The CNN-based motion-correction framework significantly improved temporal alignment, reducing Target Registration Error (TRE) for low-dose myocardial CT perfusion imaging.
Does a CNN-based motion-correction framework improve temporal alignment in low-dose myocardial CT perfusion imaging compared to traditional nonrigid registration methods?
A CNN-based motion-correction framework improves temporal alignment and reduces registration error in low-dose myocardial CT perfusion imaging, enabling more accurate myocardial perfusion measurements.
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Dynamic myocardial CT perfusion imaging enables functional assessment of coronary artery stenosis and myocardial microvascular disease. However, it is susceptible to residual motion artifacts arising from cardiac and respiratory activity. These artifacts introduce temporal misalignments, distorting Time-Enhancement Curves (TECs) and leading to inaccurate myocardial perfusion measurements. Traditional nonrigid registration methods can address such motion but are often computationally expensive and less effective when applied to low-dose images, which are prone to increased noise and structural degradation. In this work, we present a CNN-based motion-correction framework specifically trained for low-dose cardiac CT perfusion imaging. The model leverages spatiotemporal patterns to estimate and correct residual motion between time frames, aligning anatomical structures while preserving dynamic contrast behaviour. Unlike conventional methods, our approach avoids iterative optimization and manually defined similarity metrics, enabling faster, more robust corrections. Quantitative evaluation demonstrates significant improvements in temporal alignment, with reduced Target Registration Error (TRE) and increased correlation between voxel-wise TECs and reference curves. These enhancements enable more accurate myocardial perfusion measurements. Noise from low-dose scans affects registration performance, but this remains an open challenge. This work emphasizes the potential of learning-based methods to perform effective residual motion correction under challenging acquisition conditions, thereby improving the reliability of myocardial perfusion assessment.
Hasan et al. (Tue,) reported a other. The CNN-based motion-correction framework significantly improved temporal alignment, reducing Target Registration Error (TRE) for low-dose myocardial CT perfusion imaging.