The quality preserving database: a computational framework for encouraging collaboration, enhancing power and controlling false discovery.

IEEE/ACM Trans. Comput. Biology Bioinform.(2011)

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摘要
The common scenario in computational biology in which a community of researchers conduct multiple statistical tests on one shared database gives rise to the multiple hypothesis testing problem. Conventional procedures for solving this problem control the probability of false discovery by sacrificing some of the power of the tests. We suggest a scheme for controlling false discovery without any power loss by adding new samples for each use of the database and charging the user with the expenses. The crux of the scheme is a carefully crafted pricing system that fairly prices different user requests based on their demands while keeping the probability of false discovery bounded. We demonstrate this idea in the context of HIV treatment research, where multiple researchers conduct tests on a repository of HIV samples.
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关键词
multiple statistical test,controlling false discovery,hiv sample,computational framework,shared database,quality preserving database,multiple hypothesis,problem control,multiple researcher,enhancing power,prices different user request,false discovery,power loss,hiv treatment research,multiple hypothesis testing,family wise error rate,pricing,collaboration,microorganisms,database management systems,bioinformatics,statistical analysis,multiple comparisons,computational biology,databases,testing,statistical test,bonferroni method,indexing terms,probability
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