Automated Motion Correction for Myocardial Blood Flow Measurements and Diagnostic Performance of<sup>82</sup>Rb PET Myocardial Perfusion Imaging
Keiichiro Kuronuma, Chih-Chun Wei, Ananya Singh, Mark Lemley, Sean W. Hayes, Yuka Otaki, Mark Hyun, Serge D. Van Kriekinge, Paul Kavanagh, Cathleen Huang, Donghee Han, Damini Dey, Daniel S. Berman, Piotr J. Slomka
Abstract
Motion correction (MC) affects myocardial blood flow (MBF) measurements in <sup>82</sup>Rb PET myocardial perfusion imaging (MPI); however, frame-by-frame manual MC of dynamic frames is time-consuming. This study aims to develop an automated MC algorithm for time–activity curves used in compartmental modeling and compare the predictive value of MBF with and without automated MC for significant coronary artery disease (CAD). <b>Methods:</b> In total, 565 patients who underwent PET-MPI were considered. Patients without angiographic findings were split into training (<i>n</i> = 112) and validation (<i>n</i> = 112) groups. The automated MC algorithm used simplex iterative optimization of a count-based cost function and was developed using the training group. MBF measurements with automated MC were compared with those with manual MC in the validation group. In a separate cohort, 341 patients who underwent PET-MPI and invasive coronary angiography were enrolled in the angiographic group. The predictive performance in patients with significant CAD (≥70% stenosis) was compared between MBF measurements with and without automated MC. <b>Results:</b> In the validation group (<i>n</i> = 112), MBF measurements with automated and manual MC showed strong correlations (<i>r</i> = 0.98 for stress MBF and <i>r</i> = 0.99 for rest MBF). The automatic MC took less time than the manual MC (<12 s vs. 10 min per case). In the angiographic group (<i>n</i> = 341), MBF measurements with automated MC decreased significantly compared with those without (stress MBF, 2.16 vs. 2.26 mL/g/min; rest MBF, 1.12 vs. 1.14 mL/g/min; MFR, 2.02 vs. 2.10; all <i>P</i> < 0.05). The area under the curve (AUC) for the detection of significant CAD by stress MBF with automated MC was higher than that without (AUC, 95% CI, 0.76 [0.71–0.80] vs. 0.73 [0.68–0.78]; <i>P</i> < 0.05). The addition of stress MBF with automated MC to the model with ischemic total perfusion deficit showed higher diagnostic performance for detection of significant CAD (AUC, 95% CI, 0.82 [0.77–0.86] vs. 0.78 [0.74–0.83]; <i>P</i> = 0.022), but the addition of stress MBF without MC to the model with ischemic total perfusion deficit did not reach significance (AUC, 95% CI, 0.81 [0.76–0.85] vs. 0.78 [0.74–0.83]; <i>P</i> = 0.067). <b>Conclusion:</b> Automated MC on <sup>82</sup>Rb PET-MPI can be performed rapidly with excellent agreement with experienced operators. Stress MBF with automated MC showed significantly higher diagnostic performance than without MC.