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Impact of Deep Learning on the Normalization of Reconstruction Kernel Effects in Imaging Biomarker Quantification: A Pilot Study in CT Emphysema

机译:深度学习对成像生物标志物的重建核效应规范化的影响:CT肺气肿的试验研究

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Differing reconstruction kernels are known to strongly affect the variability of imaging biomarkers and thus remain as a barrier in translating the computer aided quantification techniques into clinical practice. This study presents a deep learning application to CT kernel conversion which converts a CT image of sharp kernel to that of standard kernel and evaluates its impact on variability reduction of a pulmonary imaging biomarker, the emphysema index (EI). Forty cases of low-dose chest CT exams obtained with 120kVp, 40mAs, 1mm thickness, of 2 reconstruction kernels (B30f, B50f) were selected from the low dose lung cancer screening database of our institution. A Fully convolutional network was implemented with Keras deep learning library. The model consisted of symmetric layers to capture the context and fine structure characteristics of CT images from the standard and sharp reconstruction kernels. Pairs of the full-resolution CT data set were fed to input and output nodes to train the convolutional network to learn the appropriate filter kernels for converting the CT images of sharp kernel to standard kernel with a criterion of measuring the mean squared error between the input and target images. EIs (RA950 and Perc15) were measured with a software package (ImagePrism Pulmo, Seoul, South Korea) and compared for the data sets of B50f, B30f, and the converted B50f. The effect of kernel conversion was evaluated with the mean and standard deviation of pair-wise differences in EI. The population mean of RA950 was 27.65 ± 7.28% for B50f data set, 10.82 ± 6.71% for the B30f data set, and 8.87 ± 6.20% for the converted B50f data set. The mean of pair-wise absolute differences in RA950 between B30f and B50f is reduced from 16.83% to 1.95% using kernel conversion. Our study demonstrates the feasibility of applying the deep learning technique for CT kernel conversion and reducing the kernel-induced variability of EI quantification. The deep learning model has a potential
机译:已知不同的重建核心强烈影响成像生物标志物的可变性,因此仍然是将计算机辅助量化技术转化为临床实践的障碍。本研究提出了对CT核转换的深度学习应用,该CT核转换将尖锐核的CT图像转换为标准核的CT图像,并评估其对肺部成像生物标志物的可变性降低的影响,肺气肿指数(EI)。从低剂量肺癌筛查数据库中选择了120kVP,40mAmS,1mm厚度的40kVp,40mas,1mm厚度的低剂量胸部CT考试的40例。康拉斯深度学习图书馆实施了一个完全卷积的网络。该模型由对称层组成,以捕获来自标准和尖锐的重建内核的CT图像的上下文和精细结构特征。将对全分辨率CT数据集的对被馈送到输入和输出节点以训练卷积网络,以学习适当的过滤器内核,用于将尖锐内核的CT图像转换为标准内核,其中具有测量输入之间的平均平方误差的标准和目标图像。 EIS(RA950和PERC15)用软件包(Imageprism Pulmo,Seoul,韩国)测量,并与B50F,B30F和转换的B50F的数据集进行比较。通过EI的成对差异的平均值和标准偏差评估了核转化的效果。 B50F数据集的RA950的人口平均值为27.65±7.28%,B30F数据集10.82±6.71%,转换后的B50F数据集8.87±6.20%。使用核转换,B30F和B50F之间的RA950的成对绝对差异的平均值从16.83%降至1.95%。我们的研究表明,应用CT核转换的深度学习技术的可行性,并降低eI量化的核诱导的变异性。深度学习模型具有潜力

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