TY - UNPB
T1 - Deep learning-based attenuation correction in the image domain for myocardial perfusion SPECT imaging
AU - Mostafapour, Samaneh
AU - Gholamiankhah, Faeze
AU - Maroofpour, Sirvan
AU - Momennezhad, Mahdi
AU - Asadinezhad, Mohsen
AU - Rasoul Zakavi, Seyed
AU - Arabi, Hossein
PY - 2021/2/1
Y1 - 2021/2/1
N2 - Objective: In this work, we set out to investigate the accuracy of
direct attenuation correction (AC) in the image domain for the
myocardial perfusion SPECT imaging (MPI-SPECT) using two residual
(ResNet) and UNet deep convolutional neural networks. Methods: The
MPI-SPECT 99mTc-sestamibi images of 99 participants were retrospectively
examined. UNet and ResNet networks were trained using SPECT
non-attenuation corrected images as input and CT-based attenuation
corrected SPECT images (CT-AC) as reference. The Chang AC approach,
considering a uniform attenuation coefficient within the body contour,
was also implemented. Quantitative and clinical evaluation of the
proposed methods were performed considering SPECT CT-AC images of 19
subjects as reference using the mean absolute error (MAE), structural
similarity index (SSIM) metrics, as well as relevant clinical indices
such as perfusion deficit (TPD). Results: Overall, the deep learning
solution exhibited good agreement with the CT-based AC, noticeably
outperforming the Chang method. The ResNet and UNet models resulted in
the ME (count) of ${-6.99\pm16.72}$ and ${-4.41\pm11.8}$ and SSIM of
${0.99\pm0.04}$ and ${0.98\pm0.05}$, respectively. While the Change
approach led to ME and SSIM of ${25.52\pm33.98}$ and ${0.93\pm0.09}$,
respectively. Similarly, the clinical evaluation revealed a mean TPD of
${12.78\pm9.22}$ and ${12.57\pm8.93}$ for the ResNet and UNet models,
respectively, compared to ${12.84\pm8.63}$ obtained from the reference
SPECT CT-AC images. On the other hand, the Chang approach led to a mean
TPD of ${16.68\pm11.24}$. Conclusion: We evaluated two deep
convolutional neural networks to estimate SPECT-AC images directly from
the non-attenuation corrected images. The deep learning solutions
exhibited the promising potential to generate reliable attenuation
corrected SPECT images without the use of transmission scanning.
AB - Objective: In this work, we set out to investigate the accuracy of
direct attenuation correction (AC) in the image domain for the
myocardial perfusion SPECT imaging (MPI-SPECT) using two residual
(ResNet) and UNet deep convolutional neural networks. Methods: The
MPI-SPECT 99mTc-sestamibi images of 99 participants were retrospectively
examined. UNet and ResNet networks were trained using SPECT
non-attenuation corrected images as input and CT-based attenuation
corrected SPECT images (CT-AC) as reference. The Chang AC approach,
considering a uniform attenuation coefficient within the body contour,
was also implemented. Quantitative and clinical evaluation of the
proposed methods were performed considering SPECT CT-AC images of 19
subjects as reference using the mean absolute error (MAE), structural
similarity index (SSIM) metrics, as well as relevant clinical indices
such as perfusion deficit (TPD). Results: Overall, the deep learning
solution exhibited good agreement with the CT-based AC, noticeably
outperforming the Chang method. The ResNet and UNet models resulted in
the ME (count) of ${-6.99\pm16.72}$ and ${-4.41\pm11.8}$ and SSIM of
${0.99\pm0.04}$ and ${0.98\pm0.05}$, respectively. While the Change
approach led to ME and SSIM of ${25.52\pm33.98}$ and ${0.93\pm0.09}$,
respectively. Similarly, the clinical evaluation revealed a mean TPD of
${12.78\pm9.22}$ and ${12.57\pm8.93}$ for the ResNet and UNet models,
respectively, compared to ${12.84\pm8.63}$ obtained from the reference
SPECT CT-AC images. On the other hand, the Chang approach led to a mean
TPD of ${16.68\pm11.24}$. Conclusion: We evaluated two deep
convolutional neural networks to estimate SPECT-AC images directly from
the non-attenuation corrected images. The deep learning solutions
exhibited the promising potential to generate reliable attenuation
corrected SPECT images without the use of transmission scanning.
KW - Physics - Medical Physics
KW - Electrical Engineering and Systems Science - Image and Video Processing
M3 - Preprint
T3 - Journal of Computational Design and Engineering
BT - Deep learning-based attenuation correction in the image domain for myocardial perfusion SPECT imaging
PB - arXiv
ER -