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Receiver operating characteristic rating analysis. Generalization to the population of readers and patients with the jackknife method.

作者信息

Dorfman D D, Berbaum K S, Metz C E

机构信息

Department of Psychology, University of Iowa, Iowa City 52242.

出版信息

Invest Radiol. 1992 Sep;27(9):723-31.

PMID:1399456
Abstract
摘要

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