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% Generated by roxygen2: do not edit by hand
% Please edit documentation in R/seqB.R
\name{seqB}
\alias{seqB}
\title{seqB method}
\usage{
seqB(NT, mu, kappa = 20)
}
\arguments{
\item{NT}{Vector of case counts.}

\item{mu}{Mean of the serial distribution. This needs to match case counts in time units. For example, if case counts
are weekly and the serial distribution has a mean of seven days, then \code{mu} should be set to one. If case
counts are daily and the serial distribution has a mean of seven days, then \code{mu} should be set to seven.}

\item{kappa}{Largest possible value of uniform prior (defaults to 20). This describes the prior belief on ranges of R0,
and should be set to a higher value if R0 is believed to be larger.}
}
\value{
\code{secB} returns a list containing the following components: \code{Rhat} is the estimate of R0 (the posterior mean),
        \code{posterior} is the posterior distribution of R0 from which alternate estimates can be obtained (see examples),
        and \code{group} is an indicator variable (if \code{group=TRUE}, zero values of NT were input and grouping was done 
        to obtain \code{Rhat}). The variable \code{posterior} is returned as a list made up of \code{supp} (the support of
        the distribution) and \code{pmf} (the probability mass function).
}
\description{
This function implements a sequential Bayesian estimation method of R0 due to Bettencourt and Riberio (PloS One, 2008).
See details for important implementation notes.
}
\details{
The method sets a uniform prior distribution on R0 with possible values between zero and \code{kappa}, discretized to a fine grid.
The distribution of R0 is then updated sequentially, with one update for each new case count observation.
The final estimate of R0 is \code{Rhat}, the mean of the (last) posterior distribution.
The prior distribution is the initial belief of the distribution of R0; which in this implementation is the uninformative uniform
distribution with values between zero and \code{kappa}. Users can change the value of /code{kappa} only (i.e., the prior distribution
cannot be changed from the uniform).  As more case counts are observed, the influence of the prior distribution should lessen on
the final estimate \code{Rhat}.

This method is based on an approximation of the SIR model, which is most valid at the beginning of an epidemic. The method assumes
that the mean of the serial distribution (sometimes called the serial interval) is known. The final estimate can be quite sensitive
to this value, so sensitivity testing is strongly recommended. Users should be careful about units of time (e.g., are counts observed
daily or weekly?) when implementing.  

Our code has been modified to provide an estimate even if case counts equal to zero are present in some time intervals. This is done
by grouping the counts over such periods of time. Without grouping, and in the presence of zero counts, no estimate can be provided.
}
\examples{
## ===================================================== ##
## Illustrate on weekly data                             ##
## ===================================================== ##

NT <- c(1, 4, 10, 5, 3, 4, 19, 3, 3, 14, 4)
## obtain Rhat when serial distribution has mean of five days
res1 <- seqB(NT=NT, mu=5/7)
res1$Rhat
## obtain Rhat when serial distribution has mean of three days
res2	<- seqB(NT=NT, mu=3/7)
res2$Rhat

## ============================================================= ##
## Compute posterior mode instead of posterior mean and plot     ##
## ============================================================= ##

Rpost <-	res1$posterior
loc <- which(Rpost$pmf == max(Rpost$pmf))
Rpost$supp[loc] # posterior mode
res1$Rhat # compare with posterior mean

par(mfrow=c(2, 1), mar=c(2, 2, 1, 1))
plot(Rpost$supp, Rpost$pmf, col="black", type="l", xlab="", ylab="")
abline(h=1/(20/0.01+1), col="red")
abline(v=res1$Rhat, col="blue")
abline(v=Rpost$supp[loc], col="purple")
legend("topright", legend=c("prior", "posterior", "posterior mean (Rhat)", "posterior mode"), col=c("red", "black", "blue", "purple"), lty=1)
plot(Rpost$supp, Rpost$pmf, col="black", type="l", xlim=c(0.5, 1.5), xlab="", ylab="")
abline(h=1/(20/0.01+1), col="red")
abline(v=res1$Rhat, col="blue")
abline(v=Rpost$supp[loc], col="purple")
legend("topright", legend=c("prior", "posterior", "posterior mean (Rhat)", "posterior mode"), col=c("red", "black", "blue", "purple"), lty=1)

## ========================================================= ##
## Compute Rhat using only the first five weeks of data      ##
## ========================================================= ##

res3 <- seqB(NT=NT[1:5], mu=5/7)	# serial distribution has mean of five days
res3$Rhat

}