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DiseaseCapsule

Predicting the prevalence of complex genetic diseases from individual genotype profiles using capsule networks

Installation and dependencies

  • Linux OS; GPU hardware support
  • Python >= v3.7
  • PyTorch v1.5.0 (GPU)
  • TensorFlow v2.1.0 (GPU)
  • sklearn v0.22.2

No need to install the source code. Dependencies can be installed with a few minutes.

Running code

One could see pipeline.sh for the general workflow of analysis in this study.

Our proposed DiseaseCapsule:

  • capsule.GPU.py

Other approaches for comparison:

  • MLP.GPU.py
  • CNN.GPU.py
  • basicML.py (used for Gene-PCA)
  • basicML_allpca.py (used for All-PCA)
  • classifier_PRS.py

Potentially diease-related core genes and non-additive genes selection:

  • select_core_genes_for_classification.ipynb
  • select_nonadditive_genes.py

Experimental data

The ALS data used in this study has been deposited at dbGaP database (Accession: phs003146.v1.p1). Synthetic data can be seen here: https://drive.google.com/open?id=1Mya0YdT4Hf9wUfbcX6y5mubEFWky6Jg-