School of Informatics, University of Edinburgh, Edinburgh, UK; Centre for Clinical Brain Sciences, University of Edinburgh, Edinburgh, UK.
Centre for Clinical Brain Sciences, University of Edinburgh, Edinburgh, UK.
Comput Med Imaging Graph. 2018 Jun;66:28-43. doi: 10.1016/j.compmedimag.2018.02.002. Epub 2018 Feb 17.
We propose an adaptation of a convolutional neural network (CNN) scheme proposed for segmenting brain lesions with considerable mass-effect, to segment white matter hyperintensities (WMH) characteristic of brains with none or mild vascular pathology in routine clinical brain magnetic resonance images (MRI). This is a rather difficult segmentation problem because of the small area (i.e., volume) of the WMH and their similarity to non-pathological brain tissue. We investigate the effectiveness of the 2D CNN scheme by comparing its performance against those obtained from another deep learning approach: Deep Boltzmann Machine (DBM), two conventional machine learning approaches: Support Vector Machine (SVM) and Random Forest (RF), and a public toolbox: Lesion Segmentation Tool (LST), all reported to be useful for segmenting WMH in MRI. We also introduce a way to incorporate spatial information in convolution level of CNN for WMH segmentation named global spatial information (GSI). Analysis of covariance corroborated known associations between WMH progression, as assessed by all methods evaluated, and demographic and clinical data. Deep learning algorithms outperform conventional machine learning algorithms by excluding MRI artefacts and pathologies that appear similar to WMH. Our proposed approach of incorporating GSI also successfully helped CNN to achieve better automatic WMH segmentation regardless of network's settings tested. The mean Dice Similarity Coefficient (DSC) values for LST-LGA, SVM, RF, DBM, CNN and CNN-GSI were 0.2963, 0.1194, 0.1633, 0.3264, 0.5359 and 5389 respectively.
我们提出了一种适用于分割具有明显质量效应的脑病变的卷积神经网络 (CNN) 方案的改编,以分割常规临床脑部磁共振成像 (MRI) 中无或轻度血管病变的大脑的特征性脑白质高信号 (WMH)。这是一个相当困难的分割问题,因为 WMH 的面积(即体积)较小,并且与非病理性脑组织相似。我们通过将其性能与另一种深度学习方法:深度玻尔兹曼机 (DBM)、两种传统机器学习方法:支持向量机 (SVM) 和随机森林 (RF) 以及公共工具包:病变分割工具 (LST) 进行比较,来研究 2D CNN 方案的有效性,所有这些方法都被报道有助于分割 MRI 中的 WMH。我们还引入了一种在 CNN 的卷积层中加入空间信息的方法,称为全局空间信息 (GSI),用于 WMH 分割。协方差分析证实了所有评估方法评估的 WMH 进展与人口统计学和临床数据之间的已知关联。深度学习算法通过排除与 WMH 相似的 MRI 伪影和病变,优于传统机器学习算法。我们提出的在卷积层中加入 GSI 的方法也成功地帮助 CNN 实现了更好的自动 WMH 分割,而无需测试网络的设置。LST-LGA、SVM、RF、DBM、CNN 和 CNN-GSI 的平均 Dice 相似系数 (DSC) 值分别为 0.2963、0.1194、0.1633、0.3264、0.5359 和 0.5389。