xfetus/midl2023
:page_facing_up: Short paper to Medical Imaging with Deep Learning 2023 (#MIDL2023) > https://arxiv.org/abs/2304.03941
This project helps medical researchers and AI developers overcome the scarcity of clinical data for training AI models in prenatal care. It takes existing, limited fetal ultrasound images and uses advanced AI to generate many new, realistic synthetic images of fetal brains. This enables researchers to develop and test AI methods more robustly for assessing fetal health, particularly in identifying rare conditions.
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Use this if you need to expand a limited dataset of fetal ultrasound images to train or validate AI models for prenatal health assessment.
Not ideal if you require only real patient data for your analysis or if you are working with ultrasound images of other body parts or conditions outside of fetal brain imaging.
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Jul 17, 2023
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