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[Mitigating metal artifacts in cone-beam CT images through deep learning techniques].
Jia, L H; Lin, H L; Zheng, S W; Lin, X J; Zhang, D; Yu, H.
Affiliation
  • Jia LH; Department of Prosthodontics, School and Hospital of Stomatology, Fujian Medical University, Fuzhou 350002, China.
  • Lin HL; Department of Prosthodontics, School and Hospital of Stomatology, Fujian Medical University, Fuzhou 350002, China.
  • Zheng SW; College of Computer and Data Science, Fuzhou University, Fuzhou 350108, China.
  • Lin XJ; Department of Prosthodontics, School and Hospital of Stomatology, Fujian Medical University, Fuzhou 350002, China.
  • Zhang D; College of Computer and Data Science, Fuzhou University, Fuzhou 350108, China.
  • Yu H; Department of Prosthodontics, School and Hospital of Stomatology, Fujian Medical University, Fuzhou 350002, China.
Zhonghua Kou Qiang Yi Xue Za Zhi ; 59(1): 71-79, 2023 Dec 29.
Article in Zh | MEDLINE | ID: mdl-38172064
ABSTRACT

Objective:

To develop and evaluate metal artifact removal systems (MARSs) based on deep learning to assess their effectiveness in removing artifacts caused by different thicknesses of metals in cone-beam CT (CBCT) images.

Methods:

A full-mouth standard model (60 mm×75 mm×110 mm) was three-dimensional (3D) printed using photosensitive resin. The model included a removable and replaceable target tooth position where cobalt-chromium alloy crowns with varying thicknesses were inserted to generate matched CBCT images. The artifacts resulting from cobalt-chromium alloys with different thicknesses were evaluated using the structural similarity index measure (SSIM) and peak signal-to-noise ratio (PSNR). CNN-MARS and U-net-MARS were developed using a convolutional neural network and U-net architecture, respectively. The effectiveness of both MARSs were assessed through visualization and by measuring SSIM and PSNR values. The SSIM and PSNR values were statistically analyzed using one-way analysis of variance (α=0.05).

Results:

Significant differences were observed in the range of artifacts produced by different thicknesses of cobalt-chromium alloys (all P<0.05), with 1 mm resulting in the least artifacts. The SSIM values for specimens with thicknesses of 1.0 mm, 1.5 mm, and 2.0 mm were 0.916±0.019, 0.873±0.010, and 0.833±0.010, respectively (F=447.89, P<0.001). The corresponding PSNR values were 20.834±1.176, 17.002±0.427, and 14.673±0.429, respectively (F=796.51, P<0.001). After applying CNN-MARS and U-net-MARS to artifact removal, the SSIM and PSNR values significantly increased for images with the same thickness of metal (both P<0.05). When using the CNN-MARS for artifact removal, the SSIM values for 1.0, 1.5 and 2.0 mm were 0.938±0.023, 0.930±0.029, and 0.928±0.020 (F=2.22, P=0.112), while the PSNR values were 30.938±1.495, 30.578±2.154 and 30.553±2.355 (F=0.54, P=0.585). When using the U-net-MARS for artifact removal, the SSIM values for 1.0, 1.5 and 2.0 mm were 0.930±0.024, 0.932±0.017 and 0.930±0.012 (F=0.24, P=0.788), and the PSNR values were 30.291±0.934, 30.351±1.002 and 30.271±1.143 (F=0.07, P=0.929). No significant differences were found in SSIM and PSNR values after artifact removal using CNN-MARS and U-net-MARS for different thicknesses of cobalt-chromium alloys (all P>0.05). Visualization demonstrated a high degree of similarity between the images before and after artifact removal using both MARSs. However, CNN-MARS displayed clearer metal edges and preserved more tissue details when compared with U-net-MARS.

Conclusions:

Both the CNN-MARS and U-net-MARS models developed in this study effectively remove the metal artifacts and enhance the image quality. CNN-MARS exhibited an advantage in restoring tissue structure information around the artifacts compared to U-net-MARS.

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: Zh Journal: Zhonghua Kou Qiang Yi Xue Za Zhi Year: 2023 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: Zh Journal: Zhonghua Kou Qiang Yi Xue Za Zhi Year: 2023 Document type: Article