开发并验证用于评估 CT 图像对比分辨率的有效 CNR 分析方法。

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL Physical and Engineering Sciences in Medicine Pub Date : 2024-06-01 Epub Date: 2024-03-07 DOI:10.1007/s13246-024-01400-5
Kengo Igarashi, Kuniharu Imai, Shigeru Matsushima, Chiyo Yamauchi-Kawaura, Keisuke Fujii
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引用次数: 0

摘要

对比分辨率是评价计算机断层扫描(CT)图像信号可探测性的一个重要指标。最近,人们提出了各种降噪算法,如迭代重建(IR)和深度学习重建(DLR),以减少 CT 图像中的图像噪声。然而,这些算法会导致 CT 图像中图像噪声纹理的变化和图像信号的模糊。此外,使用降噪方法重建的 CT 图像无法准确评估对比度-噪声比(CNR)。因此,在本研究中,我们设计了一种新方法,即 "有效 CNR 分析",用于评估 CT 图像的对比分辨率。我们验证了所提出的算法是否能根据 CT 图像的信号可探测性来评估有效对比分辨率。研究结果表明,使用建议方法获得的有效 CNR 值与 CT 图像的主观视觉印象具有良好的相关性。为了研究有效 CNR 分析法是否能恰当地评估信号可探测性,研究人员将传统 CNR 分析法与建议的方法进行了比较。使用传统 CNR 分析法计算的红外和 DLR 图像的 CNR 分别为 13.2 和 10.7。相比之下,使用有效 CNR 分析法计算出的 CNR 分别为 0.7 和 1.1。考虑到 DLR 图像的信号可见度优于红外图像,我们提出的有效 CNR 分析法被证明适用于评估 CT 图像的对比分辨率。
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Development and validation of the effective CNR analysis method for evaluating the contrast resolution of CT images.

Contrast resolution is an important index for evaluating the signal detectability of computed tomographic (CT) images. Recently, various noise reduction algorithms, such as iterative reconstruction (IR) and deep learning reconstruction (DLR), have been proposed to reduce the image noise in CT images. However, these algorithms cause changes in the image noise texture and blurred image signals in CT images. Furthermore, the contrast-to-noise ratio (CNR) cannot be accurately evaluated in CT images reconstructed using noise reduction methods. Therefore, in this study, we devised a new method, namely, "effective CNR analysis," for evaluating the contrast resolution of CT images. We verified whether the proposed algorithm could evaluate the effective contrast resolution based on the signal detectability of CT images. The findings showed that the effective CNR values obtained using the proposed method correlated well with the subjective visual impressions of CT images. To investigate whether signal detectability was appropriately evaluated using effective CNR analysis, the conventional CNR analysis method was compared with the proposed method. The CNRs of the IR and DLR images calculated using conventional CNR analysis were 13.2 and 10.7, respectively. By contrast, those calculated using the effective CNR analysis were estimated to be 0.7 and 1.1, respectively. Considering that the signal visibility of DLR images was superior to that of IR images, our proposed effective CNR analysis was shown to be appropriate for evaluating the contrast resolution of CT images.

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4.50%
发文量
110
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