Integrated approaches to understanding and reducing drought impact on food security across scales
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Lyndon Estes | Justin Sheffield | Xiaogang He | Tom P Evans | Megan Konar | Daniela Anghileri | Di Tian | J. Sheffield | D. Anghileri | M. Konar | T. Evans | L. Estes | D. Tian | Xiaogang He | K. Baylis | Kathy Baylis
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