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Page 1: 植物科学におけるトランスクリプトーム解析の最前線...= ¬ 9ø ,A¥# 2 X 3, 4« 7, O B+ ¯ ¼ >& = KVinga 2014 OWang and Huang 2014; Liu 2015 L '- M b 9ø« X

Y. Ichihashi & A. Fukushima-1

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230-0045 ƶĄĖƭŷƈĚɊǺÖŧġƤ 1-7-22

Yasunori Ichihashi, Atsushi Fukushima Frontiers of Transcriptomics in Plant Science

Key words: Gene co-expression, Library preparation, Network analysis, RNA-seq, Transcriptome

RIKEN Center for Sustainable Resource Science, Yokohama, Kanagawa, 230-0045 Japan

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