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Dual gating myocardial perfusion SPECT denoising using a conditional generative adversarial network

Jingzhang Sun, Qi Zhang, Yu Du, Duo Zhang, P. Hendrik Pretorius, Michael A. King, Greta S. P. Mok

2022Medical Physics17 citationsDOI

Abstract

PURPOSE: Dual respiratory-cardiac gating reduces respiratory and cardiac motion blur in myocardial perfusion single-photon emission computed tomography (MP-SPECT). However, image noise is increased as detected counts are reduced in each dual gate (DG). We aim to develop a denoising method for dual gating MP-SPECT images using a 3D conditional generative adversarial network (cGAN). METHODS: Tc-sestamibi SPECT/CT datasets were re-binned into 7 respiratory gates and 8 CGs, that is, 56 DGs for maximum likelihood expectation maximization reconstruction. We evaluated the use of (i) phantoms' own datasets (patient-specific denoising [PD]) or other phantoms' datasets (cross-patient denoising) for training; (ii) the CG or the static (non-gated [NG]) data as the training references for cGAN; and (iii) cGAN as compared to conventional 3D post-reconstruction filtering, cardiac gating methods, and convolutional neural network. Normalized mean squared error, noise as assessed by normalized standard deviation, spatial blurring measured as the full-width-at-half-maximum of left ventricular wall, ejection fraction, joint correlation histogram, and defect size were analyzed as metrics of image quality. RESULTS: Training using patients' own dataset is superior to conventional training based on other patients' data. Using CG image as training reference provides a better trade-off in terms of noise and image blur as compared to the use of NG. cGAN-CG-PD provides superior performance as compared to other denoising methods for all physical and diagnostic indices evaluated in both simulation and clinical studies. CONCLUSIONS: cGAN denoising is promising for dual gating MP-SPECT based on the metrics mentioned earlier.

Topics & Concepts

Noise reductionArtificial intelligencePattern recognition (psychology)Image qualityIterative reconstructionSingle-photon emission computed tomographyComputer scienceMedical imagingPerfusion scanningNoise (video)Nuclear medicineMyocardial perfusion imagingMathematicsAlgorithmMedicinePerfusionImage (mathematics)RadiologyMedical Imaging Techniques and ApplicationsCardiac Imaging and DiagnosticsAdvanced X-ray and CT Imaging
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