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引用次数: 0
摘要
免疫学研究传统上依赖蛋白质组学来评估单个免疫细胞,而单细胞 RNA 测序技术的出现为这一研究带来了革命性的变化。计算免疫学家在分析这些数据集方面发挥着至关重要的作用,他们超越了传统的蛋白质标记鉴定,对细胞表型及其功能作用有了更详细的了解。最近的技术进步允许同时测量单细胞内的多种细胞成分--转录组、蛋白质组、染色质、表观遗传修饰和代谢物,包括组织内的空间环境。这就产生了复杂的多尺度数据集,其中可以包括来自同一细胞的多模态测量,也可以包括配对和非配对模态的混合测量。现代机器学习(ML)技术可以整合多种 "omics "数据,而无需对每种模式进行广泛的独立建模。本综述重点介绍应用于免疫学研究的 ML 整合方法的最新进展。我们强调了这些方法在创建多尺度数据集合统一表征方面的重要性,特别是对于单细胞和空间剖析技术。最后,我们讨论了这些综合方法所面临的挑战,以及它们将如何有助于开发多尺度研究的通用坐标框架,从而加速计算免疫学领域的研究和发现。
Machine learning integrative approaches to advance computational immunology.
The study of immunology, traditionally reliant on proteomics to evaluate individual immune cells, has been revolutionized by single-cell RNA sequencing. Computational immunologists play a crucial role in analysing these datasets, moving beyond traditional protein marker identification to encompass a more detailed view of cellular phenotypes and their functional roles. Recent technological advancements allow the simultaneous measurements of multiple cellular components-transcriptome, proteome, chromatin, epigenetic modifications and metabolites-within single cells, including in spatial contexts within tissues. This has led to the generation of complex multiscale datasets that can include multimodal measurements from the same cells or a mix of paired and unpaired modalities. Modern machine learning (ML) techniques allow for the integration of multiple "omics" data without the need for extensive independent modelling of each modality. This review focuses on recent advancements in ML integrative approaches applied to immunological studies. We highlight the importance of these methods in creating a unified representation of multiscale data collections, particularly for single-cell and spatial profiling technologies. Finally, we discuss the challenges of these holistic approaches and how they will be instrumental in the development of a common coordinate framework for multiscale studies, thereby accelerating research and enabling discoveries in the computational immunology field.
期刊介绍:
Genome Medicine is an open access journal that publishes outstanding research applying genetics, genomics, and multi-omics to understand, diagnose, and treat disease. Bridging basic science and clinical research, it covers areas such as cancer genomics, immuno-oncology, immunogenomics, infectious disease, microbiome, neurogenomics, systems medicine, clinical genomics, gene therapies, precision medicine, and clinical trials. The journal publishes original research, methods, software, and reviews to serve authors and promote broad interest and importance in the field.