Harmonizing CT Images via Physics-based Deep Neural Networks.

Mojtaba Zarei, Saman Sotoudeh-Paima, Cindy McCabe, Ehsan Abadi, Ehsan Samei
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引用次数: 1

Abstract

The rendition of medical images influences the accuracy and precision of quantifications. Image variations or biases make measuring imaging biomarkers challenging. The objective of this paper is to reduce the variability of computed tomography (CT) quantifications for radiomics and biomarkers using physics-based deep neural networks (DNNs). With the proposed framework, it is possible to harmonize the different renditions of a single CT scan (with variations in reconstruction kernel and dose) into an image that is in close agreement with the ground truth. To this end, a generative adversarial network (GAN) model was developed where the generator is informed by the scanner's modulation transfer function (MTF). To train the network, a virtual imaging trial (VIT) platform was used to acquire CT images, from a set of forty computational models (XCAT) serving as the patient model. Phantoms with varying levels of pulmonary disease, such as lung nodules and emphysema, were used. We scanned the patient models with a validated CT simulator (DukeSim) modeling a commercial CT scanner at 20 and 100 mAs dose levels and then reconstructed the images by twelve kernels representing smooth to sharp kernels. An evaluation of the harmonized virtual images was conducted in four different ways: 1) visual quality of the images, 2) bias and variation in density-based biomarkers, 3) bias and variation in morphological-based biomarkers, and 4) Noise Power Spectrum (NPS) and lung histogram. The trained model harmonized the test set images with a structural similarity index of 0.95±0.1, a normalized mean squared error of 10.2±1.5%, and a peak signal-to-noise ratio of 31.8±1.5 dB. Moreover, emphysema-based imaging biomarkers of LAA-950 (-1.5±1.8), Perc15 (13.65±9.3), and Lung mass (0.1±0.3) had more precise quantifications.

通过基于物理的深度神经网络协调CT图像。
医学图像的再现影响定量的准确性和准确性。图像变化或偏差使得测量成像生物标志物具有挑战性。本文的目的是使用基于物理的深度神经网络(DNN)来减少放射组学和生物标志物的计算机断层扫描(CT)定量的可变性。利用所提出的框架,可以将单个CT扫描的不同呈现(重建核和剂量的变化)协调为与基本事实非常一致的图像。为此,开发了一个生成对抗性网络(GAN)模型,其中生成器由扫描仪的调制传递函数(MTF)通知。为了训练网络,使用虚拟成像试验(VIT)平台从作为患者模型的一组40个计算模型(XCAT)中获取CT图像。使用了具有不同程度肺部疾病的Phantoms,如肺结节和肺气肿。我们用经验证的CT模拟器(DukeSim)扫描患者模型,该模拟器模拟了20和100 mAs剂量水平的商用CT扫描仪,然后通过代表平滑到尖锐内核的12个内核重建图像。以四种不同的方式对协调的虚拟图像进行了评估:1)图像的视觉质量,2)基于密度的生物标志物的偏差和变化,3)基于形态学的生物标志器的偏差和变异,以及4)噪声功率谱(NPS)和肺直方图。训练后的模型使测试集图像的结构相似性指数为0.95±0.1,归一化均方误差为10.2±1.5%,峰值信噪比为31.8±1.5dB。此外,基于肺气肿的LAA-950(-1.5±1.8)、Perc15(13.65±9.3)和肺部质量(0.1±0.3)的成像生物标志物具有更精确的定量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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