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Learning To Recover Sharp Detail From Simulated Low-Dose Ct Studies

机译:学习恢复模拟低剂量CT研究的清晰细节

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Radiology exams require exposing a patient to a variable dosage of radiation. Importantly, the amount of radiation used during the exam directly corresponds to the level of noise in the resulting image, and increased amounts of radiation can pose health risks to patients. This results in a tradeoff, as radiologists need a high-quality image to make a diagnosis. In this work, we propose a method to recover image fidelity given a noisy, or low-dose, sample. Using a two-part criterion that consists of a pixel-wise loss and an adversarial loss, we are able to recover the structure and fine detail of the normal-dose sample. To evaluate the denoising method, we implement simulations of realistic low-dose noise for a computed tomography exam, which may be of independent interest. Quantitative and qualitative results highlight the performance of our approach as compared to existing baselines.
机译:放射学检查需要将患者暴露于可变剂量的辐射。 重要的是,考试期间使用的辐射量直接对应于所得图像中的噪声水平,并且增加的辐射量可能对患者构成健康风险。 这导致权衡,因为放射科医生需要高质量的形象来诊断。 在这项工作中,我们提出了一种在给予嘈杂或低剂量样本的情况下恢复图像保真度的方法。 使用由像素明显损失和越野损失组成的两部分标准,我们能够恢复正常剂量样品的结构和细节。 为了评估去噪方法,我们对计算的断层摄影考试进行了现实低剂量噪声的模拟,这可能具有独立的兴趣。 定量和定性结果突出了与现有基线相比的方法的性能。

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