Binder Niklas, Khavaran Ashkan, Sankowski Roman
Institute of Neuropathology, Faculty of Medicine, University of Freiburg, Freiburg, Germany.
Front Bioinform. 2025 Apr 17;5:1554010. doi: 10.3389/fbinf.2025.1554010. eCollection 2025.
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.
单细胞技术和空间技术改变了我们对脑免疫学的理解,为中枢神经系统内免疫细胞的异质性和空间组织提供了前所未有的见解。这些方法揭示了复杂的细胞相互作用、罕见细胞群体以及神经疾病中的动态免疫格局。本综述重点介绍了单细胞“组学”数据分析的最新进展,并讨论了它们在脑免疫学中的适用性。适用于单细胞组学的传统统计技术在细胞类型分类和识别基因特征方面至关重要,克服了日益复杂的数据集带来的挑战。我们探讨了机器学习,特别是自动编码器和图神经网络等深度学习方法,如何通过增强降维、数据整合和特征提取来应对这些挑战。新开发的基础模型为揭示基因表达程序和预测基因扰动提供了令人兴奋的机会。以脑发育为重点,我们展示了单细胞分析如何解决免疫细胞异质性、确定时间成熟轨迹,并揭示与包括脑恶性肿瘤和神经退行性变在内的各种病理的潜在治疗联系。单细胞组学和空间组学的整合阐明了发育中大脑内复杂的细胞相互作用。这篇小型综述面向处于职业生涯各个阶段的湿实验室生物学家,简要概述了在广泛应用人工智能时代单细胞组学不断发展的格局。