Accurate Classification of Protein Subcellular Localization from High-Throughput Microscopy Images Using Deep Learning
Author(s) -
Tanel Pärnamaa,
Leopold Parts
Publication year - 2017
Publication title -
g3 genes genomes genetics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.468
H-Index - 66
ISSN - 2160-1836
DOI - 10.1534/g3.116.033654
Subject(s) - computer science , artificial intelligence , deep learning , throughput , pattern recognition (psychology) , artificial neural network , subcellular localization , protein subcellular localization prediction , feature (linguistics) , microscopy , task (project management) , biology , pathology , cytoplasm , microbiology and biotechnology , wireless , medicine , telecommunications , biochemistry , linguistics , philosophy , management , gene , economics
High-throughput microscopy of many single cells generates high-dimensional data that are far from straightforward to analyze. One important problem is automatically detecting the cellular compartment where a fluorescently-tagged protein resides, a task relatively simple for an experienced human, but difficult to automate on a computer. Here, we train an 11-layer neural network on data from mapping thousands of yeast proteins, achieving per cell localization classification accuracy of 91%, and per protein accuracy of 99% on held-out images. We confirm that low-level network features correspond to basic image characteristics, while deeper layers separate localization classes. Using this network as a feature calculator, we train standard classifiers that assign proteins to previously unseen compartments after observing only a small number of training examples. Our results are the most accurate subcellular localization classifications to date, and demonstrate the usefulness of deep learning for high-throughput microscopy.
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