Abstract

ObjectivesPositron emission tomography acquisition takes several minutes representing an image averaged over multiple breathing cycles. Therefore, in areas influenced by respiratory movement, PET-positive lesions occur larger, but less intensive than they actually are, resulting in false quantitative assessment. We developed a motion-correction algorithm based on 4D-CT without the need to adapt PET-acquisition.MethodsThe algorithm is based on a full 3D iterative Richardson-Lucy-Deconvolution using a point-spread-function constructed using the motion information obtained from the 4D-CT. In a motion phantom study (3 different hot spheres in background activity), optimal parameters for the algorithm in terms of number of iterations and start image were estimated. Finally, the correction method was applied to 3 patient data sets. In phantom and patient data sets lesions were delineated and compared between motion corrected and uncorrected images for activity uptake and volume.ResultsPhantom studies showed best results for motion correction after 6 deconvolution steps or higher. In phantom studies, lesion volume improved up to 23% for the largest, 43% for the medium and 49% for the smallest sphere due to the correction algorithm. In patient data the correction resulted in a significant reduction of the tumor volume up to 33.3 % and an increase of the maximum and mean uptake of the lesion up to 62.1 and 19.8 % respectively.ConclusionIn conclusion, the proposed motion correction method showed good results in phantom data and a promising reduction of detected lesion volume and a consequently increasing activity uptake in three patients with lung lesions.

Highlights

  • Positron emission tomography (PET), especially in combination with computed tomography (CT) is gaining more and more influence in the diagnosis, staging, therapy planning and treatment response control in cancer patients [1,2,3,4]

  • Positron emission tomography acquisition takes several minutes representing an image averaged over multiple breathing cycles

  • Lesion volume improved up to 23% for the largest, 43% for the medium and 49% for the smallest sphere due to the correction algorithm

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Summary

Introduction

Positron emission tomography (PET), especially in combination with computed tomography (CT) is gaining more and more influence in the diagnosis, staging, therapy planning and treatment response control in cancer patients [1,2,3,4]. As image acquisition takes several minutes PET is sensitive to movement of the patient, www.oncotarget.com especially for periodic motion as breathing. In the lung respiratory movement of up to 24 mm was reported, especially in the lower lobes [5]. Such movement can result in blurred images with lesions appearing larger but less intensive than they are. This causes a misalignment between PET and CT data, which is increased due to patient motion. [7]

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