Efficient cytometry analysis with FlowSOM in Python boosts interoperability with other single-cell tools

利用 Python 中的 FlowSOM 进行高效的细胞计数分析,可增强与其他单细胞工具的互操作性。

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Abstract

MOTIVATION: We describe a new Python implementation of FlowSOM, a clustering method for cytometry data. RESULTS: This implementation is faster than the original version in R, better adapted to work with single-cell omics data including integration with current single-cell data structures and includes all the original visualizations, such as the star and pie plot. AVAILABILITY AND IMPLEMENTATION: The FlowSOM Python implementation is freely available on GitHub: https://github.com/saeyslab/FlowSOM_Python.

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