Title :
Prediction of Lung Tumor Evolution During Radiotherapy in Individual Patients With PET
Author :
Hongmei Mi ; Petitjean, Caroline ; Dubray, Bernard ; Vera, Pierre ; Su Ruan
Author_Institution :
Lab. LITIS, Univ. of Rouen, Rouen, France
Abstract :
We propose a patient-specific model based on partial differential equation to predict the evolution of lung tumors during radiotherapy. The evolution of tumor cell density is formulated by three terms: 1) advection describing the advective flux transport of tumor cells, 2) proliferation representing the tumor cell proliferation modeled as Gompertz differential equation, and 3) treatment quantifying the radiotherapeutic efficacy from linear quadratic formulation. We consider that tumor cell density variation can be derived from positron emission tomography images, the novel idea is to model the advection term by calculating 3D optical flow field from sequential images. To estimate patient-specific parameters, we propose an optimization between the predicted and observed images, under a global constraint that the tumor volume decreases exponentially as radiation dose increases. A thresholding on the predicted tumor cell densities is then used to define tumor contours, tumor volumes and maximum standardized uptake values (SUVmax). Results obtained on seven patients show a satisfying agreement between the predicted tumor contours and those drawn by an expert.
Keywords :
cellular biophysics; lung; partial differential equations; positron emission tomography; radiation therapy; tumours; 3D optical flow field; Gompertz differential equation; PET; advection; advective flux transport; individual patients; linear quadratic formulation; lung tumor evolution prediction; maximum standardized uptake values; partial differential equation; patient-specific model; patient-specific parameters; positron emission tomography images; radiation dose; radiotherapeutic efficacy; radiotherapy; sequential images; tumor cell density variation; tumor cell proliferation; tumor contours; tumor volumes; Brain modeling; Lungs; Mathematical model; Positron emission tomography; Predictive models; Solid modeling; Tumors; Advection diffusion reaction equation; optical flow; patient-specific model; positron emission tomography (PET); prediction; radiotherapy;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2014.2301892