosion, esophageal ectopic gastric mucosa and esophagus varicosity, esophageal cancer, esophageal papilloma, etc.The sensitivity for the diagnosis of some diseases, such as colon polyps, is 99%. On the one hand, this auxiliary diagnostic model can guide endoscopic examination for beginners; on the other hand, it can improve the detection rate of lesions and reduce the rate of missed diagnosis; on the other hand, the overall operating efficiency of the endoscopic center is improved, which is conducive to the quality control of endoscopic examination. Now the AI-assisted diagnostic model has been further improved, and it is planned to carry out further clinical verification in the digestive endoscopy center of our hospital. It is connected to the endoscopic system of our hospital and used simultaneously with the existing image-text system of endoscopy to compare the practicability, sensitivity and specificity of AI-assisted diagnosis model in the diagnosis of digestive tract diseases, and focus on the quality control of endoscopic examination.

Enrollment

3,600 estimated patients

Sex

All

Ages

18+ years old

Volunteers

No Healthy Volunteers

Inclusion criteria

  • Voluntarily sign the informed consent for this study
  • Stable vital signs
  • Over 18 years old
  • Patients requiring painless gastroenteroscopy for various reasons

Exclusion criteria

  • Unable or unwilling to sign a consent form, or unable to follow research procedures
  • have contraindications to painless gastroenteroscopy
  • Vital signs are unstable
  • The lesions have been identified by gastroenteroscopy in other hospitals, which is to further confirm the patients who come to our hospital for endoscopic examination
  • Endoscopic treatment, such as polypectomy, pylorus narrow dilatation and so on

Trial design

3,600 participants in 3 patient groups

A: Model A
Description:
Mode A was silent mode, back-to-back with endoscopic physicians to simultaneously display endoscopic images and record video, but did not interfere with the operation of endoscopic physicians.After the operation, the AI model automatically generates an endoscopy report, which is compared with the official report given by the endoscopy doctor in the endoscopy system. If the difference is large, video verification shall be played back immediately or endoscopic examination shall be performed again before the patient wakes up
Treatment:
Behavioral: Careful examination during endoscopic procedures to identify lesions
B: Model B
Description:
Mode B is a delayed reminder mode. If the lesion is found during the operation, it is required to be moved to the middle of the visual field within 5 seconds. If the lesion has been detected by the AI model (the lesion has been circled in the picture), but the doctor does not move the lesion to the middle of the visual field within 5 seconds, the AI system will give an alarm prompt
Treatment:
Behavioral: Careful examination during endoscopic procedures to identify lesions
C: Model C
Description:
Mode C is a real-time reminder mode, which is an alarm prompt when the focus is captured in the visual field.
Treatment:
Behavioral: Careful examination during endoscopic procedures to identify lesions

Trial contacts and locations

1

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Central trial contact

Wang J An, Dr; Cai J Ting, Dr

Data sourced from clinicaltrials.gov

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