Safer chemicals using less animals: kick-off of the European ONTOX project.
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Djork-Arné Clevert | A. Piersma | T. Vanhaecke | M. Vinken | L. Geris | T. Luechtefeld | T. Hartung | Chihae Yang | E. Benfenati | R. Gozalbes | C. Krul | H. Dirven | N. Kramer | J. Castell | T. D. de Kok | D. Jennen | R. Masereeuw | E. Fritsche | F. Busquet | R. Jover | S. Schaller | E. Roggen | H. Kandárová | Helena Kandarova
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