Knowledge Discovery Department, Institute for Infocomm Research, 119613 Singapore.
Expert Rev Clin Immunol. 2005 May;1(1):145-57. doi: 10.1586/1744666X.1.1.145.
Immunology research is characterized by the production of increasingly vast amounts of data, fuelled by genomics and proteomics projects and large-scale screening of pathogen- and antigen-host interactions. The need to store, manage and analyze this rapidly growing resource of experimental, clinical and epidemiologic data has given rise to the field known as immunoinformatics. Immunoinformatics represents computational methods and resources that are used in the study of immune function. It lies at the intersection of experimental and computational sciences and encompasses domain-specific databases, computational models and strategies drawn from artificial intelligence. For example, computational or artificial intelligence models are increasingly being used to simulate and improve our understanding of immune system behavior, such as antigen processing and presentation, as well as for analysis of host and pathogen genomes. Systemic models focus on simulating the behavior of cells or whole organs and can be used for applications such as tracking the course of infection or optimization of immunization protocols. Immunomics, the large-scale screening of immune processes, which includes powerful immunoinformatic tools, offers great promise for future translation of basic immunology research advances into clinical practice. Immunoinformatics is central to the research fields of immunogenomics, immunoproteomics and computational vaccinology.
免疫学研究的特点是产生越来越多的数据,这些数据是由基因组学和蛋白质组学项目以及对病原体和抗原-宿主相互作用的大规模筛选推动的。需要存储、管理和分析这个快速增长的实验、临床和流行病学数据资源,这就产生了免疫信息学领域。免疫信息学代表了用于研究免疫功能的计算方法和资源。它位于实验和计算科学的交叉点,包含来自人工智能的特定于领域的数据库、计算模型和策略。例如,计算或人工智能模型越来越多地被用于模拟和改善我们对免疫系统行为的理解,例如抗原处理和呈递,以及宿主和病原体基因组的分析。系统模型侧重于模拟细胞或整个器官的行为,可用于跟踪感染过程或优化免疫接种方案等应用。免疫组学是对免疫过程进行大规模筛选,其中包括强大的免疫信息学工具,为将基础免疫学研究进展转化为临床实践提供了巨大的前景。免疫信息学是免疫基因组学、免疫蛋白质组学和计算疫苗学研究领域的核心。