deep_texture_histology: Deep Texture Representations for Cancer Histology Images
Project description
Overview
deep_texture_representation is a python library to calculate deep texture representations (DTRs) for histology images (Cell Reports, 2022). Fucntions for plotting the distribution of DTRs and content-based image retrieval are also implemented.
Installation
The package can be installed with pip:
$ pip install deeptexture
Prerequisites
Python version 3.6 or newer.
numpy >=1.20.3
tensorflow >=2.1.0
joblib >=0.13.2
Pillow >=8.0.1
nmslib >=2.0.6
matplotlib >= 3.5.0
scikit-learn >=1.1.0
seaborn >=0.10.1
pandas >=1.1.0
Recommended Environment
- OS
Linux
Mac
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