Automating Morphological Profiling with Generic Deep Convolutional Networks

Nick Pawlowski(Imperial College London), Juan C. Caicedo(Broad Institute), Shantanu Singh(Broad Institute), Anne E. Carpenter(Broad Institute), Amos Storkey(University of Edinburgh)
bioRxiv (Cold Spring Harbor Laboratory)
November 2, 2016
Cited by 102Open Access
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Abstract

Abstract Morphological profiling aims to create signatures of genes, chemicals and diseases from microscopy images. Current approaches use classical computer vision-based segmentation and feature extraction. Deep learning models achieve state-of-the-art performance in many computer vision tasks such as classification and segmentation. We propose to transfer activation features of generic deep convolutional networks to extract features for morphological profiling. Our approach surpasses currently used methods in terms of accuracy and processing speed. Furthermore, it enables fully automated processing of microscopy images without need for single cell identification.


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