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Automated Torso Organ Segmentation from 3D CT Images using Conditional Random Field

机译:使用条件随机场从3D CT图像中自动进行躯干器官分割

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This paper presents a segmentation method for torso organs using conditional random field (CRF) from medical images. A lot of methods have been proposed to enable automated extraction of organ regions from volumetric medical images. However, it is necessary to adjust empirical parameters of them to obtain precise organ regions. In this paper, we propose an organ segmentation method using structured output learning which is based on probabilistic graphical model. The proposed method utilizes CRF on three-dimensional grids as probabilistic graphical model and binary features which represent the relationship between voxel intensities and organ labels. Also we optimize the weight parameters of the CRF using stochastic gradient descent algorithm and estimate organ labels for a given image by maximum a posteriori (MAP) estimation. The experimental result revealed that the proposed method can extract organ regions automatically using structured output learning. The error of organ label estimation was 6.6%. The DICE coefficients of right lung, left lung, heart, liver, spleen, right kidney, and left kidney are 0.94, 0.92, 0.65, 0.67, 0.36, 0.38, and 0.37, respectively.
机译:本文提出了一种基于医学图像的条件随机场(CRF)对躯干器官进行分割的方法。已经提出了许多方法以使得能够从体积医学图像中自动提取器官区域。但是,有必要调整它们的经验参数以获得精确的器官区域。在本文中,我们提出了一种基于概率图形模型的使用结构化输出学习的器官分割方法。所提出的方法利用三维网格上的CRF作为概率图形模型和代表体素强度与器官标记之间关系的二元特征。此外,我们使用随机梯度下降算法优化CRF的权重参数,并通过最大后验(MAP)估计来估计给定图像的器官标签。实验结果表明,该方法可以利用结构化输出学习自动提取器官区域。器官标签估计的误差为6.6%。右肺,左肺,心脏,肝脏,脾脏,右肾和左肾的DICE系数分别为0.94、0.92、0.65、0.67、0.36、0.38和0.37。

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