Trained models
This repository contains pre-trained models for 3D neuroimaging data processing. These models can be used for their original purpose or for transfer learning on a new task. For example, a pre-trained brain extraction network can be trained on a tumor-labeling task. Models are included based on <org-name>/<model-name>/<version>/weights
structure. Some models (such as kwyk and braingen) have various types which means there was different structural chracteristic during training that lead to different trained models. Therefor, the path for these models are changes as <org-name>/<model-name>/<version>/<model-type>/weights
Instructions to add a model can be find here.
Neuronets organization
These models were trained using the Nobrainer framework, which wraps TensorFlow/Keras.
- brainy: 3D U-Net brain extraction model
- ams: automated meningioma segmentation model
- kwyk: bayesian neural network for brain parcellation and uncertainty estimation (Tensorflow/estimator)
- braingen: progressive generation of T1-weighted brain MR scans
UCL organization
- SynthSeg: 3D brain MRI segmentation model (Tensorflow/keras)
- SynthSR: 3D brain MRI (& CT) super resolution model (Tensorflow/keras)
DDIG Organization
- SynthMorph: contrast agnostic registration model (Tensorflow/keras)
- VoxelMorph: learning based registration model (Tensorflow/keras)
Laboratory for Computational Neuroscience (lcn) Organization
- ParcNet: cortical parcellation model (pytorch)
Downloading models
This repository is a datalad dataset. To get the models, you need to install datalad
and datalad-osf
to your environment.
datalad clone https://github.com/neuronets/trained-models
cd trained-models
git-annex enableremote osf-storage
to download all the models,
datalad get -s osf-storage .
to get a specific model you can pass the path of the model to the datalad get
.
datalad get -s osf-storage neuronets/ams/0.1.0/weights/meningioma_T1wc_128iso_v1.h5
datalad get -s osf-storage neuronets/braingen/0.1.0
Using models for inference or training
You can use the Nobrainer-zoo toolbox for inference and re-training of the models without installing any additional model dependencies.
Loading models for training with python and tensorflow/keras
You can use tensorflow.keras
module to load a tensorflow model.
import tensorflow as tf
model = tf.keras.models.load_model("neuronets/brainy/0.1.0/brain-extraction-unet-128iso-model.h5")
model.fit(...)
You can see a transfer learning example here, and an example of brain MRI generation using braingen models can be find here.
All models are available for re-training or transfer learning purposes except the kwyk model. The kwyk model weights are not available in a tf2 keras format (We are working to make it available in near future). The kwyk models can be loaded with tf.saved_model.load
.
model = tf.saved_model.load(model_path)
predictor = model.signatures["serving_default"]
or you can use nobrainer predict_by_estimator function. check an example here.