cell-health
Cell Health Predictor
Predicts cell health from morphological profiles using machine learning and image analysis
Predicting Cell Health with Morphological Profiles
35 stars
6 watching
8 forks
Language: HTML
last commit: about 3 years ago
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2015-07-01-cell-healthcancercarpenter-labcell-paintingcrisprmorphological-profiling
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