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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
StatusRecruiting
Study typeObservational
SummaryAccurate 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 participateInclusion 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.
Ages18 Years
SexAll
Accepts healthy volunteersYes
Lead sponsorGuangdong Provincial People's Hospital
LocationsGuangzhou, Guangdong, China
Start date2025-07-28
NCT IDNCT07447973
Official listinghttps://clinicaltrials.gov/study/NCT07447973

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