Feng Feng1, Ana Paula Sales, Thomas B Kepler. 1. Center for Computational Immunology, Department of Biostatistics and Bioinformatics, Duke University Medical Center, Durham, NC 27705, USA. feng.feng@duke.edu
Abstract
MOTIVATION: Immunoassays are primary diagnostic and research tools throughout the medical and life sciences. The common approach to the processing of immunoassay data involves estimation of the calibration curve followed by inversion of the calibration function to read off the concentration estimates. This approach, however, does not lend itself easily to acceptable estimation of confidence limits on the estimated concentrations. Such estimates must account for uncertainty in the calibration curve as well as uncertainty in the target measurement. Even point estimates can be problematic: because of the non-linearity of calibration curves and error heteroscedasticity, the neglect of components of measurement error can produce significant bias. METHODS: We have developed a Bayesian approach for the estimation of concentrations from immunoassay data that treats the propagation of measurement error appropriately. The method uses Markov Chain Monte Carlo (MCMC) to approximate the posterior distribution of the target concentrations and numerically compute the relevant summary statistics. Software implementing the method is freely available for public use. RESULTS: The new method was tested on both simulated and experimental datasets with different measurement error models. The method outperformed the common inverse method on samples with large measurement errors. Even in cases with extreme measurements where the common inverse method failed, our approach always generated reasonable estimates for the target concentrations. AVAILABILITY: Project name: Baecs; Project home page: www.computationalimmunology.org/utilities/; Operating systems: Linux, MacOS X and Windows; Programming language: C++; License: Free for Academic Use.
MOTIVATION: Immunoassays are primary diagnostic and research tools throughout the medical and life sciences. The common approach to the processing of immunoassay data involves estimation of the calibration curve followed by inversion of the calibration function to read off the concentration estimates. This approach, however, does not lend itself easily to acceptable estimation of confidence limits on the estimated concentrations. Such estimates must account for uncertainty in the calibration curve as well as uncertainty in the target measurement. Even point estimates can be problematic: because of the non-linearity of calibration curves and error heteroscedasticity, the neglect of components of measurement error can produce significant bias. METHODS: We have developed a Bayesian approach for the estimation of concentrations from immunoassay data that treats the propagation of measurement error appropriately. The method uses Markov Chain Monte Carlo (MCMC) to approximate the posterior distribution of the target concentrations and numerically compute the relevant summary statistics. Software implementing the method is freely available for public use. RESULTS: The new method was tested on both simulated and experimental datasets with different measurement error models. The method outperformed the common inverse method on samples with large measurement errors. Even in cases with extreme measurements where the common inverse method failed, our approach always generated reasonable estimates for the target concentrations. AVAILABILITY: Project name: Baecs; Project home page: www.computationalimmunology.org/utilities/; Operating systems: Linux, MacOS X and Windows; Programming language: C++; License: Free for Academic Use.
Authors: R A Dudley; P Edwards; R P Ekins; D J Finney; I G McKenzie; G M Raab; D Rodbard; R P Rodgers Journal: Clin Chem Date: 1985-08 Impact factor: 8.327
Authors: Hongmei Yang; Steven F Baker; Mario E González; David J Topham; Luis Martínez-Sobrido; Martin Zand; Jeanne Holden-Wiltse; Hulin Wu Journal: J Biopharm Stat Date: 2015-05-26 Impact factor: 1.051
Authors: Thomas B Kepler; Supriya Munshaw; Kevin Wiehe; Ruijun Zhang; Jae-Sung Yu; Christopher W Woods; Thomas N Denny; Georgia D Tomaras; S Munir Alam; M Anthony Moody; Garnett Kelsoe; Hua-Xin Liao; Barton F Haynes Journal: Front Immunol Date: 2014-04-22 Impact factor: 7.561
Authors: Feng Feng; Morgan P Thompson; Beena E Thomas; Elizabeth R Duffy; Jiyoun Kim; Shinichiro Kurosawa; Joseph Y Tashjian; Yibing Wei; Chris Andry; D J Stearns-Kurosawa Journal: PLoS One Date: 2019-04-17 Impact factor: 3.240