A guide to modern statistical analysis of immunological data

被引:107
作者
Genser, Bernd [1 ,2 ]
Cooper, Philip J. [3 ,4 ]
Yazdanbakhsh, Maria [5 ]
Barreto, Mauricio L. [2 ]
Rodrigues, Laura C. [2 ]
机构
[1] London Sch Hyg & Trop Med, Dept Epidemiol & Populat Hlth, London WC1, England
[2] Univ Fed Bahia, Inst Saude Coletiva, Salvador, BA, Brazil
[3] St Georges Univ London, Ctr Infect, London, England
[4] Univ San Francisco, Inst Microbiol, Quito, Ecuador
[5] Leiden Univ, Med Ctr, Dept Parasitol, Leiden, Netherlands
关键词
D O I
10.1186/1471-2172-8-27
中图分类号
R392 [医学免疫学]; Q939.91 [免疫学];
学科分类号
100102 ;
摘要
Background: The number of subjects that can be recruited in immunological studies and the number of immunological parameters that can be measured has increased rapidly over the past decade and is likely to continue to expand. Large and complex immunological datasets can now be used to investigate complex scientific questions, but to make the most of the potential in such data and to get the right answers sophisticated statistical approaches are necessary. Such approaches are used in many other scientific disciplines, but immunological studies on the whole still use simple statistical techniques for data analysis. Results: The paper provides an overview of the range of statistical methods that can be used to answer different immunological study questions. We discuss specific aspects of immunological studies and give examples of typical scientific questions related to immunological data. We review classical bivariate and multivariate statistical techniques (factor analysis, cluster analysis, discriminant analysis) and more advanced methods aimed to explore causal relationships (path analysis/structural equation modelling) and illustrate their application to immunological data. We show the main features of each method, the type of study question they can answer, the type of data they can be applied to, the assumptions required for each method and the software that can be used. Conclusion: This paper will help the immunologist to choose the correct statistical approach for a particular research question.
引用
收藏
页数:15
相关论文
共 50 条
[1]  
[Anonymous], 2005, INTRO NONPARAMETRIC
[2]   THE STATISTICAL-ANALYSIS OF DATA FROM IMMUNOEPIDEMIOLOGICAL STUDIES [J].
BENNETT, S ;
RILEY, EM .
JOURNAL OF IMMUNOLOGICAL METHODS, 1992, 146 (02) :229-239
[3]   BCG-induced increase in interferon-gamma response to mycobacterial antigens and efficacy of BCG vaccination in Malawi and the UK: two randomised controlled studies [J].
Black, GF ;
Weir, RE ;
Floyd, S ;
Bliss, L ;
Warndorff, DK ;
Crampin, AC ;
Ngwira, B ;
Sichali, L ;
Nazareth, B ;
Blackwell, JM ;
Branson, K ;
Chaguluka, SD ;
Donovan, L ;
Jarman, E ;
King, E ;
Fine, PEM ;
Dockrell, HM .
LANCET, 2002, 359 (9315) :1393-1401
[4]  
Brown H., 1999, Applied mixed models in medicine
[5]   In silico models for cellular and molecular immunology:: successes, promises and challenges [J].
Chakraborty, AK ;
Dustin, ML ;
Shaw, AS .
NATURE IMMUNOLOGY, 2003, 4 (10) :933-936
[6]   The central roles of obesity-associated dyslipidaemia, endothelial activation and cytokines in the Metabolic Syndrome - an analysis by structural equation modelling [J].
Chan, JCN ;
Cheung, JCK ;
Stehouwer, CDA ;
Emeis, JJ ;
Tong, PCY ;
Ko, GTC ;
Yudkin, JS .
INTERNATIONAL JOURNAL OF OBESITY, 2002, 26 (07) :994-1008
[7]  
Cohen J., 1988, POWERSTATISTICALSCIE, DOI 10.4324/9780203771587
[8]   Human infection with Ascaris lumbricoides is associated with suppression of the interleukin-2 response to recombinant cholera toxin B subunit following vaccination with the live oral cholera vaccine CVD 103-HgR [J].
Cooper, PJ ;
Chico, M ;
Sandoval, C ;
Espinel, I ;
Guevara, A ;
Levine, MM ;
Griffin, GE ;
Nutman, TB .
INFECTION AND IMMUNITY, 2001, 69 (03) :1574-1580
[9]  
De Groot AS, 2007, CURR OPIN DRUG DISC, V10, P332
[10]   New tools, new approaches and new ideas for vaccine development [J].
De Groot, Anne S. ;
Moise, Leonard .
EXPERT REVIEW OF VACCINES, 2007, 6 (02) :125-127