首页> 外文会议>Medical Image Computing and Computer-Assisted Intervention ― MICCAI 2002 >Statistical Validation of Automated Probabilistic Segmentation against Composite Latent Expert Ground Truth in MR Imaging of Brain Tumors
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Statistical Validation of Automated Probabilistic Segmentation against Composite Latent Expert Ground Truth in MR Imaging of Brain Tumors

机译:针对脑肿瘤MR成像中复合潜在专家地面真相的自动概率分割的统计验证

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The validity of segmentation is an important issue in image processing because it has a direct impact on surgical planning. Binary manual segmentation is not only time-consuming but also lacks the ability of differentiating subtle intensity variations among voxels, particularly for those on the border of a tumor and for different tumor types. Previously we have developed an automated segmentation method that yields voxel-wise continuous probabilistic measures, indicating a level of tumor presence. The goal of this work is to examine three accuracy metrics based on two-sample statistical methods, against the estimated composite latent ground truth derived from several experts' manual segmentation by a maximum likelihood algorithm. We estimated the distribution functions of the tumor and control voxel data parametrically by assuming a mixture of two beta distributions with different shape parameters. We derived the resulting receiver operating characteristic curves, Dice similarity coefficients, and mutual information, over all possible decision thresholds. Based on each validation metric, an optimal threshold was then computed via maximization. We illustrated these methods on MR imaging data from nine brain tumor cases, three with meningiomas, three astrocytomas, and three other low-grade gliomas. The automated segmentation yielded satisfactory accuracy, with varied optimal thresholds.
机译:分割的有效性是图像处理中的重要问题,因为它直接影响手术计划。二进制手动分割不仅耗时,而且缺乏区分体素之间细微强度变化的能力,尤其是对于那些在肿瘤边界和不同肿瘤类型的体素而言。以前,我们已经开发了一种自动分割方法,该方法可以产生体素方向的连续概率测度,表明肿瘤存在的水平。这项工作的目的是基于两个样本的统计方法来检查三个准确性指标,以相对于通过最大似然算法从几位专家的人工分割中得出的估计复合潜在地面真相。我们通过假设具有不同形状参数的两个β分布的混合来估计肿瘤的分布函数并控制参数体素数据。在所有可能的决策阈值上,我们得出了所得的接收器工作特性曲线,Dice相似系数和相互信息。基于每个验证指标,然后通过最大化来计算最佳阈值。我们在来自9例脑肿瘤病例,3例脑膜瘤,3例星形细胞瘤和3例其他低度神经胶质瘤的MR成像数据上说明了这些方法。自动分割产生令人满意的准确性,并且具有不同的最佳阈值。

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