Please also have a look at our brand new omics-to-omics DL freamwork 👀: OmiTrans
OmiEmbed: A Unified Multi-task Deep Learning Framework for Multi-omics Data
Xiaoyu Zhang (x.zhang18@imperial.ac.uk)
Data Science Institute, Imperial College London
OmiEmbed is a unified framework for deep learning-based omics data analysis, which supports:
- Multi-omics integration
- Dimensionality reduction
- Omics embedding learning
- Tumour type classification
- Phenotypic feature reconstruction
- Survival prediction
- Multi-task learning for aforementioned tasks
Paper Link: https://doi.org/10.3390/cancers13123047
- CPU or NVIDIA GPU + CUDA CuDNN
- Python 3.6+
- Python Package Manager
- Python Packages
- PyTorch 1.2+
- TensorBoard 1.10+
- Tables 3.6+
- scikit-survival 0.6+
- prefetch-generator 1.0+
 
- Git 2.7+
- Clone the repo
git clone https://github.com/zhangxiaoyu11/OmiEmbed.git
cd OmiEmbed- Install the dependencies
- For conda users
 conda env create -f environment.yml conda activate omiembed - For pip users
 pip install -r requirements.txt 
- Train and test using the built-in sample dataset with the default settings
python train_test.py- Check the output files
cd checkpoints/test/- Visualise the metrics and losses
tensorboard --logdir=tb_log --bind_allIf you use this code in your research, please cite our paper.
@Article{OmiEmbed2021,
    AUTHOR = {Zhang, Xiaoyu and Xing, Yuting and Sun, Kai and Guo, Yike},
    TITLE = {OmiEmbed: A Unified Multi-Task Deep Learning Framework for Multi-Omics Data},
    JOURNAL = {Cancers},
    VOLUME = {13},
    YEAR = {2021},
    NUMBER = {12},
    ARTICLE-NUMBER = {3047},
    ISSN = {2072-6694},
    DOI = {10.3390/cancers13123047}
}Please also have a look at our brand new omics-to-omics DL freamwork 👀: OmiTrans
This source code is licensed under the MIT license.