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Biology / Affymetrix / Gene expression profiling / Data analysis / Statistical power / Design of experiments / Functional genomics / Analysis of variance / Fold change / Science / Statistics / Microarrays
Date: 2010-06-18 23:07:20
Biology
Affymetrix
Gene expression profiling
Data analysis
Statistical power
Design of experiments
Functional genomics
Analysis of variance
Fold change
Science
Statistics
Microarrays

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