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Comparative Analysis of Association Networks Using Single-Cell RNA Sequencing Data Reveals Perturbation-Relevant Gene Signatures

30 Pages Posted: 5 Oct 2023 Publication Status: Published

See all articles by Nima Nouri

Nima Nouri

Sanofi - Massachusetts

Giorgio Gaglia

Sanofi - Massachusetts; Harvard Medical School - Department of Pathology

Hamid Mattoo

Sanofi - Massachusetts

Emanuele de Rinaldis

Sanofi - Massachusetts

Virginia Savova

Sanofi - Massachusetts

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Abstract

Single-cell RNA sequencing (scRNA-seq) data has elevated our understanding of systemic perturbations to organismal physiology at the individual cell level. However, despite the rich information content of scRNA-seq data, the relevance of genes to a perturbation is still commonly assessed through differential expression analysis. This approach provides a one-dimensional perspective of the transcriptomic landscape, risking the oversight of tightly controlled genes characterized by modest changes in expression but with profound downstream effects. We present GENIX (Gene Expression Network Importance eXamination), a novel platform for constructing gene association networks, equipped with an innovative network-based comparative model to uncover condition-relevant genes. To demonstrate the effectiveness of GENIX, we analyze influenza vaccine-induced immune responses in peripheral blood mononuclear cells (PBMCs) collected from recovered COVID-19 patients, shedding light on the mechanistic underpinnings of gender differences. Our methodology offers a promising avenue to identify genes relevant to perturbation responses in biological systems, expanding the scope of response signature discovery beyond differential gene expression analysis.

Keywords: Single cell RNA sequencing, Signature Identification, Gene Program Discovery, Gene Network Association

Suggested Citation

Nouri, Nima and Gaglia, Giorgio and Mattoo, Hamid and de Rinaldis, Emanuele and Savova, Virginia, Comparative Analysis of Association Networks Using Single-Cell RNA Sequencing Data Reveals Perturbation-Relevant Gene Signatures. Available at SSRN: https://ssrn.com/abstract=4591662 or http://dx.doi.org/10.2139/ssrn.4591662
This version of the paper has not been formally peer reviewed.

Nima Nouri

Sanofi - Massachusetts ( email )

Giorgio Gaglia

Sanofi - Massachusetts ( email )

Harvard Medical School - Department of Pathology ( email )

75 Francis St.
Boston, MA 02115
United States

Hamid Mattoo

Sanofi - Massachusetts

Emanuele De Rinaldis

Sanofi - Massachusetts ( email )

Virginia Savova (Contact Author)

Sanofi - Massachusetts ( email )

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