# Primer on machine learning applications in brain immunology

**Authors:** Niklas Binder, Ashkan Khavaran, Roman Sankowski

PMC · DOI: 10.3389/fbinf.2025.1554010 · 2025-04-17

## TL;DR

This review explains how machine learning is helping scientists better understand immune cells in the brain using advanced data analysis techniques.

## Contribution

The paper introduces how deep learning and foundation models are being applied to analyze complex brain immunology data.

## Key findings

- Single-cell and spatial technologies reveal immune cell diversity and organization in the brain.
- Machine learning improves data integration and analysis of complex immune datasets.
- New models help identify gene expression patterns and potential therapeutic targets in brain diseases.

## Abstract

Single-cell and spatial technologies have transformed our understanding of brain immunology, providing unprecedented insights into immune cell heterogeneity and spatial organisation within the central nervous system. These methods have uncovered complex cellular interactions, rare cell populations, and the dynamic immune landscape in neurological disorders. This review highlights recent advances in single-cell “omics” data analysis and discusses their applicability for brain immunology. Traditional statistical techniques, adapted for single-cell omics, have been crucial in categorizing cell types and identifying gene signatures, overcoming challenges posed by increasingly complex datasets. We explore how machine learning, particularly deep learning methods like autoencoders and graph neural networks, is addressing these challenges by enhancing dimensionality reduction, data integration, and feature extraction. Newly developed foundation models present exciting opportunities for uncovering gene expression programs and predicting genetic perturbations. Focusing on brain development, we demonstrate how single-cell analyses have resolved immune cell heterogeneity, identified temporal maturation trajectories, and uncovered potential therapeutic links to various pathologies, including brain malignancies and neurodegeneration. The integration of single-cell and spatial omics has elucidated the intricate cellular interplay within the developing brain. This mini-review is intended for wet lab biologists at all career stages, offering a concise overview of the evolving landscape of single-cell omics in the age of widely available artificial intelligence.

## Full-text entities

- **Diseases:** neurodegeneration (MESH:D019636), neurological disorders (MESH:D009461), brain malignancies (MESH:D001932)

## Figures

2 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12043695/full.md

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Source: https://tomesphere.com/paper/PMC12043695