De novo prediction of drug targets and candidates by chemical similarity-guided network-based inference
This repo contains the scripts for reproducing the results showcased in Vigil, Schuller (2022) "De novo prediction of drug targets and candidates by chemical similarity-guided network-based inference".
- Requirements
- Repository description
- Usage
- Contact
Python requirements:
python
>= 3.9matplotlib
>= 3.5.1seaborn
>= 0.11.2scikit-learn
>= 1.0.2pandas
>= 1.4.1tqdm
>= 4.62.3
Julia requirements:
julia
>= 1.7.2CUDA.jl
>= 3.8.5ArgParse.jl
>= 1.1.4NamedArrays.jl
>= 0.9.6
Other:
bash
jupyter-notebook
This repository has the following organization:
.
├── bin # Scripts to run predictions
│ └── predict
│ ├── 10fold
│ ├── loo
│ └── timesplit
├── data # Datasets used in study
│ ├── chembl
│ ├── wu2017
│ └── yamanishi2008
├── results # Results obtained
│ ├── 10fold
│ ├── 10fold_dti
│ ├── loo
│ └── timesplit
└── src # Scripts needed to run predictions
├── evaluate
├── modules
└── predict
├── 10fold
├── loo
└── timesplit
For each directory, a corresponding README is available for further information
- Clone this repo (for help see this tutorial).
- Scripts used to generate predictions are kept here.
- Scripts needed for predictions are kept here.
- Datasets used in study are kept here.
Any question, suggestion, advice and/or help needed to reproduce results, please contact Carlos Vigil Vásquez @ [email protected].