2022
DOI: 10.1093/bioadv/vbac033
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Sufficient principal component regression for pattern discovery in transcriptomic data

Abstract: Motivation Methods for global measurement of transcript abundance such as microarrays and RNA-Seq generate datasets in which the number of measured features far exceeds the number of observations. Extracting biologically meaningful and experimentally tractable insights from such data therefore requires high-dimensional prediction. Existing sparse linear approaches to this challenge have been stunningly successful, but some important issues remain. These methods can fail to select the correct … Show more

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References 37 publications
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