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Optimal planar X-ray imaging soft tissue segmentation using a photon counting detector

机译:使用光子计数检测器的最佳平面X射线成像软组织分割

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摘要

A rigorous method for automated soft tissue segmentation using planar kilovoltage (kV) imaging, a photon counting detector (PCD), and a convolutional neural network is presented. The goal of the project was to determine the optimum number of energy bins in a PCD for soft tissue segmentation. Planar kV X-ray images of solid water (SW) phantoms with varying depth of cartilage were generated with a cone-beam analytical method and parallel-beam Monte Carlo simulations. Simulations were preformed using 2 to 5 PCD energy bins with equal photon fluence distribution. Simulated image signal to noise ratio (SNR) was varied between 10 to 250 measured after transmission through 4 cm of SW. Algorithms using non-linear as well as linear regression were used to predict the amount of cartilage for every pixel of the phantom. These algorithms were evaluated based on the mean squared error (MSE) between their prediction and the ground truth. The best algorithm was used to decompose randomly generated SW and cartilage images with an SNR of 100. These randomly generated images trained a U-Net convolutional neural network to segment the cartilage in the image. The results indicated the smallest MSE occurred for non-linear regression with 4 energy bins over all SNR. The trained U-Net was able to correctly segment all regions of cartilage for the smallest amount of cartilage used (4 mm) and segmented the region with > 99% categorical accuracy by pixel.
机译:呈现了使用平面千伏(KV)成像的自动软组织分割的严格方法,给出了光子计数检测器(PCD)和卷积神经网络。该项目的目标是确定PCD中的最佳能量箱数,用于软组织分割。用锥形束分析方法和平行梁蒙特卡罗模拟产生具有不同深度软骨深度的固体水(SW)幻影的平面kV X射线图像。使用2至5个PCD能量箱进行仿真,具有等于光子的流量分布。模拟图像信号到噪声比(SNR)在通过4cm的SW透射后测量10至250之间。使用非线性以及线性回归的算法用于预测幻象的每个像素的软骨量。基于其预测和地面真理之间的平均平方误差(MSE)来评估这些算法。最佳算法用于分解随机生成的SN和软骨图像100。这些随机产生的图像训练了U-Net卷积神经网络以分段图像中的软骨。结果表明,对于所有SNR的4个能量箱的非线性回归发生了最小的MSE。训练有素的U-Net能够正确地将软骨的所有区域分段用于使用(4 mm)的最小量(4毫米)并通过像素分割了具有> 99%的分类精度的区域。

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