Nakhmani Arie, Kikinis Ron, Tannenbaum Allen
Department of Electrical and Computer Engineering, University of Alabama at Birmingham, Birmingham, AL, USA.
Department of Radiology, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, USA.
Proc SPIE Int Soc Opt Eng. 2014 Mar 21;9034:903442. doi: 10.1117/12.2042915.
Brain tumor segmentation in brain MRI volumes is used in neurosurgical planning and illness staging. It is important to explore the tumor shape and necrosis regions at different points of time to evaluate the disease progression. We propose an algorithm for semi-automatic tumor segmentation and necrosis detection. Our algorithm consists of three parts: conversion of MRI volume to a probability space based on the on-line learned model, tumor probability density estimation, and adaptive segmentation in the probability space. We use manually selected acceptance and rejection classes on a single MRI slice to learn the background and foreground statistical models. Then, we propagate this model to all MRI slices to compute the most probable regions of the tumor. Anisotropic 3D diffusion is used to estimate the probability density. Finally, the estimated density is segmented by the Sobolev active contour (snake) algorithm to select smoothed regions of the maximum tumor probability. The segmentation approach is robust to noise and not very sensitive to the manual initialization in the volumes tested. Also, it is appropriate for low contrast imagery. The irregular necrosis regions are detected by using the outliers of the probability distribution inside the segmented region. The necrosis regions of small width are removed due to a high probability of noisy measurements. The MRI volume segmentation results obtained by our algorithm are very similar to expert manual segmentation.
脑磁共振成像(MRI)体积中的脑肿瘤分割用于神经外科手术规划和疾病分期。在不同时间点探索肿瘤形状和坏死区域对于评估疾病进展很重要。我们提出了一种半自动肿瘤分割和坏死检测算法。我们的算法由三部分组成:基于在线学习模型将MRI体积转换为概率空间、肿瘤概率密度估计以及在概率空间中的自适应分割。我们在单个MRI切片上使用手动选择的接受和拒绝类别来学习背景和前景统计模型。然后,我们将此模型传播到所有MRI切片以计算肿瘤的最可能区域。使用各向异性三维扩散来估计概率密度。最后,通过Sobolev主动轮廓(蛇形)算法对估计的密度进行分割,以选择最大肿瘤概率的平滑区域。该分割方法对噪声具有鲁棒性,并且在测试的体积中对手动初始化不太敏感。此外,它适用于低对比度图像。通过使用分割区域内概率分布的异常值来检测不规则坏死区域。由于噪声测量的可能性很高,宽度较小的坏死区域被去除。我们算法获得的MRI体积分割结果与专家手动分割非常相似。