4.7 Article

PsiNorm: a scalable normalization for single-cell RNA-seq data

Journal

BIOINFORMATICS
Volume 38, Issue 1, Pages 164-172

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bioinformatics/btab641

Keywords

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Funding

  1. Programma per Giovani Ricercatori Rita Levi Montalcini - Italian Ministry of Education, University and Research
  2. National Cancer Institute of the National Institutes of Health [2U24CA180996]
  3. Italian Association for Cancer Research (AIRC) [IG21837]
  4. Giovanni Armenise-Harvard Foundation
  5. ERC Starting Grant (MetEpiStem)
  6. Chan Zuckerberg Initiative DAF, an advised fund of Silicon Valley Community Foundation [CZF2019-002443]

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Single-cell RNA sequencing provides a comprehensive view of tissue and organism development, but also presents computational challenges that require accurate and efficient solutions. In this study, the method PsiNorm based on power-law Pareto distribution is proposed as a highly scalable normalization method. Benchmarking against other methods shows that PsiNorm performs well in terms of cluster identification and scalability.
Motivation: Single-cell RNA sequencing (scRNA-seq) enables transcriptome-wide gene expression measurements at single-cell resolution providing a comprehensive view of the compositions and dynamics of tissue and organism development. The evolution of scRNA-seq protocols has led to a dramatic increase of cells throughput, exacerbating many of the computational and statistical issues that previously arose for bulk sequencing. In particular, with scRNA-seq data all the analyses steps, including normalization, have become computationally intensive, both in terms of memory usage and computational time. In this perspective, new accurate methods able to scale efficiently are desirable. Results: Here, we propose PsiNorm, a between-sample normalization method based on the power-law Pareto distribution parameter estimate. Here, we show that the Pareto distribution well resembles scRNA-seq data, especially those coming from platforms that use unique molecular identifiers. Motivated by this result, we implement PsiNorm, a simple and highly scalable normalization method. We benchmark PsiNorm against seven other methods in terms of cluster identification, concordance and computational resources required. We demonstrate that PsiNorm is among the top performing methods showing a good trade-off between accuracy and scalability. Moreover, PsiNorm does not need a reference, a characteristic that makes it useful in supervised classification settings, in which new out-of-sample data need to be normalized.

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