# Optimized network inference for immune diseased single cells

**Authors:** Elena Merino Tejero, Dwain Jude Vaz, Guillermo Barturen, María Rivas-Torrubia, Marta E. Alarcón-Riquelme, Walter Kolch, David Matallanas

PMC · DOI: 10.3389/fimmu.2025.1597862 · 2025-07-24

## TL;DR

This paper introduces ONIDsc, a new method for analyzing immune cell networks in SLE patients, identifying key genes linked to immune regulation.

## Contribution

ONIDsc improves network inference by optimizing lambda penalty and outperforms existing methods in reconstructing immune cell gene networks.

## Key findings

- ONIDsc outperforms SINGE and other models in network inference using ChIP-seq and ChIP-chip gold standards.
- ONIDsc identified four gene transcripts (MXRA8, NADK, POLR3GL, UBXN11) specific to SLE patients across multiple immune cell types.
- The identified genes are linked to nicotinate metabolism, RNA transcription, protein phosphorylation, and Rho GTPase signaling pathways.

## Abstract

Mathematical models are powerful tools that can be used to advance our understanding of complex diseases. Autoimmune disorders such as systemic lupus erythematosus (SLE) are highly heterogeneous and require high-resolution mechanistic approaches. In this work, we present ONIDsc, a single-cell regulatory network inference model designed to elucidate immune-related disease mechanisms in SLE.

ONIDsc enhances SINGE’s Generalized Lasso Granger (GLG) causality model used in Single-cell Inference of Networks using Granger ensembles (SINGE) by finding the optimal lambda penalty with cyclical coordinate descent. We benchmarked ONIDsc against existing models and found it consistently outperforms SINGE and other methods when gold standards are generated from chromatin immunoprecipitation sequencing (ChIP-seq) and ChIP-chip experiments. We then applied ONIDsc to three large-scale datasets, one from control patients and the two from SLE patients, to reconstruct networks common to different immune cell types.

ONIDsc identified four gene transcripts: matrix remodelling-associated protein 8 (MXRA8), nicotinamide adenine dinucleotide kinase (NADK), RNA Polymerase III Subunit GL (POLR3GL) and Ultrabithorax Domain Protein 11 (UBXN11) in CD4+ T-lymphocytes, CD8+ Regulatory T-Lymphocytes, CD8+ T-lymphocytes 1 and Low Density Granulocytes that were present in SLE patients but absent in controls.

These genes were significantly related to nicotinate metabolism, ribonucleic acid (RNA) transcription, protein phosphorylation and the Rho family GTPase (RND) 1-3 signaling pathways, previously associated with immune regulation. Our results highlight ONIDsc’s potential as a powerful tool for dissecting physiological and pathological processes in immune cells using high-dimensional single-cell data.

## Linked entities

- **Genes:** MXRA8 (matrix remodeling associated 8) [NCBI Gene 54587], NADK (NAD kinase) [NCBI Gene 65220], POLR3GL (RNA polymerase III subunit GL) [NCBI Gene 84265], UBXN11 (UBX domain protein 11) [NCBI Gene 91544]
- **Diseases:** systemic lupus erythematosus (MONDO:0007915), SLE (MONDO:0007915)

## Full-text entities

- **Genes:** CD8A (CD8 subunit alpha) [NCBI Gene 925] {aka CD8, CD8alpha, IMD116, Leu2, p32}, POLR3GL (RNA polymerase III subunit GL) [NCBI Gene 84265] {aka RPC32HOM, SOFM, flj32422}, CD4 (CD4 molecule) [NCBI Gene 920] {aka CD4mut, IMD79, Leu-3, OKT4D, T4}, MXRA8 (matrix remodeling associated 8) [NCBI Gene 54587] {aka ASP3}, UBXN11 (UBX domain protein 11) [NCBI Gene 91544] {aka COA-1, PP2243, SOC, SOCI, UBXD5}, NADK (NAD kinase) [NCBI Gene 65220] {aka NADK1, dJ283E3.1}
- **Diseases:** Autoimmune disorders (MESH:D001327), SLE (MESH:D008180)
- **Chemicals:** nicotinate (MESH:D009525)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

9 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12328306/full.md

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Source: https://tomesphere.com/paper/PMC12328306