The present invention is directed to providing a system, apparatus and method for automatic input function estimation for pharmacokinetic modeling that streamlines the workflow and reduces the amount of manual interaction and provides a dynamic procedure with kinetic modeling.
In order to avoid invasive arterial blood sampling non-invasive input estimation is a serious topic of interest and various approaches have been studied.
Reference tissue models rely on the presence of a reference tissue without specific binding of the ligand. In the reference tissue model, the time course of radio ligand uptake in the tissue of interest is expressed in terms of its uptake in the reference tissue, assuming that the level of nonspecific binding is the same in both tissues. They are commonly used in neurological applications. However they rely on the nonspecific binding assumption and were reported to have some loss in accuracy and increased bias and do not work well for all radiotracers.
A Population Mean approach aims at estimating in a first step the mean parameter values of the whole population as well as their probability distribution. This is then used in a second step to define a prior distribution for Bayesian estimation of individual parameters. It is applicable not only for input function estimation, but for model parameter estimation, too. It ha been applied to a tracer with complex metabolism including blood compartments where the blood input function is one compartment activity.
Blind identification circumvents explicit knowledge of the blood input completely. However at least three regions with identical input and different kinetic behavior have to be defined in order to solve the blind estimation problem and the input function is represented implicitly, only.
The system, apparatus and method of the present invention provide an effective and efficient automatic way to estimate an input function from a collection of functional representations. These representations may differ in form and number of terms. A typical functional representation is a sum of weighted exponentials.
where N is the number of terms and t is time in s. The 3N+1 parameters are τ, Ai, Bi, Ci, i=1, . . . , N. τ is a time normalization parameter (in most cases it will be used as a constant). The Ai are activity weights, Bi are dimensionless exponents and Ci are normalized dimensionless time constants. Some parameters may be predefined. For example, small integer values of Bi are favorable with regard to computational efficiency.
A preferred embodiment of the method of the automatic estimation procedure of the present invention is as follows
1. Creation/definition of a collection C={cp,1(t), cp,2(t), . . . , cp,M(t)} of M input functions differing in functional form or number of predefined and free parameters. M can be chosen to cover all desired combinations of predefined parameter values and number of terms N.
2. Estimation of the (free) parameters of all input functions from the collection on the ROI averaged data
where NROI is the number of voxels in the ROI. The measurements represent the activity distribution in time (t) and space (x, y, z) in the form of a 4D data set d(t, x, y, z), t=1, . . . , T. The parameter estimation can be carried out with any nonlinear optimization procedure (e.g. Levenberg-Marquardt) solving
separately for all input functions cp,j(t) from the collection. ρ(t) is a weighting function that allows more emphasis to be placed on some parts of the data (e.g. confidence information on the measured data). Initial parameter values usually play an important role in nonlinear optimization and have to be tackled first. For the input function class shown above a preferred way to obtain reasonable initial values is shown in the realization example below.
3. Computation of an “optimal” input function from all estimated input functions making use of goodness-of-fit criterion.
c
p,opt(t)=F(C) (4)
The goodness-of-fit (GOF) criterion assesses the fitting error χ2 with regard to the modeling effort (number of parameters np)
Examples for goodness-of-fit criteria are Akaike's Information Criterion (AIC), ibid, or the Bayesian Information Criterion (BIC), see, e.g., Schwarz, G. Estimating the Dimension of a Model, The Annals of Statistics, Vol. 6, No. 2, 461-464, 1978. The optimal input function may be computed as a weighted sum
with the weights wj being determined by the GOF criterion. Selection of the best fitting input function is preferably realized by the weights
The system, apparatus, and method of the present invention provide efficient fitting of analytical input functions with the advantages:
It is to be understood by persons of ordinary skill in the art that the following descriptions are provided for purposes of illustration and not for limitation. An artisan understands that there are many variations that lie within the spirit of the invention and the scope of the appended claims. Unnecessary detail of known functions and operations may be omitted from the current description so as not to obscure the present invention.
A preferred embodiment of the invention provides efficient fitting of analytical input functions with the following advantages:
For an input function consisting of polynomial weighted exponentials, a preferred embodiment of an automatic estimation procedure 100 is illustrated in
1. Collection Definition
Define the exponents Bi as constants (reasonable values are small cardinal numbers, such as 0, 1, 2, 3) at step 101 and vary them over the entries of the collection. This reduces the number of free parameters, maintains the computational advantage given by the chosen values, and makes the computation of initial parameter values more tractable.
At step 102 a collection of polynomial weighted exponential input functions is defined, for example, the functions
2. (Free) Parameter Estimation
In order to start the parameter estimation, initial values for the parameters have to be determined. As these strongly influence the final result of a nonlinear fit, these parameters have to be chosen carefully. Obtain these initial values from the measured data as follows. Assume that the input function has a peak that should be modeled by the first term of the functional form. That is, determine a region of interest (ROI) and a peak therein at step 103. The further terms then describe the remaining parts (the tail). From the ROI averaged data, a set of reference points is extracted based on the peak location (eqs. (13)-(14)) that will be used for the initial parameter computation at step 104 as follows:
let
τ=a time normalization parameter (in most cases it is a constant)
T=number of time samples
N=number of terms in the input function
then the first point is the maximum or peak obtained using eqs. (13)-(14)
t
max,1=arg max y(t) (13)
y
max,1
=y(tmax,1) (14)
t
max,j
=t
max,j-1+(T−tmax,1)/N, j=2, . . . , N (15)
y
max,j
=y(tmax,j), j=2, . . . , N (16)
and the remaining points of the tail for j=2, . . . , N points are obtained using eqs. (15)-(16). With these assumptions and the predefined Bi values, the initial parameter values are computed from the reference points
and the following equations at step 105
3. “Optimal” Input Function Computation
At step 106, from the estimated collection of input functions {cp,1(t), . . . , cp,M(t)} we select the best one that minimizes the Bayesian Information Criterion (BIC)
with nj the number of free parameters of the model and T the number of samples (data points) used to estimate the parameters.
Referring to
Referring to
While the preferred embodiments of the present invention have been illustrated and described, it will be understood by those skilled in the art that the system and apparatus architectures and methods as described herein are illustrative and various changes and modifications may be made and equivalents may be substituted for elements thereof without departing from the true scope of the present invention. In addition, many modifications may be made to adapt the teachings of the present invention to a particular set-up without departing from its central scope. Therefore, it is intended that the present invention not be limited to the particular embodiments disclosed as the best mode contemplated for carrying out the present invention, but that the present invention include all embodiments falling with the scope of the appended claims.
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/IB2006/052345 | 7/11/2006 | WO | 00 | 1/16/2008 |
Number | Date | Country | |
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60701338 | Jul 2005 | US |