Hedeler C, Paton N W, Behnke J M, Bradley J E, Hamshere M G, Else K J
School of Computer Science, The University of Manchester, Oxford Road, Manchester M13 9PL, UK.
Parasitology. 2006 Feb;132(Pt 2):157-67. doi: 10.1017/S0031182005008796.
A full understanding of the immune system and its responses to infection by different pathogens is important for the development of anti-parasitic vaccines. A growing number of large-scale experimental techniques, such as microarrays, are being used to gain a better understanding of the immune system. To analyse the data generated by these experiments, methods such as clustering are widely used. However, individual applications of these methods tend to analyse the experimental data without taking publicly available biological and immunological knowledge into account systematically and in an unbiased manner. To make best use of the experimental investment, to benefit from existing evidence, and to support the findings in the experimental data, available biological information should be included in the analysis in a systematic manner. In this review we present a classification of tasks that shows how experimental data produced by studies of the immune system can be placed in a broader biological context. Taking into account available evidence, the classification can be used to identify different ways of analysing the experimental data systematically. We have used the classification to identify alternative ways of analysing microarray data, and illustrate its application using studies of immune responses in mice to infection with the intestinal nematode parasites Trichuris muris and Heligmosomoides polygyrus.
全面了解免疫系统及其对不同病原体感染的反应对于抗寄生虫疫苗的研发至关重要。越来越多的大规模实验技术,如微阵列技术,正被用于更好地理解免疫系统。为了分析这些实验产生的数据,聚类等方法被广泛应用。然而,这些方法的个别应用往往在不系统且无偏见地考虑公开可用的生物学和免疫学知识的情况下分析实验数据。为了充分利用实验投入,从现有证据中获益,并支持实验数据中的发现,应将可用的生物学信息系统地纳入分析。在本综述中,我们提出了一种任务分类,展示了免疫系统研究产生的实验数据如何能置于更广泛的生物学背景中。考虑到现有证据,该分类可用于识别系统分析实验数据的不同方法。我们已使用该分类来识别分析微阵列数据的替代方法,并通过小鼠对肠道线虫寄生虫毛首鞭形线虫和多房棘球绦虫感染的免疫反应研究来说明其应用。