Linear Combinations of Multiple Diagnostic Markers
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Publication:4292112
DOI10.2307/2291276zbMath0792.62099OpenAlexW4232899184MaRDI QIDQ4292112
Publication date: 10 July 1994
Full work available at URL: https://doi.org/10.2307/2291276
sensitivityROC curvereceiver operating characteristic curvemultiple markersproportional covariance matricesdiagnostic markersmultivariate normal distribution modelbest linear combination of markerscancer clinical trial dataFisher's linear disriminant function
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