Tomas-Fernandez Xavier, Warfield Simon K
IEEE Trans Med Imaging. 2015 Jun;34(6):1349-61. doi: 10.1109/TMI.2015.2393853. Epub 2015 Jan 19.
White matter (WM) lesions are thought to play an important role in multiple sclerosis (MS) disease burden. Recent work in the automated segmentation of white matter lesions from magnetic resonance imaging has utilized a model in which lesions are outliers in the distribution of tissue signal intensities across the entire brain of each patient. However, the sensitivity and specificity of lesion detection and segmentation with these approaches have been inadequate. In our analysis, we determined this is due to the substantial overlap between the whole brain signal intensity distribution of lesions and normal tissue. Inspired by the ability of experts to detect lesions based on their local signal intensity characteristics, we propose a new algorithm that achieves lesion and brain tissue segmentation through simultaneous estimation of a spatially global within-the-subject intensity distribution and a spatially local intensity distribution derived from a healthy reference population. We demonstrate that MS lesions can be segmented as outliers from this intensity model of population and subject. We carried out extensive experiments with both synthetic and clinical data, and compared the performance of our new algorithm to those of state-of-the art techniques. We found this new approach leads to a substantial improvement in the sensitivity and specificity of lesion detection and segmentation.
白质(WM)病变被认为在多发性硬化症(MS)的疾病负担中起重要作用。最近在从磁共振成像自动分割白质病变方面的工作采用了一种模型,其中病变是每个患者整个大脑组织信号强度分布中的异常值。然而,使用这些方法进行病变检测和分割的灵敏度和特异性一直不足。在我们的分析中,我们确定这是由于病变的全脑信号强度分布与正常组织之间存在大量重叠。受专家基于病变局部信号强度特征进行检测的能力启发,我们提出了一种新算法,该算法通过同时估计受试者内部的空间全局强度分布和源自健康参考人群的空间局部强度分布来实现病变和脑组织分割。我们证明,MS病变可以从该人群和受试者的强度模型中作为异常值进行分割。我们对合成数据和临床数据都进行了广泛的实验,并将我们新算法的性能与现有技术的性能进行了比较。我们发现这种新方法在病变检测和分割的灵敏度和特异性方面有显著提高。