...
首页> 外文期刊>IEEE Transactions on Medical Imaging >A Generative Probabilistic Model and Discriminative Extensions for Brain Lesion Segmentation— With Application to Tumor and Stroke
【24h】

A Generative Probabilistic Model and Discriminative Extensions for Brain Lesion Segmentation— With Application to Tumor and Stroke

机译:脑病变分割的生成概率模型和判别性扩展—在肿瘤和中风中的应用

获取原文
获取原文并翻译 | 示例
           

摘要

We introduce a generative probabilistic model for segmentation of brain lesions in multi-dimensional images that generalizes the EM segmenter, a common approach for modelling brain images using Gaussian mixtures and a probabilistic tissue atlas that employs expectation-maximization (EM), to estimate the label map for a new image. Our model augments the probabilistic atlas of the healthy tissues with a latent atlas of the lesion. We derive an estimation algorithm with closed-form EM update equations. The method extracts a latent atlas prior distribution and the lesion posterior distributions jointly from the image data. It delineates lesion areas individually in each channel, allowing for differences in lesion appearance across modalities, an important feature of many brain tumor imaging sequences. We also propose discriminative model extensions to map the output of the generative model to arbitrary labels with semantic and biological meaning, such as “tumor core” or “fluid-filled structure”, but without a one-to-one correspondence to the hypo- or hyper-intense lesion areas identified by the generative model. We test the approach in two image sets: the publicly available BRATS set of glioma patient scans, and multimodal brain images of patients with acute and subacute ischemic stroke. We find the generative model that has been designed for tumor lesions to generalize well to stroke images, and the extended discriminative -discriminative model to be one of the top ranking methods in the BRATS evaluation.
机译:我们引入了一种用于在多维图像中分割脑部病变的生成概率模型,该模型概括了EM细分器,这是一种使用高斯混合模型和采用期望最大化(EM)的概率组织图集对大脑图像进行建模的常用方法,以估计标签映射新图像。我们的模型通过潜在的病变图谱来增强健康组织的概率图谱。我们推导了带有封闭形式的EM更新方程的估计算法。该方法从图像数据中共同提取潜在的地图集先验分布和病变后验分布。它在每个通道中分别描绘了病变区域,从而允许跨模式的病变外观差异,这是许多脑肿瘤成像序列的重要特征。我们还提出了判别模型扩展,以将生成模型的输出映射到具有语义和生物学意义的任意标签,例如“肿瘤核心”或“流体填充的结构”,但不与假说一一对应。或通过生成模型确定的高强度病变区域。我们在两个图像集中测试该方法:公开可用的BRATS胶质瘤患者扫描图像集,以及急性和亚急性缺血性卒中患者的多模式脑图像。我们发现针对肿瘤病变设计的生殖模型能够很好地推广到中风图像,而扩展的判别-辨别模型是BRATS评估中排名最高的方法之一。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号