DLTK

Medical imaging model builder

A toolkit for building and prototyping deep learning models for medical image analysis

Deep Learning Toolkit for Medical Image Analysis

GitHub

1k stars
101 watching
404 forks
Language: Python
last commit: about 3 years ago
Linked from 1 awesome list

cnndata-sciencedeep-learningdeep-neural-networksdltkdltk-model-zoomachine-learningmedicalmedical-image-processingmedical-imagingmlneural-networkneural-networksneuroimagingpythontensorflow

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