Multimodal Deep Learning Model for Multi-task Diagnosis and Triage Suggestions of Ophthalm
Accurate and comprehensive interpretation of anterior segment diseases from slit-lamp and smartphone photographs remains a clinical challenge due to the limited specificity and structure of existing Artificial Intelligence tools. The purpose of this international, multicenter clinical trial is to developed and validate
| Condition(s) | Anterior Segment Diseases |
|---|---|
| Status | Recruiting |
| Study type | Observational |
| Summary | Accurate and comprehensive interpretation of anterior segment diseases from slit-lamp and smartphone photographs remains a clinical challenge due to the limited specificity and structure of existing Artificial Intelligence tools. The purpose of this international, multicenter clinical trial is to developed and validated an agent-based framework that integrates vision-language models and large language models to enhance the diagnostic workflow of anterior segment diseases. |
| Who can participate | Inclusion Criteria: 1. Informed consent obtained; 2. Participants should be sufficiently able to read, write, and understand Chinese or English; 3. For normal participants: individuals should have no concerns related to their eyes. 4. For participants with eye-related chief complaints: individuals should have specific concerns or issues related to their eyes. Exclusion Criteria: 1. Incomplete clinical data to support final diagnosis; 2. Patients who, in the opinion of the attending physician or clinical study staff, are too medically unstable to participate in the study safely. |
| Ages | 18 Years |
| Sex | All |
| Accepts healthy volunteers | Yes |
| Lead sponsor | Guangdong Provincial People's Hospital |
| Locations | Guangzhou, Guangdong, China |
| Start date | 2025-07-28 |
| NCT ID | NCT07447973 |
| Official listing | https://clinicaltrials.gov/study/NCT07447973 |