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Feasibility of thin-slice abdominal CT in overweight patients using a vendor neutral image-based denoising algorithm: Assessment of image noise, contrast, and quality

机译:使用供应商中性图像的去噪算法的超重患者薄片腹部CT的可行性:图像噪声,对比度和质量评估

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The purpose of this study was to investigate whether the novel image-based noise reduction software (NRS) improves image quality, and to assess the feasibility of using this software in combination with hybrid iterative reconstruction (IR) in image quality on thin-slice abdominal CT. In this retrospective study, 54 patients who underwent dynamic liver CT between April and July 2017 and had a body mass index higher than 25 kg/m 2 were included. Three image sets of each patient were reconstructed as follows: hybrid IR images with 1-mm slice thickness (group A), hybrid IR images with 5-mm slice thickness (group B), and hybrid IR images with 1-mm slice thickness denoised using NRS (group C). The mean image noise and contrast-to-noise ratio relative to the muscle of the aorta and liver were assessed. Subjective image quality was evaluated by two radiologists for sharpness, noise, contrast, and overall quality using 5-point scales. The mean image noise was significantly lower in group C than in group A (p 0.01), but no significant difference was observed between groups B and C. The contrast-to-noise ratio was significantly higher in group C than in group A (p 0.01 and p = 0.01, respectively). Subjective image quality was also significantly higher in group C than in group A (p 0.01), in terms of noise and overall quality, but not in terms of sharpness and contrast (p = 0.65 and 0.07, respectively). The contrast of images in group C was greater than that in group A, but this difference was not significant. Compared with hybrid IR alone, the novel NRS combined with a hybrid IR could result in significant noise reduction without sacrificing image quality on CT. This combined approach will likely be particularly useful for thin-slice abdominal CT examinations of overweight patients.
机译:本研究的目的是研究新颖的基于图像的降噪软件(NRS)是否提高了图像质量,并评估了在薄片腹部图像质量中结合使用该软件的可行性CT。在这项回顾性研究中,54例在2017年4月和7月之间接受动态肝脏CT的患者,并且具有高于25kg / m 2的体重指数。每个患者的三个图像集被重建如下:具有1毫米切片厚度(A组)的混合IR图像,具有5毫米切片厚度(B组)的混合IR图像,以及具有1mm切片厚度的混合红外图像使用NRS(C组)。评估了相对于主动脉和肝脏肌肉的平均图像噪声和对比度。通过两个放射科医生评估主观图像质量,用于使用5点尺度的锐度,噪声,对比度和整体质量。 C组的平均图像噪声显着低于A组(P <0.01),但在B和C组之间没有观察到显着差异。C组的对比度率明显高于A组(P& 0.01和p = 0.01)。 C组的主观图像质量也显着高于A(P&LT; 0.01),在噪声和整体质量方面,但不是锐度和对比度(P = 0.65和0.07)。 C组中的图像对比度大于A组,但这种差异并不重要。与单独的杂交IR相比,与杂交IR结合的新型NR可能导致显着的降噪,而不会牺牲CT上的图像质量。这种组合的方法可能对超重患者的薄片腹部CT检查特别有用。

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