Abstract:
Motion compensation is an effective approach for noise suppression and motion blur reduction in cardiac-gated SPECT imaging. In this work, we investigate the potential be...Show MoreMetadata
Abstract:
Motion compensation is an effective approach for noise suppression and motion blur reduction in cardiac-gated SPECT imaging. In this work, we investigate the potential benefit of applying motion compensation with a deep learning (DL) network for assessment of perfusion defects in gated images. In addition to evaluating motion-compensation accuracy on clinical acquisitions, we also conduct a receiver-operating characteristic (ROC) study to assess the detection performance of perfusion detects when DL motion compensation is used to generate the perfusion images. For this task we use a clinical model observer on a set of hybrid studies generated from clinical acquisitions in which the perfusion defects are introduced as ground truth. The results in the experiments demonstrate that DL motion compensation can yield higher detection accuracy than conventional ungated studies.
Date of Conference: 18-21 April 2023
Date Added to IEEE Xplore: 01 September 2023
ISBN Information: