Wednesday, May 21, 2025
BodyGPS Paper
"We introduce a new type of foundational model for parsing human anatomy in medical images that works for different modalities. It supports supervised or unsupervised
training and can perform matching, registration, classification, or segmentation with or without user interaction.
We achieve this by training a neural network estimator that
maps query locations to atlas coordinates via regression.
Efficiency is improved by sparsely sampling the input, enabling response times of less than 1 ms without additional
accelerator hardware. We demonstrate the utility of the algorithm in both CT and MRI modalities."
https://arxiv.org/abs/2505.07744
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