\name{do.aGFF.calc} \alias{do.aGFF.calc} \title{Perform ACME calculation} \description{ This function performs the moving window chi-square calculation. It is written in C, so is quite fast. } \usage{ do.aGFF.calc(x, window, thresh) } \arguments{ \item{x}{An \code{aGFF} class object} \item{window}{An integer value, representing the number of basepairs to include in the windowed chi-square calculation} \item{thresh}{The quantile of the data distribution for each sample that will be used to classify a probe as positive} } \details{ A window size on the order of 2-3 times the average size of fragments from sonication, digestion, etc. and containing at least 8-10 probes is the recommended size. Larger size windows are probably more sensitive, but obviously reduce the accuracy with which boundaries of signal can be called. A threshold of between 0.9 and 0.99 seems empirically to be adequate. If one plots the histogram of data values and there is an obvious better choice (such as a bimodal distribution, with one peak representing enrichment), a more data-driven approach may yield better results. } \value{ An object of class \code{aGFFCalc} } \author{Sean Davis } \examples{ data(example.agff) example.agffcalc <- do.aGFF.calc(example.agff,window=1000,thresh=0.9) example.agffcalc } \keyword{htest}