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arxiv: 1406.3258 · v1 · pith:6YEBTDA7new · submitted 2014-06-12 · 📊 stat.AP · q-bio.GN· stat.ME

Scanning a Poisson Random Field for Local Signals

classification 📊 stat.AP q-bio.GNstat.ME
keywords localpoissondatadetectionfieldframeworkpowerproblem
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The detection of local genomic signals using high-throughput DNA sequencing data can be cast as a problem of scanning a Poisson random field for local changes in the rate of the process. We propose a likelihood-based framework for for such scans, and derive formulas for false positive rate control and power calculations. The framework can also accommodate mixtures of Poisson processes to deal with over-dispersion. As a specific, detailed example, we consider the detection of insertions and deletions by paired-end DNA-sequencing. We propose several statistics for this problem, compare their power under current experimental designs, and illustrate their application on an Illumina Platinum Genomes data set.

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