Optimization-derived blood input function using a kernel method and its evaluation with total-body PET for brain parametric imaging

Yansong Zhu, Quyen Tran, Yiran Wang,Ramsey D. Badawi, Simon R. Cherry,Jinyi Qi, Shiva Abbaszadeh,Guobao Wang

NeuroImage(2024)

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摘要
Dynamic PET allows quantification of physiological parameters through tracer kinetic modeling. For dynamic imaging of brain or head and neck cancer on conventional PET scanners with a short axial field of view (FOV), the image-derived input function (ID-IF) from intracranial blood vessels such as the carotid artery (CA) suffers from severe partial volume effects. Alternatively, optimization-derived input function (OD-IF) by the simultaneous estimation (SIME) method does not rely on an ID-IF but derives the input function directly from the data. However, the optimization problem is often highly ill-posed. We proposed a new method that combines the ideas of OD-IF and ID-IF together through a kernel framework. While evaluation of such a method is challenging in human subjects, we used the uEXPLORER total-body PET system that covers major blood pools to provide a reference for validation. Methods The conventional SIME approach estimates an input function using a joint estimation together with kinetic parameters by fitting time activity curves from multiple regions of interests (ROIs). The input function is commonly parameterized with a highly nonlinear model which is difficult to estimate. The proposed kernel SIME method exploits the CA ID-IF as a priori information via a kernel representation to stabilize the SIME approach. The unknown parameters are linear and thus easier to estimate. The proposed method was evaluated using 18F-fluorodeoxyglucose studies with both computer simulations and 20 human-subject scans acquired on the uEXPLORER scanner. The effect of the number of ROIs on kernel SIME was also explored. Results The estimated OD-IF by kernel SIME showed a good match with the reference input function and provided more accurate estimation of kinetic parameters for both simulation and human-subject data. The kernel SIME led to the highest correlation coefficient (R=0.97) and the lowest mean absolute error (MAE=10.5%) compared to using the CA ID-IF (R=0.86, MAE=108.2%) and conventional SIME (R=0.57, MAE=78.7%) in the human-subject evaluation. Adding more ROIs improved the overall performance of the kernel SIME method. Conclusion The proposed kernel SIME method shows promise to provide an accurate estimation of the blood input function and kinetic parameters for brain PET parametric imaging.
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关键词
tracer kinetic modeling,input function estimation,kernel method,total-body PET
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