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心脏CT图像中的小金属伪影检测与修复

Small metal artifact detection and inpainting in cardiac CT images.

作者信息

McKeown Trevor, Gach H Michael, Hao Yao, An Hongyu, Robinson Clifford G, Cuculich Phillip S, Yang Deshan

机构信息

Medical Physics Program, Duke University.

Department of Radiation Oncology, School of Medicine, Washington University in Saint Louis.

出版信息

ArXiv. 2024 Sep 25:arXiv:2409.17342v1.

Abstract

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). The CT scanners' onboard metal artifact reduction tool does not sufficiently reduce these artifacts. More advanced artifact reduction techniques require the raw CT projection data and thus are not applicable to already reconstructed CT images. 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

Breath-hold ECG-gated 4DCT scans of 12 patients who underwent cardiac radiation therapy for treating ventricular tachycardia were collected. The metal artifacts in the images caused by the ICD leads were manually contoured. A 2D U-Net deep learning (DL) model was developed to segment the metal artifacts automatically using eight patients for training, two for validation, and two for testing. A dataset of 592 synthetic CTs was prepared by adding segmented metal artifacts from the patient 4DCT images to artifact-free cardiac CTs of 148 patients. A 3D image inpainting DL model was trained to refill the metal artifact portion in the synthetic images with realistic image contents that approached the ground truth artifact-free images. The trained inpainting model was evaluated by analyzing the automated segmentation results of the four heart chambers with and without artifacts on the synthetic dataset. Additionally, the raw cardiac patient images with metal artifacts were processed using the inpainting model and the results of metal artifact reduction were qualitatively inspected.

RESULTS

The artifact detection model worked well and produced a Dice score of 0.958 ± 0.008. The inpainting model for synthesized cases was able to recreate images that were nearly identical to the ground truth with a structural similarity index of 0.988 ± 0.012. With the chamber segmentations on the artifact-free images as the reference, the average surface Dice scores improved 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. These deep models are useful to improve the heart chamber segmentation and cardiac motion analysis in CT images corrupted by mental artifacts. The trained models and example data are available to the public through GitHub.

摘要

背景

对于接受立体定向心律失常放射治疗的患者,在治疗前的CT成像上对心脏运动进行量化很困难,这是由于植入式心脏复律除颤器(ICD)的金属导线导致图像伪影的存在。CT扫描仪的机载金属伪影减少工具不能充分减少这些伪影。更先进的伪影减少技术需要原始CT投影数据,因此不适用于已经重建的CT图像。需要新的方法来准确减少已重建CT中的金属伪影,以恢复原本丢失的解剖信息。

目的

开发一种方法,自动检测心脏CT扫描中的金属伪影,并用解剖学上一致的结构和值修复受影响的区域。

方法

收集了12例因室性心动过速接受心脏放射治疗患者的屏气心电图门控4DCT扫描图像。由ICD导线引起的图像中的金属伪影进行了手动勾勒。开发了一个二维U-Net深度学习(DL)模型,使用8例患者进行训练,2例进行验证,2例进行测试,以自动分割金属伪影。通过将患者4DCT图像中分割出的金属伪影添加到148例患者的无伪影心脏CT中,制备了一个包含592个合成CT的数据集。训练了一个三维图像修复DL模型,用接近真实无伪影图像的逼真图像内容填充合成图像中的金属伪影部分。通过分析合成数据集中有无伪影情况下四个心腔的自动分割结果,对训练后的修复模型进行评估。此外,使用修复模型对带有金属伪影的原始心脏患者图像进行处理,并对金属伪影减少的结果进行定性检查。

结果

伪影检测模型运行良好,Dice评分为0.958±0.008。合成病例的修复模型能够重建与真实情况几乎相同的图像,结构相似性指数为0.988±0.012。以无伪影图像上的心腔分割为参考,平均表面Dice评分从0.684±0.247提高到0.964±0.067,豪斯多夫距离从3.4±3.9mm减小到0.7±0.7mm。对修复模型在心脏患者CT上的应用进行了视觉检查,伪影修复后的图像在视觉上是合理的。

结论

我们成功开发了两个深度模型来检测和修复心脏CT图像中的金属伪影。这些深度模型有助于改善因金属伪影而受损的CT图像中的心腔分割和心脏运动分析。训练好的模型和示例数据可通过GitHub向公众提供。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8979/11469418/9637cd5a37e6/nihpp-2409.17342v1-f0003.jpg

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