IEEE Trans Biomed Eng. 2018 Aug;65(8):1871-1884. doi: 10.1109/TBME.2017.2783305. Epub 2017 Dec 13.
Hydrocephalus is a medical condition in which there is an abnormal accumulation of cerebrospinal fluid (CSF) in the brain. Segmentation of brain imagery into brain tissue and CSF [before and after surgery, i.e., preoperative (pre-op) versus postoperative (post-op)] plays a crucial role in evaluating surgical treatment. Segmentation of pre-op images is often a relatively straightforward problem and has been well researched. However, segmenting post-op computational tomographic (CT) scans becomes more challenging due to distorted anatomy and subdural hematoma collections pressing on the brain. Most intensity- and feature-based segmentation methods fail to separate subdurals from brain and CSF as subdural geometry varies greatly across different patients and their intensity varies with time. We combat this problem by a learning approach that treats segmentation as supervised classification at the pixel level, i.e., a training set of CT scans with labeled pixel identities is employed.
Our contributions include: 1) a dictionary learning framework that learns class (segment) specific dictionaries that can efficiently represent test samples from the same class while poorly represent corresponding samples from other classes; 2) quantification of associated computation and memory footprint; and 3) a customized training and test procedure for segmenting post-op hydrocephalic CT images.
Experiments performed on infant CT brain images acquired from the CURE Children's Hospital of Uganda reveal the success of our method against the state-of-the-art alternatives. We also demonstrate that the proposed algorithm is computationally less burdensome and exhibits a graceful degradation against a number of training samples, enhancing its deployment potential.
脑积水是一种脑内脑脊液(CSF)异常积聚的医学病症。对脑影像进行脑组织和 CSF 的分割(手术前后,即术前(pre-op)与术后(post-op))对于评估手术治疗至关重要。术前图像的分割通常是一个相对简单的问题,并且已经得到了很好的研究。然而,由于解剖结构变形和硬膜下血肿压迫大脑,术后计算机断层扫描(CT)的分割变得更加具有挑战性。大多数基于强度和特征的分割方法无法将硬膜下与脑和 CSF 分开,因为硬膜下的几何形状在不同患者之间差异很大,其强度随时间变化。我们通过一种学习方法来解决这个问题,该方法将分割视为像素级的监督分类,即使用具有标记像素身份的 CT 扫描训练集。
我们的贡献包括:1)一种字典学习框架,该框架学习类(分割)特定的字典,这些字典可以有效地表示来自同一类的测试样本,而对来自其他类的相应样本表示不佳;2)计算和内存占用的量化;3)用于分割术后脑积水 CT 图像的定制训练和测试过程。
在乌干达 CURE 儿童医院获取的婴儿 CT 脑图像上进行的实验表明,我们的方法成功地对抗了最先进的替代方法。我们还证明,所提出的算法在计算上负担较小,并且在许多训练样本上表现出优雅的降级,从而增强了其部署潜力。