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Predicting Transcriptional Regulatory Activities with Deep Convolutional Networks

Joe Paggi, Andrew Lamb, Kevin Tian, Irving Hsu, Pierre-Louis Cedoz, Prasad Kawthekar
doi: https://doi.org/10.1101/099879
Joe Paggi
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  • For correspondence: jpaggi@stanford.edu
Andrew Lamb
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  • For correspondence: andrew.lamb@stanford.edu
Kevin Tian
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  • For correspondence: kjtian@stanford.edu
Irving Hsu
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Pierre-Louis Cedoz
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  • For correspondence: plcedoz@stanford.edu
Prasad Kawthekar
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  • For correspondence: pkawthek@stanford.edu
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Posted January 12, 2017.
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Predicting Transcriptional Regulatory Activities with Deep Convolutional Networks
Joe Paggi, Andrew Lamb, Kevin Tian, Irving Hsu, Pierre-Louis Cedoz, Prasad Kawthekar
bioRxiv 099879; doi: https://doi.org/10.1101/099879
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Predicting Transcriptional Regulatory Activities with Deep Convolutional Networks
Joe Paggi, Andrew Lamb, Kevin Tian, Irving Hsu, Pierre-Louis Cedoz, Prasad Kawthekar
bioRxiv 099879; doi: https://doi.org/10.1101/099879

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