Department of Clinical Neurosciences, University of Calgary, Calgary, Alberta, T2N 2T9, Canada.
Med Phys. 2019 Sep;46(9):4037-4045. doi: 10.1002/mp.13703. Epub 2019 Aug 6.
Cerebral infarct volume observed in follow-up noncontrast computed tomography (NCCT) scans of acute ischemic stroke (AIS) patients is as an important radiologic outcome measure of the effectiveness of endovascular therapy (EVT). In this paper, our aim is to propose a semiautomated segmentation approach that can accurately measure ischemic infarct volume from NCCT images of AIS patients.
A novel cascaded random forest (RF) learning is first employed to classify each voxel into normal or ischemic voxel, leading to an infarct probability map. Four types of features: intensity, statistical information in local region, symmetric difference compared to the contralateral side, and spatial probability of infarct occurrence generated by the STAPLE method, are extracted. These features are input into RF to train a first-stage classifier. The coarse segmentation results generated by the first-stage classifier are then used to train a fine second-stage classifier with fivefold cross validation. The RF estimated infarct probability map obtained in the second-stage testing as well as user input high-level knowledge are then incorporated into a convex optimization function to obtain final segmentation. One hundred AIS patients were collected in this study, of which 70 patient images were used for evaluation while the remaining 30 patient images were used for RF training.
Quantitative results show that the proposed approach is capable of yielding a dice coefficient (DC) of 79.42%, significantly outperforming some state-of-the-art automated segmentation methods, such as the RF-based methods and convolutional neural network (CNN)-based segmentation method, U-net. The infarct volume obtained by the proposed method is strongly correlated with the manually segmented volume. In addition, interobserver variability analysis initialized by two observers suggests low user dependency.
Our proposed semiautomated segmentation method can accurately segment infarct from NCCT of AIS patients.
急性缺血性脑卒中(AIS)患者的随访非对比计算机断层扫描(NCCT)观察到的脑梗死体积是血管内治疗(EVT)有效性的重要影像学结果测量指标。本文旨在提出一种半自动分割方法,能够从 AIS 患者的 NCCT 图像中准确测量缺血性梗死体积。
首先采用新型级联随机森林(RF)学习方法对每个体素进行分类,将其分为正常或缺血体素,得到梗死概率图。提取了 4 种类型的特征:强度、局部区域的统计信息、与对侧的对称差异以及由 STAPLE 方法生成的空间梗死发生概率。将这些特征输入 RF 以训练第一阶段分类器。然后使用第一阶段分类器生成的粗略分割结果来训练具有五折交叉验证的精细第二阶段分类器。将第二阶段测试中获得的 RF 估计梗死概率图以及用户输入的高级知识合并到凸优化函数中,以获得最终分割。本研究共收集了 100 名 AIS 患者,其中 70 名患者的图像用于评估,其余 30 名患者的图像用于 RF 训练。
定量结果表明,该方法能够产生 79.42%的骰子系数(DC),明显优于一些最先进的自动分割方法,如基于 RF 的方法和基于卷积神经网络(CNN)的分割方法 U-net。该方法获得的梗死体积与手动分割体积具有很强的相关性。此外,两名观察者初始化的观察者间变异性分析表明该方法用户依赖性低。
我们提出的半自动分割方法可以从 AIS 患者的 NCCT 中准确分割梗死。