The use of automated parameter searches to improve ion channel kinetics for neural modeling.

scientific article published on 18 January 2011

The use of automated parameter searches to improve ion channel kinetics for neural modeling. is …
instance of (P31):
scholarly articleQ13442814

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P8978DBLP publication IDjournals/jcns/HendricksonEJ11a
P356DOI10.1007/S10827-010-0312-X
P698PubMed publication ID21243419

P50authorDieter JaegerQ59677614
P2093author name stringJeremy R Edgerton
Eric B Hendrickson
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P433issue2
P921main subjectautomationQ184199
P304page(s)329-346
P577publication date2011-01-18
P1433published inJournal of Computational NeuroscienceQ15753630
P1476titleThe use of automated parameter searches to improve ion channel kinetics for neural modeling
P478volume31

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cites work (P2860)
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