SPRED: A machine learning approach for the identification of classical and non-classical secretory proteins in mammalian genomes.
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P2860
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P2860
SPRED: A machine learning approach for the identification of classical and non-classical secretory proteins in mammalian genomes.
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2009 nî lūn-bûn
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2009年の論文
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2009年学术文章
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name
SPRED: A machine learning appr ...... proteins in mammalian genomes.
@en
SPRED: A machine learning appr ...... proteins in mammalian genomes.
@nl
type
label
SPRED: A machine learning appr ...... proteins in mammalian genomes.
@en
SPRED: A machine learning appr ...... proteins in mammalian genomes.
@nl
prefLabel
SPRED: A machine learning appr ...... proteins in mammalian genomes.
@en
SPRED: A machine learning appr ...... proteins in mammalian genomes.
@nl
P2093
P1476
SPRED: A machine learning appr ...... proteins in mammalian genomes.
@en
P2093
Enno Hartmann
Kai-Uwe Kalies
Krishna Kumar Kandaswamy
P N Suganthan
Thomas Martinetz
P304
P356
10.1016/J.BBRC.2009.12.019
P407
P577
2009-12-06T00:00:00Z