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首页> 外文期刊>Korean journal of radiology : >CT Image Conversion among Different Reconstruction Kernels without a Sinogram by Using a Convolutional Neural Network
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CT Image Conversion among Different Reconstruction Kernels without a Sinogram by Using a Convolutional Neural Network

机译:卷积神经网络在不带汉字的不同重构核之间进行CT图像转换

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Objective The aim of our study was to develop and validate a convolutional neural network (CNN) architecture to convert CT images reconstructed with one kernel to images with different reconstruction kernels without using a sinogram. Materials and Methods This retrospective study was approved by the Institutional Review Board. Ten chest CT scans were performed and reconstructed with the B10f, B30f, B50f, and B70f kernels. The dataset was divided into six, two, and two examinations for training, validation, and testing, respectively. We constructed a CNN architecture consisting of six convolutional layers, each with a 3 × 3 kernel with 64 filter banks. Quantitative performance was evaluated using root mean square error (RMSE) values. To validate clinical use, image conversion was conducted on 30 additional chest CT scans reconstructed with the B30f and B50f kernels. The influence of image conversion on emphysema quantification was assessed with Bland–Altman plots. Results Our scheme rapidly generated conversion results at the rate of 0.065 s/slice. Substantial reduction in RMSE was observed in the converted images in comparison with the original images with different kernels (mean reduction, 65.7%; range, 29.5–82.2%). The mean emphysema indices for B30f, B50f, converted B30f, and converted B50f were 5.4 ± 7.2%, 15.3 ± 7.2%, 5.9 ± 7.3%, and 16.8 ± 7.5%, respectively. The 95% limits of agreement between B30f and other kernels (B50f and converted B30f) ranged from ?14.1% to ?2.6% (mean, ?8.3%) and ?2.3% to 0.7% (mean, ?0.8%), respectively. Conclusion CNN-based CT kernel conversion shows adequate performance with high accuracy and speed, indicating its potential clinical use.
机译:目的我们的研究目的是开发和验证卷积神经网络(CNN)架构,以将使用一个核重建的CT图像转换为不使用正弦图的具有不同重建核的图像。材料和方法这项回顾性研究得到了机构审查委员会的批准。进行了十次胸部CT扫描,并使用B10f,B30f,B50f和B70f谷粒进行了重建。数据集分为六个,两个和两个检查,分别用于训练,验证和测试。我们构建了一个CNN体系结构,该体系结构由六个卷积层组成,每个卷积层都有一个3×3内核和64个滤波器组。使用均方根误差(RMSE)值评估定量性能。为了验证临床用途,对使用B30f和B50f谷粒重建的另外30次胸部CT扫描进行了图像转换。图像转换对肺气肿量化的影响通过Bland–Altman图进行评估。结果我们的方案以0.065 s /切片的速度快速生成了转换结果。与具有不同内核的原始图像相比,在转换后的图像中观察到RMSE显着降低(平均降低65.7%;范围29.5-82.2%)。 B30f,B50f,转化的B30f和转化的B50f的平均肺气肿指数分别为5.4±7.2%,15.3±7.2%,5.9±7.3%和16.8±7.5%。 B30f与其他内核(B50f和转换后的B30f)之间的95%一致限制分别为14.1%至2.6%(平均值,8.3%)和2.3%至0.7%(平均值,0.8%)。结论基于CNN的CT内核转换显示出足够的性能,且具有较高的准确度和速度,表明其潜在的临床用途。

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