Pilot Study on Deep Learning in the Eye
NCT04665102 · Status: UNKNOWN · Type: OBSERVATIONAL · Enrollment: 120
Last updated 2021-01-07
Summary
Deep learning allows you to classify images using a self-learning algorithm. Transfer learning builds on an existing self-learning algorithm to enable image classification with fewer images. In this study, this technique will be applied to different image modalities in different syndromes. Retrospective study design.
Conditions
- Central Serous Chorioretinopathy
- Diabetic Retinopathy
- Cataract
Interventions
- OTHER
-
Image classification using deep learning algorithm
Image classification using deep learning algorithm
Sponsors & Collaborators
-
CRG UZ Brussel
lead OTHER
Eligibility
- Min Age
- 18 Years
- Max Age
- 100 Years
- Sex
- ALL
- Healthy Volunteers
- Yes
Timeline & Regulatory
- Start
- 2021-02-01
- Primary Completion
- 2021-12-01
- Completion
- 2022-12-01
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