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ITEA is the Eureka Cluster on software innovation
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Quantib deep-learning framework

Project
16016 STARLIT
Type
New standard
Description
  • The Quantib deep-learning framework facilitates the straightforward training of neural networks by 1) Pre-processing all input images to a consistent image spacing necessary for training, 2) Augmenting the input images to increase variability, 3) Allowing the user to set arbitrary hyperparameters for training, including the used optimizers, learning rate and number of epochs for training
  • The trained neural networks, created in the previous step, can be applied to input images to predict the corresponding labels
Contact
Jorrit Glastra
Email
j.glastra@quantib.com
Technical features

Input(s):

  • Medical images
  • Associated label images

Main feature(s):

  • The Quantib deep-learning framework facilitates straightforward training of neural networks
  • Perform model inference on provided medical images
  • The architecture of the framework allows easy extension of functionality as well as adapting new network topologies

Output(s):

  • A trained neural network
  • Resulting label image after applying model inference
Integration constraints
  • Various Python libraries are required to use the deep-learning framework, including NumPy, SimpleITK, Keras and TensorFlow
  • Because model training is computationally expensive, high quality Graphics Processing Units (GPU’s) are necessary
  • The training of neural networks requires large amounts of (consistent) medical image data
Targeted customer(s)

Researchers / developers that have access to medical images seeking to develop AI solutions.

Conditions for reuse

Licensing

Confidentiality
Public
Publication date
04-09-2020
Involved partners
Quantib BV (NLD)