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4D PET Image Reconstruction Enables Better Cancer Detection

By MedImaging International staff writers
Posted on 27 Jun 2011
A study is advancing a positron emission tomography (PET) imaging method that uses new four-dimensional (4D) image reconstruction to achieve the highest diagnostic capability for the detection of cancer. Increasing evidence revealed that PET imaging is considerably more sensitive when used with cutting-edge 4D image reconstruction technology that accounts for patient respiration and produces clearer, more easily interpreted images.

"PET imaging with 4D image reconstruction could potentially help with early cancer detection, which is an imperative in the field of nuclear oncology," said Dr. Si Chen, lead author of the study, from the Johns Hopkins School of Medicine (Baltimore, MD, USA). "The results of this study and our other studies indicate that the sensitivity of small cancer lesion detection for patients will likely benefit from this novel image reconstruction method, which incorporates an accurate and patient-specific respiratory motion estimation algorithm we previously developed. The improved diagnostic accuracy would allow physicians a more informed understanding of a patient's situation in order to provide better treatment planning for the best possible outcome."

The goal of the study was to quantify the improvement of PET image quality using the 4D PET image reconstruction technique with respiratory motion compensation compared to a more traditional 3D PET image-reconstruction method. The researchers evaluated the image reconstruction methods using the receiver operating characteristic (ROC) methodology, which is based on signal detection theory widely adopted in diagnostic radiology. A ROC curve is a graphical plot of the sensitivity versus specificity for lesion detection based on the reconstructed PET images.

Realistically simulated PET images were employed in this evaluation study using the 4D XCAT phantom--a digital anthropomorphic phantom that realistically models a typical patient's anatomy, respiratory and cardiac motions. A total of 12 spherical tumors of 10-mm diameter were planted inside the lungs and liver of the phantom, which was input to realistic simulation of PET data acquisition using another methodology called Monte-Carlo simulation. The simulated PET data were then reconstructed using both imaging reconstruction methods. The researchers used a mathematical observer, i.e., channelized Hotelling observer (CHO), to mimic the interpretation of these PET images by human observers.

Using these methodologies, researchers were able to compare the sensitivity and specificity of the two image reconstruction methods and found that the 4D PET image reconstruction method with respiratory compensation improved the detection sensitivity for the cancerous lesions in the liver and lungs. This indicates that evaluation of cancer for lesions smaller than 10 mm could be enhanced by compensating for respiratory motion with the 4D image reconstruction method.

The study's findings were presented at SNM's 58th annual meeting, held June 4-8, 2011, in San Antonio (TX, USA).

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Johns Hopkins School of Medicine



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