Compositional uncertainty should not be ignored in high-throughput sequencing data analysis

Volume: 45, Issue: 4, Pages: 73 - 87
Published: Jul 28, 2016
Abstract
High throughput sequencing generates sparse compositional data, yet these datasets are rarely analyzed using a compositional approach. In addition, the variation inherent in these datasets is rarely acknowledged, but ignoring it can result in many false positive inferences. We demonstrate that examination of point estimates of the data can result in false positive results, even with appropriate zero replacement approaches, using an in vitro...
Paper Details
Title
Compositional uncertainty should not be ignored in high-throughput sequencing data analysis
Published Date
Jul 28, 2016
Volume
45
Issue
4
Pages
73 - 87
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