scDeepCluster, a model-based deep embedded clustering for Single Cell RNA-seq data. See details in our paper: "Clustering single-cell RNA-seq data with a model-based deep learning approach" published in Nature Machine Intelligence https://www.nature.com/articles/s42256-019-0037-0.
Requirement:
Python --- 3.6.3
Keras --- 2.1.4
Tensorflow --- 1.1.0
Scanpy --- 1.0.4
Nvidia Tesla K80 (12G)
Usage:
python scDeepCluster.py --data_file data.h5 --n_clusters 10
set data_file to the destination to the data (stored in h5 format, with two components X and Y, where X is the cell by gene count matrix and Y is the true labels), n_clusters to the number of clusters.
The final output reports the clustering performance, here is an example on 10X PBMC scRNA-seq data:
Final: ACC= 0.8100, NMI= 0.7736, ARI= 0.7841