Weakly-Supervised Prediction of Cell Migration Modes in Confocal Microscopy Images Using Bayesian Deep Learning
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Staffan Strömblad | Carolina Wählby | Veronica Larsson | Anindya Gupta | Damian J. Matuszewski | Carolina Wählby | S. Strömblad | Veronica J. Larsson | Anindya Gupta
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