amp.eff |
amplification efficiencies and experimental Cq1 (optional column) |
beckham.data |
Cellular heat stress response data. |
beckham.eff |
amplification efficiencies for beckham.data |
coral.stress |
RT-qPCR of stress response in coral Porites astreoides |
cq2counts |
Prepares qRT-PCR data for mcmc.qpcr analysis |
cq2genorm |
Reformats raw Ct data for geNorm analysis (non-parametric selection of stable control genes) as implemented in selectHKgenes function (package SLqPCR) |
cq2log |
Prepares qRT-PCR data for mcmc.qpcr analysis using lognormal and "classic" (normalization-based) models |
diagnostic.mcmc |
Plots three diagnostic plots to check the validity of the assumptions of linear model analysis. |
dilutions |
Data to determine amplification efficiency |
getNormalizedData |
Extracts qPCR model predictions |
HPDplot |
Plotting fixed effects for all genes for a single combination of factors |
HPDplotBygene |
Plots qPCR analysis results for individual genes. |
HPDplotBygeneBygroup |
Plots qPCR analysis results for individual genes |
HPDpoints |
HPDplot, HPDpoints |
HPDsummary |
Summarizes and plots results of mcmc.qpcr function series. |
mcmc.converge.check |
MCMC diagnostic plots |
mcmc.pval |
calculates p-value based on Bayesian z-score or MCMC sampling |
MCMC.qpcr |
Bayesian analysis of qRT-PCR data |
mcmc.qpcr |
Analyzes qRT-PCR data using generalized linear mixed model |
mcmc.qpcr.classic |
Analyzes qRT-PCR data using "classic" model, based on multigene normalization. |
mcmc.qpcr.lognormal |
Fits a lognormal linear mixed model to qRT-PCR data. |
normalize.qpcr |
Internal function called by mcmc.qpcr.classic |
outlierSamples |
detects outlier samples in qPCR data |
padj.hpdsummary |
Adjusts p-values within an HPDsummary() object for multiple comparisons |
padj.qpcr |
Calculates adjusted p-values corrected for multiple comparisons |
PrimEff |
Determines qPCR amplification efficiencies from dilution series |
softNorm |
Accessory function to mcmc.qpcr() to perform soft normalization |
summaryPlot |
Wrapper function for ggplot2 to make bar and line graphs of mcmc.qpcr() results |
trellisByGene |
For two-way designs, plots mcmc.qpcr model predictions gene by gene |