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Model-based clustering with data correction for removing artifacts
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This paper was identified by ISI Science Citation Index/Web of Science as one of the most
highly-cited papers in Gene Expression Data. Here is a
commentary
on the paper by lead author Ka Yee Yeung, published by ISI in its publication
*Fast Moving Fronts*.

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Updated April 13, 2020

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