Affiliation:
1. University of Queensland Centre for Advanced Imaging
2. The University of Queensland Centre for Advanced Imaging
3. : Siemens Healthcare Private Limited
4. Siemens Healthcare Private Limited
5. University of Bern: Universitat Bern
Abstract
Abstract
Background
The indirect method for generating parametric images in Positron Emission Tomography (PET) involves the acquisition and reconstruction of dynamic images and temporal modelling of tissue activity given a measured arterial input function. This approach is not robust, as noise in each dynamic image leads to a degradation in parameter estimation. Direct methods incorporate into the image reconstruction step both the kinetic and noise models, leading to improved parametric images. These methods require extensive computational time and large computing resources. Machine learning methods have demonstrated significant potential in overcoming these challenges. but they are limited by the requirement of a paired training dataset. A further challenge within the existing framework is the use of state-of-the-art arterial input function estimation via temporal arterial blood sampling, which is an invasive procedure, or an additional Magnetic Resonance Imaging (MRI) scan for selecting a region where arterial blood signal can be measured from the PET image. We propose a novel machine learning approach for reconstructing high-quality parametric images from histoimages produced from time-of-flight PET data without requiring invasive arterial sampling, MRI scan or paired training data.
Result
The proposed is tested on a simulated phantom and five oncological subjects undergoing an 18F-FDG-PET scan of the brain using Siemens Biograph Vision Quadra. Kinetic parameters set in the brain phantom correlated strongly with the estimated parameters (K1, k2 and k3, Pearson correlation coefficient of 0.91, 0.92 and 0.93) and a mean squared error of less than 0.0004. In addition, our method significantly outperforms (p < 0.05, paired t-test) the conventional non-linear least squares method in terms of contrast-to-noise ratio. At last, the proposed method was found to be 37% faster than the conventional method.
Conclusion
We proposed a direct non-invasive DL-based reconstruction method producing parametric images of higher quality. The use of histoimages holds promising potential for enhancing the estimation of parametric images, an area that has not been extensively explored thus far. The proposed method can be applied to subject-specific dynamic PET data alone.
Publisher
Research Square Platform LLC
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