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Acencio ML and Lemke N. Discovery of potential conditions to gene morbidity in yeast by a machine learning-based approach. F1000Posters 2012, 3:1122 (poster)

Discovery of potential conditions to gene morbidity in yeast by a machine learning-based approach

Marcio Luis Acencio1, Ney Lemke
Published 29 Aug 2012
Author Affiliations
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Published 29 Aug 2012

Discovery of potential conditions to gene morbidity in yeast by a machine learning-based approach

[version 1; not peer reviewed]

Marcio Luis Acencio1, Ney Lemke
Author Affiliations
1 Department of Physics and Biophysics, Universidade Estadual Paulista - Institute of Biosciences of Botucatu, Brazil
Presented at
Network Biology SIG: On the Analysis and Visualization of Networks in Biology (an ISMB 2012 Satellite Meeting)
Abstract
Gates Foundation grant number
2009/10382-2 and 2010/20684-3
Competing Interests

No competing interests were disclosed

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