koriavinash1/Fetal-Brain-Segmentation
Fully automatic technique for fetal brain segmentation using deep convolutional neural network
This tool helps medical imaging specialists automatically identify and outline the fetal brain in MRI scans. You input raw fetal MRI images, and it outputs a segmented image where the fetal brain is clearly delineated. It's designed for radiologists or ultrasound technicians who need to quickly and accurately measure or analyze fetal brain development.
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Use this if you need a quick, automated way to segment the fetal brain from 2D MRI scans for diagnostic or research purposes.
Not ideal if you require highly specialized, interactive manual annotation or if you're working with 3D MRI volumes rather than 2D slices.
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13
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6
Language
Jupyter Notebook
License
MIT
Category
Last pushed
Aug 05, 2018
Commits (30d)
0
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