Enhancing Radiographic Diagnosis: CycleGAN-Based Methods for Reducing Cast Shadow Artifacts in Wrist Radiographs.

Stanley A Norris, Daniel Carrion, Michael Ditchfield, Manuel Gubser, Jarrel Seah, Mohamed K Badawy
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Abstract

We extend existing techniques by using generative adversarial network (GAN) models to reduce the appearance of cast shadows in radiographs across various age groups. We retrospectively collected 11,500 adult and paediatric wrist radiographs, evenly divided between those with and without casts. The test subset consisted of 750 radiographs with cast and 750 without cast. We extended the results from a previous study that employed CycleGAN by enhancing the model using a perceptual loss function and a self-attention layer. The CycleGAN model which incorporates a self-attention layer and perceptual loss function delivered a similar quantitative performance as the original model. This model was applied to images from 20 cases where the original reports recommended CT scanning or repeat radiographs without the cast, which were then evaluated by radiologists for qualitative assessment. The results demonstrated that the generated images could improve radiologists' diagnostic confidence, in some cases leading to more decisive reports. Where available, the reports from follow-up imaging were compared with those produced by radiologists reading AI-generated images. Every report, except two, provided identical diagnoses as those associated with follow-up imaging. The ability of radiologists to perform robust reporting with downsampled AI-enhanced images is clinically meaningful and warrants further investigation. Additionally, radiologists were unable to distinguish AI-enhanced from unenhanced images. These findings suggest the cast suppression technique could be integrated as a tool to augment clinical workflows, with the potential benefits of reducing patient doses, improving operational efficiencies, reducing delays in diagnoses, and reducing the number of patient visits.

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增强放射诊断:基于cyclegan的方法减少腕部x线片的投影伪影。
我们通过使用生成对抗网络(GAN)模型来扩展现有技术,以减少不同年龄组的x光片中阴影的出现。我们回顾性地收集了11,500张成人和儿童腕关节x线片,平均分为有和没有石膏的两组。测试子集包括750张浇铸和750张未浇铸的x线片。我们通过使用感知损失函数和自注意层增强模型,扩展了先前使用CycleGAN的研究结果。结合了自注意层和感知损失函数的CycleGAN模型提供了与原始模型相似的定量性能。该模型应用于来自20例的图像,其中原始报告建议CT扫描或重复x线片,然后由放射科医生进行定性评估。结果表明,生成的图像可以提高放射科医生的诊断信心,在某些情况下导致更决定性的报告。在可能的情况下,将来自随访成像的报告与放射科医生阅读人工智能生成的图像所产生的报告进行比较。除了两份报告外,所有报告都提供了与随访影像相关的相同诊断。放射科医生使用人工智能增强图像进行稳健报告的能力具有临床意义,值得进一步研究。此外,放射科医生无法区分人工智能增强和未增强的图像。这些发现表明,铸型抑制技术可以作为一种工具整合到临床工作流程中,具有减少患者剂量、提高操作效率、减少诊断延误和减少患者就诊次数的潜在好处。
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