Radiologist-in-the-Loop Self-Training for Generalizable CT Metal Artifact Reduction

Chenglong Ma;Zilong Li;Yuanlin Li;Jing Han;Junping Zhang;Yi Zhang;Jiannan Liu;Hongming Shan
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Abstract

Metal artifacts in computed tomography (CT) images can significantly degrade image quality and impede accurate diagnosis. Supervised metal artifact reduction (MAR) methods, trained using simulated datasets, often struggle to perform well on real clinical CT images due to a substantial domain gap. Although state-of-the-art semi-supervised methods use pseudo ground-truths generated by a prior network to mitigate this issue, their reliance on a fixed prior limits both the quality and quantity of these pseudo ground-truths, introducing confirmation bias and reducing clinical applicability. To address these limitations, we propose a novel radiologist-in-the-loop self-training framework for MAR, termed RISE-MAR, which can integrate radiologists’ feedback into the semi-supervised learning process, progressively improving the quality and quantity of pseudo ground-truths for enhanced generalization on real clinical CT images. For quality assurance, we introduce a clinical quality assessor model that emulates radiologist evaluations, effectively selecting high-quality pseudo ground-truths for semi-supervised training. For quantity assurance, our self-training framework iteratively generates additional high-quality pseudo ground-truths, expanding the clinical dataset and further improving model generalization. Extensive experimental results on multiple clinical datasets demonstrate the superior generalization performance of our RISE-MAR over state-of-the-art methods, advancing the development of MAR models for practical application. The source code is available at https://github.com/Masaaki-75/rise-mar.
放射科医师在环自我培训,可推广的CT金属伪影减少
计算机断层扫描(CT)图像中的金属伪影会严重降低图像质量,阻碍准确诊断。使用模拟数据集训练的监督金属伪影还原(MAR)方法,由于存在很大的域差距,通常难以在真实的临床CT图像上表现良好。尽管最先进的半监督方法使用由先验网络生成的伪基础事实来缓解这一问题,但它们对固定先验的依赖限制了这些伪基础事实的质量和数量,从而引入确认偏差并降低了临床适用性。为了解决这些限制,我们提出了一种新的放射科医生在环自我训练框架,称为RISE-MAR,它可以将放射科医生的反馈整合到半监督学习过程中,逐步提高伪基础事实的质量和数量,以增强对真实临床CT图像的泛化。为了保证质量,我们引入了一个临床质量评估模型,模拟放射科医生的评估,有效地选择高质量的伪事实进行半监督训练。为了保证数量,我们的自我训练框架迭代地生成额外的高质量伪事实,扩展临床数据集并进一步提高模型泛化。在多个临床数据集上的广泛实验结果表明,我们的RISE-MAR比最先进的方法具有更好的泛化性能,推动了MAR模型在实际应用中的发展。源代码可从https://github.com/Masaaki-75/rise-mar获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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