JPRN-UMIN000042569
Not yet recruiting
Phase 1
Development of an artificial intelligence system using deep learning to indicate anatomical landmarks during laparoscopic gastrectomy - Development of an artificial intelligence system using deep learning to indicate anatomical landmarks during laparoscopic gastrectomy
Department of Gastroenterological and Pediatric Surgery, Oita University Faculty of Medicine0 sites10 target enrollmentNovember 26, 2020
Overview
- Phase
- Phase 1
- Intervention
- Not specified
- Conditions
- Not specified
- Sponsor
- Department of Gastroenterological and Pediatric Surgery, Oita University Faculty of Medicine
- Enrollment
- 10
- Status
- Not yet recruiting
- Last Updated
- 2 years ago
Overview
Brief Summary
No summary available.
Investigators
Eligibility Criteria
Inclusion Criteria
- Not provided
Exclusion Criteria
- •1\) Severe mental disease. 2\) Continuous systemic steroid therapy. 3\) History of myocardial infarction or unstable angina pectoris within 6 months. 4\) Uncontrollable hypertension. 5\) Uncontrollable diabetes mellitus or administration of insulin. 6\) Severe respiratory disease requiring continuous oxygen therapy.
Outcomes
Primary Outcomes
Not specified
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