Objective <p>In positron emission tomography (PET)/magnetic resonance imaging (MRI), attenuation correction (AC) for PET of the head is achieved by MRI data to generate pseudo-computed tomography (CT) images. However, for the torso, AC becomes more challenging due to the complexity of separating bone components. Additionally, generating accurate MRI-based CT using deep learning poses significant difficulties for the chest, primarily because perfectly paired MRI and CT training data are hard to obtain owing to respiratory motion and body movements. We previously demonstrated that MRI-to-CT conversion can be achieved without deformation, even using unsupervised learning for zero echo time (ZTE) MRI and CT data from different individuals. Building on this foundation, our study aims to apply this approach to AC in chest PET/MRI and assess their quantitative accuracy, reproducibility, and external validity.</p> Methods <p>The datasets used included (1) training dataset (unpaired ZTE MRI and CT of PET/CT, <i>n</i> = 360 and 500, respectively); (2) test dataset (paired PET/MRI and PET/CT, <i>n</i> = 25 and 25, respectively); (3) repeatability assessment dataset (repeated PET/MRI, <i>n</i> = 15 × 2 scans for the same patient); and (4) external validation dataset (paired MRI component of PET/MRI and CT, <i>n</i> = 30 and 30, respectively, acquired at another institution). Unpaired training data were used to train the deep learning model of pseudo-CT generation from ZTE. The accuracy, repeatability, and reproducibility of the PET/MRI scans using ZTE- and deep learning-based AC (MRAC<sub>ZTE</sub>) were evaluated based on the similarity of the histograms and the mean standardized uptake value (SUVmean) of physiological background of bone and liver.</p> Results <p>The histogram correlation coefficients between MRAC<sub>ZTE</sub> and the AC map based on the CT (CTAC) for the spine were significantly higher than those between conventional AC (MRAC<sub>Dixon</sub>) and CTAC. Additionally, bone SUVmean obtained using MRAC<sub>ZTE</sub> showed reduced bias relative to CTAC compared with MRAC<sub>Dixon</sub>. This method proved to be reproducible on each patient level and robust against external validation.</p> Conclusions <p>Unsupervised learning with unpaired ZTE and CT data enabled pseudo-CT generation with bone components that closely matched CT-based attenuation maps. Integration into MR-based attenuation correction resulted in stable physiological uptake measurements in chest PET/MRI, supporting the feasibility of this approach.</p>

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Zero-TE MRI-based attenuation correction for bone components on chest [18F] FDG PET/MRI: accuracy, repeatability, and external validation of an unsupervised deep learning approach using unpaired PET/CT data

  • Munenobu Nogami,
  • Hidetoshi Matsuo,
  • Mizuho Nishio,
  • Feibi Zeng,
  • Junko Inoue Inukai,
  • Miho Tachibana,
  • Florian Wiesinger,
  • Sandeep Kaushik,
  • Takako Kurimoto,
  • Kazuhiro Kubo,
  • Martin W. Huellner,
  • Hidehiko Okazawa,
  • Takamichi Murakami

摘要

Objective

In positron emission tomography (PET)/magnetic resonance imaging (MRI), attenuation correction (AC) for PET of the head is achieved by MRI data to generate pseudo-computed tomography (CT) images. However, for the torso, AC becomes more challenging due to the complexity of separating bone components. Additionally, generating accurate MRI-based CT using deep learning poses significant difficulties for the chest, primarily because perfectly paired MRI and CT training data are hard to obtain owing to respiratory motion and body movements. We previously demonstrated that MRI-to-CT conversion can be achieved without deformation, even using unsupervised learning for zero echo time (ZTE) MRI and CT data from different individuals. Building on this foundation, our study aims to apply this approach to AC in chest PET/MRI and assess their quantitative accuracy, reproducibility, and external validity.

Methods

The datasets used included (1) training dataset (unpaired ZTE MRI and CT of PET/CT, n = 360 and 500, respectively); (2) test dataset (paired PET/MRI and PET/CT, n = 25 and 25, respectively); (3) repeatability assessment dataset (repeated PET/MRI, n = 15 × 2 scans for the same patient); and (4) external validation dataset (paired MRI component of PET/MRI and CT, n = 30 and 30, respectively, acquired at another institution). Unpaired training data were used to train the deep learning model of pseudo-CT generation from ZTE. The accuracy, repeatability, and reproducibility of the PET/MRI scans using ZTE- and deep learning-based AC (MRACZTE) were evaluated based on the similarity of the histograms and the mean standardized uptake value (SUVmean) of physiological background of bone and liver.

Results

The histogram correlation coefficients between MRACZTE and the AC map based on the CT (CTAC) for the spine were significantly higher than those between conventional AC (MRACDixon) and CTAC. Additionally, bone SUVmean obtained using MRACZTE showed reduced bias relative to CTAC compared with MRACDixon. This method proved to be reproducible on each patient level and robust against external validation.

Conclusions

Unsupervised learning with unpaired ZTE and CT data enabled pseudo-CT generation with bone components that closely matched CT-based attenuation maps. Integration into MR-based attenuation correction resulted in stable physiological uptake measurements in chest PET/MRI, supporting the feasibility of this approach.