论文标题

胸部X光片上的骨骼抑制作用

Bone Suppression on Chest Radiographs With Adversarial Learning

论文作者

Liang, Jia, Tang, Yuxing, Tang, Youbao, Xiao, Jing, Summers, Ronald M.

论文摘要

双能(DE)胸部射线照相具有选择性成像两种临床相关的材料,即软组织和骨结构,以更好地表征多种胸病病理学,并有可能改善后裂(PA)胸部X光片的诊断。但是,DE成像需要专门的硬件和更高的辐射剂量,而辐射剂量比常规放射线照相术,并且有时由于非自愿患者运动而发生运动伪像。在这项工作中,我们了解了传统的X光片和骨骼抑制X光片之间的映射。具体而言,我们建议利用两种变体的生成对抗网络(GAN)来进行图像到图像对图像到图像的翻译,并抑制了通过DE成像技术获得的X光片。我们比较了训练与患者配对和未配对的X光片的有效性。 Experiments show both training strategies yield "radio-realistic'' radiographs with suppressed bony structures and few motion artifacts on a hold-out test set. While training with paired images yields slightly better performance than that of unpaired images when measuring with two objective image quality metrics, namely Structural Similarity Index (SSIM) and Peak Signal-to-Noise Ratio (PSNR), training with unpaired images demonstrates better generalization ability on unseen前后(AP)X光片比配对训练。

Dual-energy (DE) chest radiography provides the capability of selectively imaging two clinically relevant materials, namely soft tissues, and osseous structures, to better characterize a wide variety of thoracic pathology and potentially improve diagnosis in posteroanterior (PA) chest radiographs. However, DE imaging requires specialized hardware and a higher radiation dose than conventional radiography, and motion artifacts sometimes happen due to involuntary patient motion. In this work, we learn the mapping between conventional radiographs and bone suppressed radiographs. Specifically, we propose to utilize two variations of generative adversarial networks (GANs) for image-to-image translation between conventional and bone suppressed radiographs obtained by DE imaging technique. We compare the effectiveness of training with patient-wisely paired and unpaired radiographs. Experiments show both training strategies yield "radio-realistic'' radiographs with suppressed bony structures and few motion artifacts on a hold-out test set. While training with paired images yields slightly better performance than that of unpaired images when measuring with two objective image quality metrics, namely Structural Similarity Index (SSIM) and Peak Signal-to-Noise Ratio (PSNR), training with unpaired images demonstrates better generalization ability on unseen anteroposterior (AP) radiographs than paired training.

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