Virtual perturbations to assess explainability of deep-learning based cell fate predictors
Christopher J. Soelistyo,
Guillaume Charras,
Alan R. Lowe
Abstract:Explainable deep learning holds significant promise in extracting scientific insights from experimental observations. This is especially so in the field of bio-imaging, where the raw data is often voluminous, yet extremely variable and difficult to study. However, one persistent challenge in deep learning assisted scientific discovery is that the workings of artificial neural networks are often difficult to interpret. Here we present a simple technique for investigating the behavior of trained neural networks:… Show more
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