DenseNet超低剂量CT检测肺结节的探讨。

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Ching-Ching Yang
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引用次数: 0

摘要

CT图像上应采用低辐射技术检测和跟踪肺结节,但将辐射剂量降低到亚毫西弗剂量水平的超低剂量CT,会严重影响结节检测的图像质量和灵敏度。本研究探讨了在肺癌超低剂量CT筛查中使用DenseNet抑制图像噪声的可行性。DenseNet使用来自1、2、4和6名患者的输入标签对进行训练。训练结束后,用14例训练过程中未使用的患者的胸部CT对模型进行测试。实性结节7例,亚实性结节7例。计算均方根误差(RMSE)和峰值信噪比(PSNR)来量化参考图像与测试图像之间的差异。计算肺结节与肺实质的噪声比(CNR),评价胸部CT的靶检出能力。主观图像质量评价采用4分制评定最终用户感知到的CT图像视觉质量。去噪后观察到RMSE和PSNR的显著改善。与原始超低剂量CT相比,去噪后的图像更容易区分肺结节,这得到了cnr和主观图像质量评分的支持。肺结节的强度分布对比表明,超低剂量CT去噪后的图像噪声可以被有效抑制,不会造成边缘模糊和Hounsfield unit (HU)值的变化。双样本t检验显示,全剂量CT与降噪过的超低剂量CT在肺结节、肺实质、棘旁肌或椎体的评估上无统计学差异。由于线性无阈值模型表明,没有多少电离辐射是完全没有风险的,因此寻求进一步降低剂量仍然是放射学的一个一贯的重要焦点。总的来说,我们的研究结果表明,DenseNet可能是一种可行的方法,可以减少用于肺癌筛查的超低剂量CT扫描中的图像噪声。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards ultra-low-dose CT for detecting pulmonary nodules using DenseNet.

Low-radiation techniques should be used to detect and follow lung nodules on CT images, but reducing radiation dose to ultra-low-dose CT with submilliSievert dose level would drastically impede image quality and sensitivity for nodule detection. This study investigated the feasibility of using DenseNet to suppress image noise in ultra-low-dose CT for lung cancer screening. DenseNet was trained using input-label pairs from 1, 2, 4, and 6 patients. After training, the model was tested with chest CT from 14 patients that were not used in training process. Seven patients have solid nodules and 7 patients have subsolid nodules. Root mean square error (RMSE) and peak signal-to-noise ratio (PSNR) were calculated to quantify the difference between reference and test images. The contrast-to-noise ratio (CNR) between lung nodule and lung parenchyma was calculated to evaluate the target detectability of chest CT. Subjective image quality assessment was performed using 4-point ranking scale to evaluate the visual quality of CT images perceived by end user. Substantial improvements in RMSE and PSNR were observed after denoising. The lung nodules in denoised images could be distinguished more easily in comparison with those in the original ultra-low-dose CT, which is supported by the CNRs and subjective image quality scores. The comparison of intensity profiles for lung nodules demonstrated that the image noise in ultra-low-dose CT could be suppressed effectively after denoising without causing edge blurring or variation in Hounsfield unit (HU) values. A two-sample t-test revealed no statistically significant differences between full-dose CT and denoised ultra-low-dose CT in the evaluation of lung nodules, lung parenchyma, paraspinal muscle, or vertebral body. Since the linear no-threshold model suggests that no amount of ionizing radiation is entirely risk-free, the quest for further dose reduction remains a consistently important focus in radiology. Overall, our findings suggest that DenseNet could be a viable approach for reducing image noise in ultra-low-dose CT scans used for lung cancer screening.

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来源期刊
CiteScore
8.40
自引率
4.50%
发文量
110
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