Predicting functional family of novel enzymes irrespective of sequence similarity: a statistical learning approach

scientific article published on 07 December 2004

Predicting functional family of novel enzymes irrespective of sequence similarity: a statistical learning approach is …
instance of (P31):
scholarly articleQ13442814

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P356DOI10.1093/NAR/GKH984
P932PMC publication ID535691
P698PubMed publication ID15585667
P5875ResearchGate publication ID8141702

P2093author name stringCui J
Chen YZ
Cao ZW
Han LY
Ji ZL
Cai CZ
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Evolutionary potential of an RNA virusQ40677633
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Predicting functions from protein sequences--where are the bottlenecks?Q41736499
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Prediction of enzyme classification from protein sequence without the use of sequence similarity.Q45967506
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P433issue21
P407language of work or nameEnglishQ1860
P921main subjectstatisticsQ12483
P304page(s)6437-6444
P577publication date2004-12-07
P1433published inNucleic Acids ResearchQ135122
P1476titlePredicting functional family of novel enzymes irrespective of sequence similarity: a statistical learning approach
P478volume32

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