CI

At a glance

ClinicalIndex Comparison Record
N/ACompleted· 9,825 enrolled
Drug / intervention
Multimodal Machine Learning Program for Auxiliary Diagnosis of Eye Diseasesother
Likely dose
Not stated in record
Structured eligibility isn't available for this trial yet — see the full criteria in the Eligibility tab below.

Standardized by ClinicalIndex from the ClinicalTrials.gov record · verify against the source.

Search/NCT05930444
NCT05930444N/ACompleted

Multimodal Machine Learning for Auxiliary Diagnosis of Eye Diseases Using ChatGPT-based Natural Language Processing and Image Processing Techniques

Eye & ENT Hospital of Fudan University·observational·Posted Jul 5, 2023·Updated Nov 15, 2024

In Brief

An observational study evaluating Multimodal Machine Learning Program for Auxiliary Diagnosis of Eye Diseases for Eye Diseases. Completed, enrolled 9,825 participants across 3 sites.

Detailed Summary

With rapid advancements in natural language processing and image processing, there is a growing potential for intelligent diagnosis utilizing chatGPT trained through high-quality ophthalmic consultation. Furthermore, by incorporating patient selfies, eye examination photos, and other image analysis techniques, the diagnostic capabilities can be further enhanced. The multi-center study aims to develop an auxiliary diagnostic program for eye diseases using multimodal machine learning techniques and evaluate its diagnostic efficacy in real-world outpatient clinics.

Study Details

Study Typeobservational
Allocation--
Masking--
Primary Purpose--
ConditionsEye Diseases
CountriesChina

Timeline

N/ACompletedFinished
202420252026
First PostedJul 5, 2023
Enrollment StartJul 21, 2023
Primary CompletionMar 10, 2024
Study CompletionMar 31, 2024
TodayJul 2, 2026
Enrollment to primary: 8 monthsPosted 3.0 years ago

Interventions

Multimodal Machine Learning Program for Auxiliary Diagnosis of Eye Diseasesother

Patients presenting with eye-related chief complaints initially complete a mobile phone application. This application utilizes patient medical history and relevant images (such as selfies and photos from eye examinations) to provide intelligent diagnosis. The diagnosis remains undisclosed to the patients. Subsequently, patients seek medical attention and undergo clinical examination by a skilled clinician. The clinical diagnosis is subsequently reviewed by a second experienced clinician. If the diagnoses align, it is considered the gold standard. In cases of discrepancy, the consensus reached by the two clinicians becomes the gold standard.