Remote sensing techniques and stable isotopes as phenotyping tools to assess wheat yield performance: Effects of growing temperature and vernalization.
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J. Araus | Í. Aranjuelo | S. Kefauver | N. A. Gutiérrez | Adrian Gracia-Romero | M. D. Serret | Fatima Zahra Rezzouk | N. Gutiérrez | F. Z. Rezzouk
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