Integrating transcriptomic techniques and k-means clustering in metabolomics to identify markers of abiotic and biotic stress in Medicago truncatula
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Ulrike Bechtold | P. Mullineaux | Julie Wilson | A. Charlton | Martin J Rusilowicz | U. Bechtold | M. Dickinson | Julie Wilson | Adrian J Charlton | Michael Dickinson | Elizabeth Dickinson | Philip M Mullineaux | Elizabeth Dickinson | Martin J. Rusilowicz
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