Literature DB >> 30148665

Know When You Don't Know: A Robust Deep Learning Approach in the Presence of Unknown Phenotypes.

Oliver Dürr1,2, Elvis Murina1, Daniel Siegismund3, Vasily Tolkachev1, Stephan Steigele3, Beate Sick1,4.   

Abstract

Deep convolutional neural networks show outstanding performance in image-based phenotype classification given that all existing phenotypes are presented during the training of the network. However, in real-world high-content screening (HCS) experiments, it is often impossible to know all phenotypes in advance. Moreover, novel phenotype discovery itself can be an HCS outcome of interest. This aspect of HCS is not yet covered by classical deep learning approaches. When presenting an image with a novel phenotype to a trained network, it fails to indicate a novelty discovery but assigns the image to a wrong phenotype. To tackle this problem and address the need for novelty detection, we use a recently developed Bayesian approach for deep neural networks called Monte Carlo (MC) dropout to define different uncertainty measures for each phenotype prediction. With real HCS data, we show that these uncertainty measures allow us to identify novel or unclear phenotypes. In addition, we also found that the MC dropout method results in a significant improvement of classification accuracy. The proposed procedure used in our HCS case study can be easily transferred to any existing network architecture and will be beneficial in terms of accuracy and novelty detection.

Keywords:  classification; deep learning; imaging; screening

Mesh:

Year:  2018        PMID: 30148665     DOI: 10.1089/adt.2018.859

Source DB:  PubMed          Journal:  Assay Drug Dev Technol        ISSN: 1540-658X            Impact factor:   1.738


  2 in total

1.  Deep learning predicts short non-coding RNA functions from only raw sequence data.

Authors:  Teresa Maria Rosaria Noviello; Francesco Ceccarelli; Michele Ceccarelli; Luigi Cerulo
Journal:  PLoS Comput Biol       Date:  2020-11-11       Impact factor: 4.475

2.  Use of high-content analysis and machine learning to characterize complex microbial samples via morphological analysis.

Authors:  Jennifer Petitte; Michael Doherty; Jacob Ladd; Cassandra L Marin; Samuel Siles; Vanessa Michelou; Amanda Damon; Erin Quattrini Eckert; Xiang Huang; John W Rice
Journal:  PLoS One       Date:  2019-09-23       Impact factor: 3.240

  2 in total

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