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首页> 外文期刊>Japanese journal of radiology >Potential value of the PixelShine deep learning algorithm for increasing quality of 70 kVp+ASiR-V reconstruction pelvic arterial phase CT images
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Potential value of the PixelShine deep learning algorithm for increasing quality of 70 kVp+ASiR-V reconstruction pelvic arterial phase CT images

机译:PIXELSHINE深度学习算法的潜在价值,提高70 kVP + ASIR-V重建骨盆动脉阶段CT图像的质量

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摘要

ObjectiveTo investigate the effect of a deep learning-based denoising algorithm, PixelShine (PS), on the quality of 70 kVp pelvic arterial phase CT images.Materials and methodsA retrospective analysis was performed on arterial phase pelvic CT images from 33 patients (body-mass index 20kg/m(2)) obtained with a GE Revolution CT (70 kVp tube voltage; adaptive statistical iterative reconstruction-Veo-filtered back projection, 50% blending) and designated group A. Group B images were then obtained by applying PS to group A image datasets. Subjective image quality was evaluated by two radiologists with a 5-point scoring system; the scores of the groups were compared. Image signal was assessed using CT values of the urinary bladder. CT and standard deviation (SD) values of the gluteus maximus were measured, and SD values of the gluteus maximus were used to represent image noise. The signal-to-noise ratio (SNR) and contrast-to-noise ratio (CNR) of the bladder were calculated. Image noise, SNR, and CNR of two groups were compared using paired t-tests.ResultsThe subjective visual image quality scores of groups A and B, respectively, were 3.110.30 vs. 3.82 +/- 0.57; image noise was 15.79 +/- 2.05 Hounsfield units (HU) vs. 11.06 +/- 2.22 HU; SNRs of bladder were 0.50 +/- 0.23 vs. 0.79 +/- 0.39; and CNRs of bladder were 3.72 +/- 0.85 vs. 5.14 +/- 1.27. Group B showed better subjective image quality, lower image noise, and improved SNR and CNR, compared to group A; these differences were statistically significant (P0.05). The noise of group B was approximately 30% lower than that of group A; the SNR and CNR values of group B were improved by approximately 58% and 38%, respectively.Conclusion Using 70 kVp +ASiR-V, PS can improve the image quality of pelvic arterial phase CT images, significantly reduce the image noise, and improve the SNR and CNR.
机译:ObjectiveTo研究了基于深度学习的去致态算法,Pixelshine(PS)的效果,在70kVP盆腔动脉相CT图像的质量上。关于33例患者的动脉期骨盆CT图像进行了回顾性分析(体重用Ge Revolution CT(70 kVP管电压;自适应统计迭代重建 - veo滤波后投影,50%混合)和指定A组A.然后通过施加PS来获得20kg / m(2))。组一个图像数据集。主观图像质量由两个带有5分的放射科医生进行评估;比较了组的分数。使用尿膀胱的CT值评估图像信号。测量光晕最大值的CT和标准偏差(SD)值,并使用GLINEUS Maximus的SD值来表示图像噪声。计算囊的信噪比(SNR)和囊的对比度(CNR)。使用配对的T-Tests比较两组的图像噪声,SNR和CNR。方法分别为A和B组的主观视觉图像质量评分为3.110.30与3.82 +/- 0.57;图像噪声是15.79 +/- 2.05 Hounsfield单位(胡)与11.06 +/- 2.22胡;膀胱的SNR为0.50 +/- 0.23与0.79 +/- 0.39;膀胱CNRS为3.72 +/- 0.85与5.14 +/- 1.27。 B组与A组相比,B组显示更好的主观图像质量,更低的图像噪声和改进的SNR和CNR;这些差异在统计学上显着(P <0.05)。 B组的噪声比A组的噪声低约30%; B组的SNR和CNR值分别得到约58%和38%。使用70 kVP + AsiR-V,PS可以提高骨盆动脉相CT图像的图像质量,显着降低图像噪音,并改善SNR和CNR。

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