Content area

Abstract

Recent advances in computer vision and machine learning underpin a collection of algorithms with an impressive ability to decipher the content of images. These deep learning algorithms are being applied to biological images and are transforming the analysis and interpretation of imaging data. These advances are positioned to render difficult analyses routine and to enable researchers to carry out new, previously impossible experiments. Here we review the intersection between deep learning and cellular image analysis and provide an overview of both the mathematical mechanics and the programming frameworks of deep learning that are pertinent to life scientists. We survey the field’s progress in four key applications: image classification, image segmentation, object tracking, and augmented microscopy. Last, we relay our labs’ experience with three key aspects of implementing deep learning in the laboratory: annotating training data, selecting and training a range of neural network architectures, and deploying solutions. We also highlight existing datasets and implementations for each surveyed application.

A Review on applications of deep machine learning in image analysis that offers practical guidance for biologists.

Details

Title
Deep learning for cellular image analysis
Author
Moen Erick 1 ; Bannon Dylan 1 ; Kudo Takamasa 2 ; Graf, William 1 ; Covert, Markus 2 ; Van Valen David 1 

 California Institute of Technology, Division of Biology and Bioengineering, Pasadena, USA (GRID:grid.20861.3d) (ISNI:0000000107068890) 
 Stanford University, Department of Bioengineering, Stanford, USA (GRID:grid.168010.e) (ISNI:0000000419368956) 
Pages
1233-1246
Publication year
2019
Publication date
Dec 2019
Publisher
Nature Publishing Group
ISSN
15487091
e-ISSN
15487105
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2319482620
Copyright
© Springer Nature America, Inc. 2019.