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DLTK: State of the Art Reference Implementations for Deep Learning on Medical Images

18 November 2017
Nick Pawlowski
S. Ktena
M. J. Lee
Bernhard Kainz
Daniel Rueckert
Ben Glocker
Martin Rajchl
    LM&MA
    MedIm
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Abstract

We present DLTK, a toolkit providing baseline implementations for efficient experimentation with deep learning methods on biomedical images. It builds on top of TensorFlow and its high modularity and easy-to-use examples allow for a low-threshold access to state-of-the-art implementations for typical medical imaging problems. A comparison of DLTK's reference implementations of popular network architectures for image segmentation demonstrates new top performance on the publicly available challenge data "Multi-Atlas Labeling Beyond the Cranial Vault". The average test Dice similarity coefficient of 81.581.581.5 exceeds the previously best performing CNN (75.775.775.7) and the accuracy of the challenge winning method (79.079.079.0).

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