IAmSuyogJadhav/3d-mri-brain-tumor-segmentation-using-autoencoder-regularization
Keras implementation of the paper "3D MRI brain tumor segmentation using autoencoder regularization" by Myronenko A. (https://arxiv.org/abs/1810.11654).
This project helps medical imaging researchers or clinicians automatically identify and outline brain tumors in 3D MRI scans. You input a 3D MRI scan of a brain, and it outputs a segmented map highlighting the tumorous regions. It's designed for those who need precise, automated tumor boundary detection from medical images.
375 stars. No commits in the last 6 months.
Use this if you are a researcher or medical professional working with 3D MRI brain scans and need a tool to segment (outline) brain tumors automatically for analysis or treatment planning.
Not ideal if you need a solution that is actively maintained and updated, as this project is no longer under active development since 2020.
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MIT
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Last pushed
Nov 01, 2021
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