--- title: RetinaGAN emoji: 😻 colorFrom: gray colorTo: red sdk: streamlit sdk_version: 1.19.0 app_file: app.py pinned: false license: mit --- # RetinaGAN Code Repository for: [**High-Fidelity Diabetic Retina Fundus Image Synthesis from Freestyle Lesion Maps**](https://opg.optica.org/abstract.cfm?uri=boe-14-2-533) ## About RetinaGAN a two-step process for generating photo-realistic retinal Fundus images based on artificially generated or free-hand drawn semantic lesion maps. ![](assets/RetinaGAN_pipeline.png) StyleGAN is modified to be conditional in to synthesize pathological lesion maps based on a specified DR grade (i.e., grades 0 to 4). The DR Grades are defined by the International Clinical Diabetic Retinopathy (ICDR) disease severity scale; no apparent retinopathy, {mild, moderate, severe} Non-Proliferative Diabetic Retinopathy (NPDR), and Proliferative Diabetic Retinopathy (PDR). The output of the network is a binary image with seven channels instead of class colors to avoid ambiguity. ![](assets/cStyleGAN.png) The generated label maps are then passed through SPADE, an image-to-image translation network, to turn them into photo-realistic retina fundus images. The input to the network are one-hot encoded labels. ![](assets/GauGAN.png) ## Usage Download model checkpoints (see [here](checkpoints/README.md) for details) and run the model via Streamlit. Start the app via `streamlit run web_demo.py`. ## Example Images Example retina Fundus images synthesised from Conditional StyleGAN generated lesion maps. Top row: synthetically generated lesion maps based on DR grade by Conditional StyleGAN. Other rows: synthetic Fundus images generated by SPADE. Images are generated sequentially with random seed and are **not** cherry picked. | grade 0 | grade 1 | grade 2 | grade 3 | grade 4 | |--------------------------------------------------------------|--------------------------------------------------------------|--------------------------------------------------------------|--------------------------------------------------------------|--------------------------------------------------------------| | ![](assets/sample_images/mask_class_0_batch_0.png) | ![](assets/sample_images/mask_class_1_batch_0.png) | ![](assets/sample_images/mask_class_2_batch_0.png) | ![](assets/sample_images/mask_class_3_batch_0.png) | ![](assets/sample_images/mask_class_4_batch_0.png) | | ![](assets/sample_images/image_class_0_batch_0_sample_0.png) | ![](assets/sample_images/image_class_1_batch_0_sample_0.png) | ![](assets/sample_images/image_class_2_batch_0_sample_0.png) | ![](assets/sample_images/image_class_3_batch_0_sample_0.png) | ![](assets/sample_images/image_class_4_batch_0_sample_0.png) | | ![](assets/sample_images/image_class_0_batch_0_sample_1.png) | ![](assets/sample_images/image_class_1_batch_0_sample_1.png) | ![](assets/sample_images/image_class_2_batch_0_sample_1.png) | ![](assets/sample_images/image_class_3_batch_0_sample_1.png) | ![](assets/sample_images/image_class_4_batch_0_sample_1.png) | ## Cite this work If you find this work useful for your research, give us a kudos by citing: ``` @article{hou2023high, title={High-fidelity diabetic retina fundus image synthesis from freestyle lesion maps}, author={Hou, Benjamin}, journal={Biomedical Optics Express}, volume={14}, number={2}, pages={533--549}, year={2023}, publisher={Optica Publishing Group} } ```