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Validating endoscopic ultrasound assisted system based on machine learning for the discrimination of gastric submucosal tumors less than 2 cm under endoscopy: a prospective, multi-center clinical trial

Validating endoscopic ultrasound assisted system based on machine learning for the discrimination of gastric submucosal tumors less than 2 cm under endoscopy: a prospective, multi-center clinical trial

Status
Active, not recruiting
Phases
Early Phase 1
Study type
Observational
Source
ChiCTR
Registry ID
ChiCTR2100049731
Enrollment
Unknown
Registered
2021-08-08
Start date
2021-08-03
Completion date
Unknown
Last updated
2023-03-20

For informational purposes only — not medical advice. Sourced from public registries and may not reflect the latest updates. Terms

Conditions

gastric submucosal tumors

Interventions

Gold Standard:The gastrointestinal stromal tumor (GIST) pathology results are defined as the positive group, and non-GIST was defined as the negative group.
model

Sponsors

Zhongshan Hospital, Fudan University
Lead Sponsor

Eligibility

Sex/Gender
All
Age
18 Years to 80 Years

Inclusion criteria

Inclusion criteria: 1. Aged more than 18 years old, less than or equal to 80 years old; 2. General endoscopic diagnosis of gastric submucosal tumor elective endoscopic surgery, preoperative ultrasound endoscopic examination, and the size of gastric submucosal tumor <2cm; 3. Have complete postoperative pathological data; 4. The image data is complete.

Exclusion criteria

Exclusion criteria: 1. Patients with upper gastrointestinal emergency examination (treatment) due to hematemesis, abdominal pain, etc.; 2. The American Society of Anesthesiologists (ASA) classification is greater than III; 3. Pregnancy and lactation; 4. The patients or their families cannot understand the conditions and objectives of this study.

Design outcomes

Primary

MeasureTime frame
Accuracy of GIST diagnosis;

Countries

China

Contacts

Public ContactZhou Pinghong

Zhongshan Hospital, Fudan Universit

cai.mingyan@zs-hospital.sh.cn+86 13681971063

Outcome results

None listed

Source: ChiCTR (via WHO ICTRP) · Data processed: Feb 4, 2026