Reliable quantification of functional medical images, such as Positron Emission Tomography (PET), is becoming an increasingly important feature for the detection and treatment of medical abnormalities. A PET image is used to provide a clinician or physician information regarding the physiological condition of regions of interest (ROI).
The partial volume effect (PVE) in PET is a problem for quantitative tracer studies as it may lead to misinterpretation of the data collected. The partial volume effect results from the limited spatial resolution of the imaging device, and impairs the ability to distinguish between two points after image reconstruction. The limited resolution of a PET imaging system is the main reason for the PVE, which leads to a decrease of contrast and peak recovery for small objects. The partial volume effect is caused by spillover of radioactivity into neighboring regions and the underlying tissue inhomogeneity of the particular region. The partial volume effect results in a blurring of the data and difficulty in providing quantification of the data. For example, PVE can result in an underestimation of activity or standardized uptake value (SUV) for small lesions.
The two main strategies to solve this problem are voxel-based and region-based deconvolution. The latter, one example being the GTM method, needs additional anatomical information, e.g. from a co-registered CT image. However, this additional information might not always be available. Furthermore, inaccurate registration might introduce new artifacts that limit the benefit of the method. The GTM method therefore relies on accurate input (definition of regions of interest with homogeneous activity concentrations, manual correction of registration errors, etc.) by the clinician.
On the other hand, voxel-based deconvolution, e.g. the iterative RL method, requires no additional input from the clinician, and might therefore be easy to handle. However, the noisy nature of PET images makes deconvolution an ill-posed problem as it seldom produces satisfactory, quantitative results. Iterative algorithms with regularization are needed to prevent noise amplification, making it a time-consuming and error-prone procedure.
The present invention is directed to a system and method for quantifying a region of interest in a medical image, and in particular in a PET image. The system and method allow the clinician to make real time quantitative analysis of a region of interest without requiring anatomical information from a CT image and without a complex iterative algorithm for regularization.
In one embodiment, the system and method are used to quantify small lesions within a region of interest. A set of virtual lesions can be generated and then visually compared to the actual lesion. Quantitative information, such as lesion size and tracer activity, or SUV, can be obtained to assist the clinician or physician in the diagnosis and treatment of the lesion.
In the accompanying drawings, which are incorporated in and constitute a part of this specification, embodiments of the invention are illustrated, which, together with a general description of the invention given above, and the detailed description given below serve to illustrate the principles of this invention. One skilled in the art should realize that these illustrative embodiments are not meant to limit the invention, but merely provide examples incorporating the principles of the invention.
The system and method of quantitative analysis of PET images provided herein allows the clinician or physician to utilize his or her own knowledge and background to make real time comparisons to allow for quantification of lesions within the region of interest. This approach is particularly helpful in that it provides a quick and simple visual approach to solve quantitative problems, such as, for example, determination of lesion size or lesion SUV.
In one embodiment of the invention, the clinician can easily establish quantitative parameters for lesions, which appear as hot regions in PET images. Once the clinician identifies a lesion, the lesion is compared to a set of computed virtual lesions, which can vary in predetermined parameters such as, for example, size and activity. The clinician can quickly and easily adjust the virtual lesion parameters until the virtual lesion “matches” the lesion in the PET image. By “matching” the virtual lesion to the lesion in the PET image, it is meant that the virtual image and PET image lesion can be visually compared to determine whether the parameters of the virtual lesion are correctly chosen. For example, the virtual lesion may be displayed in subtraction mode or overlay mode. In subtraction mode, best shown in
One example of a method that implements the invention is as follows. Software is provided to the clinician that allows implementation of the method in an efficient manner. The software includes an algorithm for modeling the point spread function (PSF) from either simulations or phantom images. The point spread function is used to calculate the set of virtual lesions, as discussed in further detail below.
With reference to
Once the center of the hot spot 20 and the desired shape of the virtual lesion have been determined, the software uses the point spread function to calculate a number of simulated images, or virtual lesions, that vary in preselected parameters. For example, a set of virtual lesions can be created with varying sizes or activity. As a specific example, 20 virtual lesions 30 (see
One of the virtual lesions 30 appears in a graphical user interface (GUI) 40, which includes a set of sliders 50 for changing the parameters of the virtual lesion. Other means for changing the parameters of the virtual lesion 30 can also be used, such as, for example, numerical inputs or up/down arrows. The PET image 10 also appears in the GUI 40. As mentioned above, the virtual lesion 30 can appear in subtraction mode, as shown in
The clinician can interactively change the parameters, e.g. radius and activity, of the virtual lesion while he observes the alternative view in real-time. The parameters are continually adjusted until the correct parameters are determined. The result is an accurate estimate of the lesion size as well as the lesion activity or SUV.
The Figures will now be discussed in further detail as they illustrate examples of the method discussed above.
In
The examples shown in
The method described herein allows for a clinician to quickly and easily determine the parameter values of a virtual lesion, which in turn translate into the physical characteristics of the actual lesion. The speed and accuracy in which the clinician can determine the activity, or SUV, and size of a lesion are dramatically improved over conventional techniques. This is especially true for the notoriously problematic case of small lesions that show a bad contrast recovery due to the limited resolution of the imaging system.
It should be noted that variations of the method discussed above can also be implemented. For example, the parameter determination process, or a portion thereof, can be automated. For instance, the radius of the virtual lesion might be manually determined through an interactive iterative process, while the activity of the virtual lesion is determined with a real-time optimization algorithm. The process can also be modified to account for other effects besides spatial resolution. For example, the point spread function could also account for other parameters, such as noise in the PET image. Furthermore, the method is not intended to be limited to quantification of PET images, but may also be employed in other medical imaging systems, such as SPECT.
The invention is also directed to a system for quantitative analysis of medical images, and has particular application in PET imaging systems. The system employs standard imaging equipment, including one or more detectors, a gantry and a patient table. The system also includes a source of radioactivity that is used to produce an image and a software system for receiving and processing data and producing an image of the source. It should be noted that other imaging systems can be used and that the system described herein is not meant to be limiting.
The system further includes an image quantification improvement component. This component is generally comprised of a software package, which can be incorporated into the standard image acquisition and region of interest software or can be separately implemented. The image quantification improvement software includes a model of the point spread function of the imaging system. Data provided from simulations or phantom images can be used to develop a model of the point spread function. The algorithm is then used to generate a set of virtual lesions once a clinician provides a PET image with a selected region of interest. The set of virtual images generated can be stored in a permanent memory source, or more preferably, in a temporary memory source that can be overwritten when the next set of virtual lesions is generated.
The system further includes a graphical user interface 40, such as the one shown in
The invention has been described with reference to one or more preferred embodiments. Clearly, modifications and alterations will occur to other upon a reading and understanding of this specification. It is intended to include all such modifications and alterations insofar as they come within the scope of the appended claims or equivalents thereof.
Number | Date | Country | Kind |
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60/677172 | May 2005 | US | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/IB06/51208 | 4/19/2006 | WO | 00 | 11/1/2007 |