Small metal artifact detection and inpainting in cardiac CT images
Background: Quantification of cardiac motion on pre-treatment CT imaging for stereotactic arrhythmia radiotherapy patients is difficult due to the presence of image artifacts caused by metal leads of implantable cardioverter-defibrillators (ICDs). New methods are needed to accurately reduce the meta...
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Zusammenfassung: | Background: Quantification of cardiac motion on pre-treatment CT imaging for
stereotactic arrhythmia radiotherapy patients is difficult due to the presence
of image artifacts caused by metal leads of implantable
cardioverter-defibrillators (ICDs). New methods are needed to accurately reduce
the metal artifacts in already reconstructed CTs to recover the otherwise lost
anatomical information. Purpose: To develop a methodology to automatically
detect metal artifacts in cardiac CT scans and inpaint the affected volume with
anatomically consistent structures and values. Methods: ECG-gated 4DCT scans of
12 patients who underwent cardiac radiation therapy for treating ventricular
tachycardia were collected. The metal artifacts in the images were manually
contoured. A 2D U-Net deep learning (DL) model was developed to segment the
metal artifacts. A dataset of synthetic CTs was prepared by adding metal
artifacts from the patient images to artifact-free CTs. A 3D image inpainting
DL model was trained to refill the metal artifact portion in the synthetic
images with realistic values. The inpainting model was evaluated by analyzing
the automated segmentation results of the four heart chambers on the synthetic
dataset. Additionally, the raw cardiac patient cases were qualitatively
inspected. Results: The artifact detection model produced a Dice score of 0.958
+- 0.008. The inpainting model was able to recreate images with a structural
similarity index of 0.988 +- 0.012. With the chamber segmentations improved
surface Dice scores from 0.684 +- 0.247 to 0.964 +- 0.067 and the Hausdorff
distance reduced from 3.4 +- 3.9 mm to 0.7 +- 0.7 mm. The inpainting model's
use on cardiac patient CTs was visually inspected and the artifact-inpainted
images were visually plausible. Conclusion: We successfully developed two deep
models to detect and inpaint metal artifacts in cardiac CT images. |
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DOI: | 10.48550/arxiv.2409.17342 |