108 A Practical Guide to Cancer Systems Biology
l∈{ 1 , ...,L− 1 }. Hence, Eq. (9.5) can be written in the following matrix
form for target genei:
Xi=Φi·θi+Ei (9.6)
where
Xi=
⎡
⎢⎢
⎣
xi(2)
..
.
xi(L)
⎤
⎥⎥
⎦, Φi=
⎡
⎢⎢
⎣
φi(1)
..
.
φi(L−1)
⎤
⎥⎥
⎦,Ei=
⎡
⎢⎢
⎣
εi(1)
..
.
εi(L−1)
⎤
⎥⎥
⎦
In Eq. (9.6), we assume noisesεi(l) at different time points as independent
random variables of normal distribution with zero mean and unknown
variance σi^2 , i.e., the variance of εi is Σi = E{εiεTi} = σ^2 iI,whereI is
an identity matrix. Ifεiis assumed to be normally distributed withL− 1
elements, its probability density function is of the following form^6 :
p(εi)=
(
(2π)L−^1 det Σi
)− 1 / 2
exp
{
−
1
2
εTiΣ−i^1 εi
}
(9.7)
Considering Eqs. (9.6) and (9.7), the likelihood function can be expressed as
L(θi,σ^2 i)=p(θi,σ^2 i)
=(2πσ^2 i)−(L−1)/^2 exp
{
−
1
2 σ^2 i
(Xi−Φiθi)T(Xi−Φiθi)
}
(9.8)
Maximum likelihood estimation method aims at findingθiandσi^2 to maxi-
mize the likelihood function in Eq. (9.8). For the simplicity of computation,
it is practical to take the logarithm of the likelihood function, and we have
the following log-likelihood function:
lnL(θi,σ^2 i)=−
L− 1
2
ln(2πσ^2 i)−
1
2 σ^2 i
L∑− 1
l=1
(xi(l+1)−φi(l)·θi)^2 (9.9)
wherexi(l+1) andφi(l)arethel-th elements ofXiand Φi, respectively. Here,
the log-likelihood function is expected to have the maximum atθi=θˆiand
σ^2 i=ˆσ^2 i. The necessary conditions for determining the maximum likelihood