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A systematic performance evaluation of clustering methods for single-cell RNA-seq data
2020
F1000Research
Subpopulation identification, usually via some form of unsupervised clustering, is a fundamental step in the analysis of many single-cell RNA-seq data sets. This has motivated the development and application of a broad range of clustering methods, based on various underlying algorithms. Here, we provide a systematic and extensible performance evaluation of 14 clustering algorithms implemented in R, including both methods developed explicitly for scRNA-seq data and more general-purpose methods.
doi:10.12688/f1000research.15666.3
fatcat:qgaflssg3fc5xdkpgkwohmypru