Defining reference genes in Oryza sativa using organ, development, biotic and abiotic transcriptome datasets
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James Whelan | J. Whelan | R. Narsai | A. Ivanova | Sophia Ng | Reena Narsai | Aneta Ivanova | Sophia Ng | Reena Narsai
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