Skip to content
View anindox8's full-sized avatar
πŸ’Š
πŸ’Š

Organizations

@DIAGNijmegen

Block or report anindox8

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Please don't include any personal information such as legal names or email addresses. Maximum 100 characters, markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse

Pinned Loading

  1. DIAGNijmegen/prostateMR_3D-CAD-csPCa DIAGNijmegen/prostateMR_3D-CAD-csPCa Public archive

    Hierarchical probabilistic 3D U-Net, with attention mechanisms (β€”π˜ˆπ˜΅π˜΅π˜¦π˜―π˜΅π˜ͺ𝘰𝘯 𝘜-π˜•π˜¦π˜΅, π˜šπ˜Œπ˜™π˜¦π˜΄π˜•π˜¦π˜΅) and a nested decoder structure with deep supervision (β€”π˜œπ˜•π˜¦π˜΅++). Built in TensorFlow 2.5. Configured for v…

    Python 39 7

  2. Deep-Segmentation-Features-for-Weakly-Supervised-3D-Disease-Classification-in-Chest-CT Deep-Segmentation-Features-for-Weakly-Supervised-3D-Disease-Classification-in-Chest-CT Public

    Weakly supervised 3D classification of multi-disease chest CT scans using multi-resolution deep segmentation features via dual-stage CNN architecture (DenseVNet, 3D Residual U-Net).

    Python 32 3

  3. Ensemble-of-Multi-Scale-CNN-for-Dermatoscopy-Classification Ensemble-of-Multi-Scale-CNN-for-Dermatoscopy-Classification Public

    Fully supervised binary classification of skin lesions from dermatoscopic images using an ensemble of diverse CNN architectures (EfficientNet-B6, Inception-V3, SEResNeXt-101, SENet-154, DenseNet-16…

    Jupyter Notebook 45 16

  4. Atlas-Based-3D-Brain-Segmentation-in-T1-MRI Atlas-Based-3D-Brain-Segmentation-in-T1-MRI Public

    Fully supervised, multi-class 3D brain segmentation in T1 MRI, using atlas-based segmentation algorithms (label propagation, tissue models, Expectation-Maximization algorithm).

    Batchfile 7 4

  5. Multi-Color-Space-Features-for-Dermatoscopy-Classification Multi-Color-Space-Features-for-Dermatoscopy-Classification Public

    Fully supervised binary classification of skin lesions from dermatoscopic images using multi-color space moments/texture features and Support Vector Machines/Random Forests.

    Jupyter Notebook 7 2

  6. Region-Proposal-for-Mass-Detection-in-Mammograms Region-Proposal-for-Mass-Detection-in-Mammograms Public

    Unsupervised region proposal and supervised patch extraction algorithms for extracting candidate 2D ROIs to train SVM/CNN classifiers, for mass detection in mammograms.

    Jupyter Notebook 2 1