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The Tsallis generalized entropy enhances the interpretation of transcriptomics datasets

Author

Listed:
  • Nicolas Dérian
  • Hang-Phuong Pham
  • Djamel Nehar-Belaid
  • Nicolas Tchitchek
  • David Klatzmann
  • Vicaut Eric
  • Adrien Six

Abstract

Background: Identifying differentially expressed genes between experimental conditions is still the gold-standard approach to interpret transcriptomic profiles. Alternative approaches based on diversity measures have been proposed to complement the interpretation of such datasets but are only used marginally. Methods: Here, we reinvestigated diversity measures, which are commonly used in ecology, to characterize mice pregnancy microenvironments based on a public transcriptome dataset. Mainly, we evaluated the Tsallis entropy function to explore the potential of a collection of diversity measures for capturing relevant molecular event information. Results: We demonstrate that the Tsallis entropy function provides additional information compared to the traditional diversity indices, such as the Shannon and Simpson indices. Depending on the relative importance given to the most abundant transcripts based on the Tsallis entropy function parameter, our approach allows appreciating the impact of biological stimulus on the inter-individual variability of groups of samples. Moreover, we propose a strategy for reducing the complexity of transcriptome datasets using a maximation of the beta diversity. Conclusions: We highlight that a diversity-based analysis is suitable for capturing complex molecular events occurring during physiological events. Therefore, we recommend their use through the Tsallis entropy function to analyze transcriptomics data in addition to differential expression analyses.

Suggested Citation

  • Nicolas Dérian & Hang-Phuong Pham & Djamel Nehar-Belaid & Nicolas Tchitchek & David Klatzmann & Vicaut Eric & Adrien Six, 2022. "The Tsallis generalized entropy enhances the interpretation of transcriptomics datasets," PLOS ONE, Public Library of Science, vol. 17(4), pages 1-16, April.
  • Handle: RePEc:plo:pone00:0266618
    DOI: 10.1371/journal.pone.0266618
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    References listed on IDEAS

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    1. Ying Ma & Shiquan Sun & Xuequn Shang & Evan T. Keller & Mengjie Chen & Xiang Zhou, 2020. "Integrative differential expression and gene set enrichment analysis using summary statistics for scRNA-seq studies," Nature Communications, Nature, vol. 11(1), pages 1-13, December.
    2. Nicolas Dérian & Bertrand Bellier & Hang Phuong Pham & Eliza Tsitoura & Dorothea Kazazi & Christophe Huret & Penelope Mavromara & David Klatzmann & Adrien Six, 2016. "Early Transcriptome Signatures from Immunized Mouse Dendritic Cells Predict Late Vaccine-Induced T-Cell Responses," PLOS Computational Biology, Public Library of Science, vol. 12(3), pages 1-17, March.
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