Zou Kelly H, Wells William M, Kikinis Ron, Warfield Simon K
Department of Radiology, Brigham and Women's Hospital, and Harvard Medical School, Boston, MA 02115, U.S.A.
Stat Med. 2004 Apr 30;23(8):1259-82. doi: 10.1002/sim.1723.
The validity of brain tumour segmentation is an important issue in image processing because it has a direct impact on surgical planning. We examined the segmentation accuracy based on three two-sample validation metrics against the estimated composite latent gold standard, which was derived from several experts' manual segmentations by an EM algorithm. The distribution functions of the tumour and control pixel data were parametrically assumed to be a mixture of two beta distributions with different shape parameters. We estimated the corresponding receiver operating characteristic curve, Dice similarity coefficient, 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 tumour cases of three different tumour types, each consisting of a large number of pixels. The automated segmentation yielded satisfactory accuracy with varied optimal thresholds. The performances of these validation metrics were also investigated via Monte Carlo simulation. Extensions of incorporating spatial correlation structures using a Markov random field model were considered.
脑肿瘤分割的有效性是图像处理中的一个重要问题,因为它直接影响手术规划。我们基于三种双样本验证指标,针对通过期望最大化(EM)算法从多位专家的手动分割中得出的估计复合潜在金标准,检验了分割准确性。肿瘤和对照像素数据的分布函数被参数化假定为具有不同形状参数的两个贝塔分布的混合。我们在所有可能的决策阈值上估计了相应的接收者操作特征曲线、骰子相似系数和互信息。然后基于每个验证指标,通过最大化计算出最优阈值。我们在来自三种不同肿瘤类型的九个脑肿瘤病例的磁共振成像数据上展示了这些方法,每个病例都包含大量像素。自动分割在不同的最优阈值下产生了令人满意的准确性。还通过蒙特卡罗模拟研究了这些验证指标的性能。考虑了使用马尔可夫随机场模型纳入空间相关结构的扩展。