Multicenter Observational Study of Multimodal AI for Upper GI Mesenchymal Tumor Diagnosis

Study Purpose

This study develops a multimodal AI model using endoscopic ultrasound, white-light endoscopy, and clinical information to support the diagnosis of upper GI mesenchymal tumors and the risk stratification of gastric GISTs.

Recruitment Criteria

Accepts Healthy Volunteers

Healthy volunteers are participants who do not have a disease or condition, or related conditions or symptoms

No
Study Type

An interventional clinical study is where participants are assigned to receive one or more interventions (or no intervention) so that researchers can evaluate the effects of the interventions on biomedical or health-related outcomes.


An observational clinical study is where participants identified as belonging to study groups are assessed for biomedical or health outcomes.


Searching Both is inclusive of interventional and observational studies.

Observational
Eligible Ages 18 Years and Over
Gender All
More Inclusion & Exclusion Criteria

Inclusion Criteria:

  • - Age ≥ 18 years old.
  • - Patients with an upper gastrointestinal subepithelial lesion (SEL) identified by white-light endoscopy and who have completed an endoscopic ultrasound (EUS) examination.
  • - Patients with a histopathological diagnosis of GIST confirmed by surgical or endoscopic resection, or other SELs confirmed by surgical resection, EUS-guided sampling, or other biopsy techniques.
  • - EUS image quality meets the following quality control standards.
1. Equipment requirements: Olympus EU-ME2/ME1 processor (Olympus Medical Systems Corp., Tokyo, Japan); radial EUS scope (GF-UE260/GF-UE240; Olympus, Tokyo, Japan) or linear EUS scope (GF-UCT260/GF-UCT240; Olympus, Tokyo, Japan); miniature probe (UM2R/3R; Olympus, Tokyo, Japan); Pentax ARIETTA 850 processor (Pentax, Tokyo, Japan); radial EUS scope (EG-3670URK, Pentax, Tokyo, Japan); linear EUS scope (EG-3870UT, Pentax, Tokyo, Japan); Fujifilm SU-8000 or SU-9000 processor; linear EUS scope (EG-580UT, Fujifilm, Tokyo, Japan); radial EUS scope (EG-580UR, Fujifilm, Tokyo, Japan) 2. EUS images clearly showing the lesion and surrounding tissue characteristics (at least 5 images or video); must include at least one image of the maximum lesion diameter, one image showing the layer of origin, and one image demonstrating the growth pattern (intraluminal/extraluminal) 3. EUS images must not contain artificial annotations, such as measurement scales, biopsy needles, Doppler signals, or elastography overlays. 4. Image resolution must be at least 448 × 448 pixels.
  • - WLE (white-light endoscopy) image quality meets the following standards: images must clearly show the lesion location, mucosal features, and margins; at least one close-up and one distant view.
  • - Complete clinical data and histopathological reports must be available.

Exclusion Criteria:

  • - Age < 18 years old.
  • - Absolute contraindications for EUS examination, history of gastric surgery, pregnancy, severe comorbidities, or known allergy to anesthetic agents.
  • - EUS examination terminated prematurely due to esophageal stricture, obstruction, large space-occupying lesions, rapid changes in heart rate or respiratory rate, patient intolerance, or excessive residual food.
  • - EUS image quality does not meet the required quality control standards.
- Pathological specimens do not meet diagnostic requirements: insufficient biopsy tissue (only R0 resection specimens are accepted for the GIST group), or incomplete immunohistochemical staining (missing CD117/CD34/DOG-1 expression report for the GIST group) - Pathological results indicate that the lesion is a metastatic tumor originating from another site

Trial Details

Trial ID:

This trial id was obtained from ClinicalTrials.gov, a service of the U.S. National Institutes of Health, providing information on publicly and privately supported clinical studies of human participants with locations in all 50 States and in 196 countries.

NCT07078136
Phase

Phase 1: Studies that emphasize safety and how the drug is metabolized and excreted in humans.

Phase 2: Studies that gather preliminary data on effectiveness (whether the drug works in people who have a certain disease or condition) and additional safety data.

Phase 3: Studies that gather more information about safety and effectiveness by studying different populations and different dosages and by using the drug in combination with other drugs.

Phase 4: Studies occurring after FDA has approved a drug for marketing, efficacy, or optimal use.

Lead Sponsor

The sponsor is the organization or person who oversees the clinical study and is responsible for analyzing the study data.

Huazhong University of Science and Technology
Principal Investigator

The person who is responsible for the scientific and technical direction of the entire clinical study.

N/A
Principal Investigator Affiliation N/A
Agency Class

Category of organization(s) involved as sponsor (and collaborator) supporting the trial.

Other
Overall Status Recruiting
Countries China
Conditions

The disease, disorder, syndrome, illness, or injury that is being studied.

Submucosal Tumor, Gastrointestinal Stromal Tumor (GIST), Leiomyoma, Schwannoma
Additional Details

This is a multicenter, observational study designed to evaluate the diagnostic performance of a multimodal artificial intelligence (AI) model for the classification of upper gastrointestinal subepithelial lesions (SELs) and risk stratification of gastric gastrointestinal stromal tumors (gGISTs). The study combines retrospective image data for training and validation with prospectively recruited cases for testing. Endoscopic ultrasound (EUS) images, white-light endoscopy (WLE) images, and relevant clinical data will be collected according to strict image quality control criteria. The multimodal AI model integrates these inputs using a multi-branch fusion strategy. A cross-validation trial will be conducted using prospectively recruited patients' data from multiple centers to compare the diagnostic and predictive performance of endoscopists with and without AI assistance for both lesion classification and risk stratification. According to existing literature, no multimodal AI model has yet reported diagnostic performance for classifying SELs or for risk stratification of gastric gGISTs. It is assumed that the multimodal AI model will achieve a diagnostic accuracy of 95% for classifying upper gastrointestinal SELs and 95% for gGIST risk stratification. In comparison, the diagnostic accuracy of endoscopists is approximately 73.3%-75% for differentiating GIST from non-GIST and 72.4%-78.9% for risk stratification of gGISTs . GISTs account for about 67-68% of all lesions . Using a two-sided confidence interval with α = 0.05 and β = 0.2, and considering a 20% potential dropout rate, the minimum sample size required for prospective SEL classification is 65 cases, and 88 gGIST cases for risk stratification. Since the risk stratification task requires a larger sample size and GISTs are the common target of both tasks, the final planned sample size is 130 patients with upper GI SELs, which meets the statistical requirements for all primary endpoints. The study team will screen patients based on the inclusion and exclusion criteria, ensure that all required examinations are completed to confirm eligibility, and record pre-treatment test results. All prospective participants will provide written informed consent before any study-related examinations. This study is purely observational. No additional interventions will be performed on participants, nor will any additional costs be incurred. Patients' access to optimal diagnostic or treatment options will not be affected. The primary potential risk is the breach of patient privacy; the research team will establish a strict data security and monitoring plan and inform participants that their data will be used for clinical research purposes. This study is purely observational. No additional interventions will be performed on participants, nor will any additional costs be incurred. Patients' access to optimal diagnostic or treatment options will not be affected. The primary potential risk is the breach of patient privacy; the research team will establish a strict data security and monitoring plan and inform participants that their data will be used for clinical research purposes. Each enrolled participant will undergo diagnostic assessment by both the multimodal AI model and expert endoscopists. The AI model and expert interpretation will be blinded to each other. Final diagnosis will be confirmed by histopathology. Diagnostic performance will be compared using paired analysis. All statistical tests will be two-sided, and differences will be considered statistically significant at P < 0.05. Continuous variables will be described as mean ± standard deviation. Categorical variables will be presented as counts and percentages.

  • (1) Diagnostic Performance: The diagnostic performance of endoscopists and the AI model will be compared using sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), accuracy, and area under the curve (AUC).
F1-score (harmonic mean) and balanced accuracy will be calculated to address class imbalance (e.g., GIST vs.#46; other lesions).
  • (2) Continuous Data: Comparisons with baseline values will be conducted using paired t-tests, ANOVA, or rank-sum tests as appropriate.
  • (3) Categorical Data: Group comparisons will use Chi-square tests (including CMH Chi-square test) or Fisher's exact test.
  • (4) Baseline Comparability: Demographic and baseline characteristics will be compared using independent t-tests or Chi-square tests to assess group balance.
  • (5) Effectiveness Analysis: The primary effectiveness endpoint is the diagnostic accuracy for GI subepithelial lesions.
The difference in proportions and Youden index will be compared using the approximate normal Z test or Chi-square test with center effect control.
  • (6) Software: All statistical analyses will be performed using SPSS version 26.0.

Arms & Interventions

Arms

: All Participants

All enrolled patients with upper gastrointestinal subepithelial lesions confirmed by histopathology. Each participant will undergo standard diagnostic evaluation and independent multimodal AI prediction and expert endoscopist diagnosis.

Interventions

Diagnostic Test: - Multimodal AI Model

Patients' endoscopic images, EUS images, and clinical data will be analyzed by a multimodal AI model for lesion classification and GIST risk stratification.

Diagnostic Test: - Expert Endoscopist Assessment

Endoscopic ultrasound images will be interpreted by experienced endoscopists for comparison with the AI model.

Contact a Trial Team

If you are interested in learning more about this trial, find the trial site nearest to your location and contact the site coordinator via email or phone. We also strongly recommend that you consult with your healthcare provider about the trials that may interest you and refer to our terms of service below.

International Sites

Wuhan, Hubei, China

Status

Recruiting

Address

Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology

Wuhan, Hubei, 430030

Site Contact

Bin Cheng

[email protected]

13986097542

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