High-Content Analysis of Breast Cancer Using Single-Cell Deep Transfer Learning
Data(s) |
30/03/2016
30/03/2016
01/03/2016
|
---|---|
Resumo |
High-content analysis has revolutionized cancer drug discovery by identifying substances that alter the phenotype of a cell, which prevents tumor growth and metastasis. The high-resolution biofluorescence images from assays allow precise quantitative measures enabling the distinction of small molecules of a host cell from a tumor. In this work, we are particularly interested in the application of deep neural networks (DNNs), a cutting-edge machine learning method, to the classification of compounds in chemical mechanisms of action (MOAs). Compound classification has been performed using image-based profiling methods sometimes combined with feature reduction methods such as principal component analysis or factor analysis. In this article, we map the input features of each cell to a particular MOA class without using any treatment-level profiles or feature reduction methods. To the best of our knowledge, this is the first application of DNN in this domain, leveraging single-cell information. Furthermore, we use deep transfer learning (DTL) to alleviate the intensive and computational demanding effort of searching the huge parameter's space of a DNN. Results show that using this approach, we obtain a 30% speedup and a 2% accuracy improvement. |
Identificador |
http://hdl.handle.net/10400.22/7965 10.1177/1087057115623451 |
Idioma(s) |
eng |
Publicador |
SAGE |
Relação |
PTDC/ EIA-EIA/119004/2010 Journal of biomolecular screening;Vol. 21, nº3 http://jbx.sagepub.com/content/early/2015/12/31/1087057115623451.abstract |
Direitos |
restrictedAccess |
Palavras-Chave | #Cancer drug discovery #Deep transfer learning #High-content screening #Image analysis |
Tipo |
article |