PT - JOURNAL ARTICLE AU - Hector Roux de BĂ©zieux AU - Kelly Street AU - Stephan Fischer AU - Koen Van den Berge AU - Rebecca Chance AU - Davide Risso AU - Jesse Gillis AU - John Ngai AU - Elizabeth Purdom AU - Sandrine Dudoit TI - Improving replicability in single-cell RNA-Seq cell type discovery with <kbd>Dune</kbd> AID - 10.1101/2020.03.03.974220 DP - 2020 Jan 01 TA - bioRxiv PG - 2020.03.03.974220 4099 - http://biorxiv.org/content/early/2020/03/04/2020.03.03.974220.short 4100 - http://biorxiv.org/content/early/2020/03/04/2020.03.03.974220.full AB - Single-cell transcriptome sequencing (scRNA-Seq) has allowed many new types of investigations at unprecedented and unique levels of resolution. Among the primary goals of scRNA-Seq is the classification of cells into potentially novel cell types. Many approaches build on the existing clustering literature to develop tools specific to single-cell applications. However, almost all of these methods rely on heuristics or user-supplied parameters to control the number of clusters identified. This affects both the resolution of the clusters within the original dataset as well as their replicability across datasets. While many recommendations exist to select these tuning parameters, most of them are quite ad hoc. In general, there is little assurance that any given set of parameters will represent an optimal choice in the ever-present trade-off between cluster resolution and replicability. For instance, it may be the case that another set of parameters will result in more clusters that are also more replicable, or in fewer clusters that are also less replicable.Here, we propose a new method called Dune for optimizing the trade-off between the resolution of the clusters and their replicability across datasets. Our method takes as input a set of clustering results on a single dataset, derived from any set of clustering algorithms and associated tuning parameters, and iteratively merges clusters within partitions in order to maximize their concordance between partitions. As demonstrated on a variety of scRNA-Seq datasets from different platforms, Dune outperforms existing techniques, that rely on hierarchical merging for reducing the number of clusters, in terms of replicability of the resultant merged clusters. It provides an objective approach for identifying replicable consensus clusters most likely to represent common biological features across multiple datasets.