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MarsGT: A Python library for rare cell identification (Internal testing only)

Project description

Title:EmitGCL: Early Metastatic cell Identification Tool based on Graph Contrastive Learning

Note: This project is for internal testing purposes only. Do not use it in a production environment.

MarsGT, We developed EmitGCL, a graph contrastive learning model that integrates metastatic knowledge to detect subtle differences in cell groups at primary and metastatic sites.

Installation

System Requirements

  • Python 3.8.0 or higher

Installation Steps

  • Install the required dependencies using pip:
pip install -r requirements.txt
  • use pip to install EmitGCL:
pip install EmitGCL

Project details


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