Handfield et al., 2013 - Google Patents
Unsupervised clustering of subcellular protein expression patterns in high-throughput microscopy images reveals protein complexes and functional relationships …Handfield et al., 2013
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- 7365520589946339908
- Author
- Handfield L
- Chong Y
- Simmons J
- Andrews B
- Moses A
- Publication year
- Publication venue
- PLoS computational biology
External Links
Snippet
Protein subcellular localization has been systematically characterized in budding yeast using fluorescently tagged proteins. Based on the fluorescence microscopy images, subcellular localization of many proteins can be classified automatically using supervised …
- 102000004169 proteins and genes 0 title abstract description 226
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