The Ultimate qPCR Experiment: Producing Publication Quality, Reproducible Data the First Time

Trends in Biotechnology - Tập 37 - Trang 761-774 - 2019
Sean C. Taylor1, Katia Nadeau1, Meysam Abbasi1, Claude Lachance1, Marie Nguyen2, Joshua Fenrich2
1Bio-Rad Laboratories Canada Inc., 1329 Meyerside Drive, Mississauga, Ontario L5T1C9, Canada
2Bio-Rad Laboratories, 255 Linus Pauling Drive, Hercules, CA 94547, USA

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