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Statistical inference for serial dilution assay data
Authors:Lee M L  Whitmore G A
Affiliation:Channing Laboratory, Brigham and Women's Hospital, and Harvard Medical School, Boston, Massachusetts 02115, USA. meiling@channing.harvard.edu
Abstract:Serial dilution assays are widely employed for estimating substance concentrations and minimum inhibitory concentrations. The Poisson-Bernoulli model for such assays is appropriate for count data but not for continuous measurements that are encountered in applications involving substance concentrations. This paper presents practical inference methods based on a log-normal model and illustrates these methods using a case application involving bacterial toxins.
Keywords:Bacterial toxin    Data analysis    EM algorithm, Interval censoring    Log-normal models    Maximum likelihood estimation    Minimum inhibitory concentration    Serial dilution assay    Statistical inference    Stool cytotoxicity assay
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