Medical Doctor & ph.d.-student
Sebastian Dinesen
Department of Ophthalmology
Projekt styring | ||
Projekt status | Open | |
Data indsamlingsdatoer | ||
Start | 01.10.2021 | |
Slut | 30.09.2024 | |
Aims and Outcomes Deep-learning (DL) is a form of artificial intelligence based on folded neural networks and the gold-standard method for automatic image analysis. We aim to (A1) build a DL-model able to detect sight-threatening active proliferative DR (PDR), and (A2) to validate this on a multi-ethnic cohort from Singapore. Further, we will (B1) build a DL-model from fundus photos that can predict the development of PDR, diabetic nephropathy or -neuropathy and cardiovascular disease (CVD), as
Background Diabetic retinopathy (DR) is the most common complication to diabetes. A Danish national screening programme has been implemented, but manual grading of retinal images is a strenuous task, and automatic detection of patients in need of treatment would improve diagnostic accuracy and free up health-care resources.
Patients with diabetes who attended the Danish screening program for diabetic retinopathy.
Fundus photographies