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Fully Bayesian imputation model for non-random missing data in qPCR
TL;DR: This work proposes to treat non-detects as non-random missing data, model the missing data mechanism, and use this model to impute Ct values or obtain direct estimates of relevant model parameters through Bayesian hierarchical modeling.
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Abstract: We propose a new statistical approach to obtain differential gene expression of non-detects in quantitative real-time PCR (qPCR) experiments through Bayesian hierarchical modeling. We propose to treat non-detects as non-random missing data, model the missing data mechanism, and use this model to impute Ct values or obtain direct estimates of relevant model parameters. A typical laboratory does not have the resources to perform experiments with a large number of replicates; therefore, we propose an approach that does not rely on large sample theory. We aim to demonstrate the possibilities that exist for analyzing qPCR data in the presence of non-random missingness through the use of Bayesian estimation. Bayesian analysis typically allows for smaller data sets to be analyzed without losing power while retaining precision. The heart of Bayesian estimation is that everything that is known about a parameter before observing the data (the prior) is combined with the information from the data itself (the likelihood), resulting in updated knowledge about the parameter (the posterior). In this work we introduce and describe our hierarchical model and chosen prior distributions, assess the model sensitivity to the choice of prior, perform convergence diagnostics for the Markov Chain Monte Carlo, and present the results of a real data application.
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Citations
A Bayesian spatial voting model to characterize the legislative behavior of the Colombian Senate 2010–2014
TL;DR: In this article , a one-dimensional standard Bayesian ideal point estimator via Markov chain Monte Carlo algorithms was used to characterize the legislators voting behavior in the Colombian Senate 2010-2014.
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Bayesian spatial voting model to characterize the legislative behavior of the Colombian Senate 2010-2014.
TL;DR: In this article, the authors apply Bayesian methodologies to characterize the legislative behavior of the Colombian Senate during the period 2010-2014, through the plenary roll call votes of this legislative chamber and implement the one-dimensional standard Bayesian ideal point estimator via the Markov chain Monte Carlo algorithms.
References
•Book
Statistical Analysis with Missing Data
Roderick J. A. Little,Donald B. Rubin +1 more
- 01 Jan 1987
TL;DR: This work states that maximum Likelihood for General Patterns of Missing Data: Introduction and Theory with Ignorable Nonresponse and large-Sample Inference Based on Maximum Likelihood Estimates is likely to be high.
18.3K
Statistical Analysis With Missing Data
TL;DR: Generalized Estimating Equations is a good introductory book for analyzing continuous and discrete correlated data using GEE methods and provides good guidance for analyzing correlated data in biomedical studies and survey studies.
10.6K
Inference and missing data
TL;DR: In this article, it was shown that ignoring the process that causes missing data when making sampling distribution inferences about the parameter of the data, θ, is generally appropriate if and only if the missing data are missing at random and the observed data are observed at random, and then such inferences are generally conditional on the observed pattern of missing data.
10K
Bayesian data analysis.
TL;DR: A fatal flaw of NHST is reviewed and some benefits of Bayesian data analysis are introduced and illustrative examples of multiple comparisons in Bayesian analysis of variance and Bayesian approaches to statistical power are presented.
8.3K
Prior distributions for variance parameters in hierarchical models (comment on article by Browne and Draper)
TL;DR: In this paper, a folded-noncentral-$t$ family of conditionally conjugate priors for hierarchical standard deviation parameters is proposed, and weakly informative priors in this family are considered.