Artificial variables help to avoid over-clustering in single-cell RNA sequencing

Computational Methods Computational Methods
R&D R&D
Alex K. Shalek Alex K. Shalek
Andrew Navia Andrew Navia
Michelle Ramseier Michelle Ramseier
Peter Winter Peter Winter

DenAdel et al.▾ DenAdel, A., Ramseier, M. L., Navia, A. W., Shalek, A. K., Raghavan, S., Winter, P. S., Amini, A. P., Crawford, L.

AJHG

March, 2025

Abstract

Standard single-cell RNA sequencing (scRNA-seq) pipelines nearly always include unsupervised clustering as a key step in identifying biologically distinct cell types. A follow-up step in these pipelines is to test for differential expression between the identified clusters. When algorithms over-cluster, downstream analyses can produce misleading results. In this work, we present “recall” (calibrated clustering with artificial variables), a method for protecting against over-clustering by controlling for the impact of reusing the same data twice when performing differential expression analysis, commonly known as “double dipping.” Importantly, our approach can be applied to a wide range of clustering algorithms. Using real and simulated data, we show that recall provides state-of-the-art clustering performance and can rapidly analyze large-scale scRNA-seq studies, even on a personal laptop.