Statistical significance for genomewide studies

University of Washington · Institute for Integrative and Experimental Genomics · +1 more institution

PubMed
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Abstract

With the increase in genomewide experiments and the sequencing of multiple genomes, the analysis of large data sets has become commonplace in biology. It is often the case that thousands of features in a genomewide data set are tested against some null hypothesis, where a number of features are expected to be significant. Here we propose an approach to measuring statistical significance in these genomewide studies based on the concept of the false discovery rate. This approach offers a sensible balance between the number of true and false positives that is automatically calibrated and easily interpreted. In doing so, a measure of statistical significance called the q value is associated with each tested…

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10,051
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76.28
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100%
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Authors

2

Topics & keywords

Keywords
  • False positive paradox
  • False discovery rate
  • False positives and false negatives
  • False positive rate
  • Statistical hypothesis testing
  • Multiple comparisons problem
  • Genome
  • Computer science
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