CTFlow: Mitigating Effects of Computed Tomography Acquisition and Reconstruction with Normalizing Flows.

Leihao Wei, Anil Yadav, William Hsu
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Abstract

Mitigating the effects of image appearance due to variations in computed tomography (CT) acquisition and reconstruction parameters is a challenging inverse problem. We present CTFlow, a normalizing flows-based method for harmonizing CT scans acquired and reconstructed using different doses and kernels to a target scan. Unlike existing state-of-the-art image harmonization approaches that only generate a single output, flow-based methods learn the explicit conditional density and output the entire spectrum of plausible reconstruction, reflecting the underlying uncertainty of the problem. We demonstrate how normalizing flows reduces variability in image quality and the performance of a machine learning algorithm for lung nodule detection. We evaluate the performance of CTFlow by 1) comparing it with other techniques on a denoising task using the AAPM-Mayo Clinical Low-Dose CT Grand Challenge dataset, and 2) demonstrating consistency in nodule detection performance across 186 real-world low-dose CT chest scans acquired at our institution. CTFlow performs better in the denoising task for both peak signal-to-noise ratio and perceptual quality metrics. Moreover, CTFlow produces more consistent predictions across all dose and kernel conditions than generative adversarial network (GAN)-based image harmonization on a lung nodule detection task. The code is available at https://github.com/hsu-lab/ctflow.

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CTFlow:利用归一化流量减轻计算机断层扫描采集和重建的影响。
减轻因计算机断层扫描(CT)采集和重建参数变化而造成的图像外观影响是一个具有挑战性的逆问题。我们提出的 CTFlow 是一种基于归一化流量的方法,用于协调使用不同剂量和内核采集和重建的 CT 扫描与目标扫描。现有的先进图像协调方法只能生成单一输出,而基于流量的方法则不同,它能学习明确的条件密度,并输出整个可信重建谱,从而反映出问题的潜在不确定性。我们展示了流量归一化如何减少图像质量的变化以及肺结节检测机器学习算法的性能。我们通过以下方法评估 CTFlow 的性能:1)使用 AAPM-Mayo 临床低剂量 CT 大挑战数据集,在去噪任务中将 CTFlow 与其他技术进行比较;2)在本机构获取的 186 个真实世界低剂量 CT 胸部扫描中证明结节检测性能的一致性。在峰值信噪比和感知质量指标方面,CTFlow 在去噪任务中表现更好。此外,与基于生成式对抗网络(GAN)的图像协调相比,CTFlow 在肺结节检测任务中的所有剂量和内核条件下都能产生更一致的预测结果。代码见 https://github.com/hsu-lab/ctflow。
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