Title
DeadNet: Identifying Phototoxicity from Label-free Microscopy Images of Cells using Deep ConvNets.
Abstract
Exposure to intense illumination light is an unavoidable consequence of fluorescence microscopy, and poses a risk to the health of the sample in every live-cell fluorescence microscopy experiment. Furthermore, the possible side-effects of phototoxicity on the scientific conclusions that are drawn from an imaging experiment are often unaccounted for. Previously, controlling for phototoxicity in imaging experiments required additional labels and experiments, limiting its widespread application. Here we provide a proof-of-principle demonstration that the phototoxic effects of an imaging experiment can be identified directly from a single phase-contrast image using deep convolutional neural networks (ConvNets). This lays the groundwork for an automated tool for assessing cell health in a wide range of imaging experiments. Interpretability of such a method is crucial for its adoption. We take steps towards interpreting the classification mechanism of the trained ConvNet by visualizing salient features of images that contribute to accurate classification.
Year
Venue
Field
2017
arXiv: Computer Vision and Pattern Recognition
Interpretability,Computer vision,Pattern recognition,Computer science,Convolutional neural network,Artificial intelligence,Microscopy,Phototoxicity,Limiting
DocType
Volume
Citations 
Journal
abs/1701.06109
0
PageRank 
References 
Authors
0.34
7
5
Name
Order
Citations
PageRank
david l richmond1193.19
Anna Payne-Tobin Jost200.34
Talley Lambert300.34
Jennifer Waters400.34
Hunter Elliott501.01