,
ܘൌܛെ܊െܟ
(5.33)
ctra intensity is thus treated as a peak only when the following
is satisfied, i.e., 0. Here, a peak is assumed to correspond
signal. Due to any possible variation, it may not be possible for a
ed peak to have an identical spectra analyser value, i.e., the value
the horizontal axis of a spectrum, across replicates in a spectra
wever, the spectra analyser values across replicates for a true peak
med to have a relatively small variation and this variance is
ntly smaller than the distance between true peaks. Therefore, an
t process is required when discovering peaks for a spectra data
tiple replicates. The main purpose of using an alignment process
s, i.e., removing false signals and the confusion across replicates.
r assumption for applying an alignment process to the discovered
nt peaks in a replicated spectra data set is that a peak
nding to a potential true signal should occur in most replicates.
a false signal may present in one replicate by a chance.
e analysing a single spectrum, estimating baselines and extracting
ctrum based on a spectra data with multiple replicates needs some
the t vector. The new t vector is defined as below,
ൌ1 െݎൌ1 െ
1
1 expሾെߢܧሺݏെܾെݓሻሿ
(5.34)
a t vector is called a global aligner. In the above equation, ߢ1
positive number, which was set 100 as default [Lau, et al., 2012],
s for the expectation across replicates and m is used to index the
trum. The use of such a sigmoid function is to make it
able. The derivative of ݎ is called an entropy and is shown
ݎ
ᇱൌݎሺ1 െݎሻ
(5.35)
noise threshold variable w is assumed to follow a Gamma
on. Therefore the model posterior of replicated spectra is defined