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Temporal deep learning classification of digital hologram reconstructions of multicellular samples

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Abstract

Digital holographic microscopy allows label-free capture of the full wavefront of light from an object using a low intensity laser. Using numerical reconstructions as an input to deep convolutional neural networks, detection of tumorigenic samples is feasible.

© 2018 The Author(s)

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