Department of Neurobiology, Care Sciences and Society, Division of Clinical Geriatrics, Karolinska Institutet, Stockholm, Sweden.
J Neurol Sci. 2012 Nov 15;322(1-2):211-6. doi: 10.1016/j.jns.2012.07.064. Epub 2012 Aug 24.
White matter changes (WMC) are the focus of intensive research and have been linked to cognitive impairment and depression in the elderly. Cumbersome manual outlining procedures make research on WMC labor intensive and prone to subjective bias. We present a fast, fully automated method for WMC segmentation using a cascade of reduced support vector machines (SVMs) with active learning. Data of 102 subjects was used in this study. Two MRI sequences (T1-weighted and FLAIR) and masks of manually outlined WMC from each subject were used for the image analysis. The segmentation framework comprises pre-processing, classification (training and core segmentation) and post-processing. After pre-processing, the model was trained on two subjects and tested on the remaining 100 subjects. The effectiveness and robustness of the classification was assessed using the receiver operating curve technique. The cascade of SVMs segmentation framework outputted accurate results with high sensitivity (90%) and specificity (99.5%) values, with the manually outlined WMC as reference. An algorithm for the segmentation of WMC is proposed. This is a completely competitive and fast automatic segmentation framework, capable of using different input sequences, without changes or restrictions of the image analysis algorithm.
脑白质变化(WMC)是研究的重点,与老年人的认知障碍和抑郁有关。繁琐的手动勾画程序使得 WMC 的研究既费力又容易产生主观偏差。我们提出了一种使用带有主动学习的级联缩减支持向量机(SVM)快速、全自动的 WMC 分割方法。这项研究使用了 102 名受试者的数据。每个受试者的两个 MRI 序列(T1 加权和 FLAIR)和手动勾画的 WMC 掩模用于图像分析。分割框架包括预处理、分类(训练和核心分割)和后处理。预处理后,模型在两个受试者上进行训练,并在其余 100 个受试者上进行测试。使用接收者操作曲线技术评估分类的有效性和稳健性。SVM 级联分割框架输出了准确的结果,具有高灵敏度(90%)和特异性(99.5%)值,以手动勾画的 WMC 为参考。提出了一种用于 WMC 分割的算法。这是一个完全竞争和快速的自动分割框架,能够使用不同的输入序列,而无需更改或限制图像分析算法。