论文标题

自动分割,特征提取以及健康和中风大脑血管的比较

Automatic Segmentation, Feature Extraction and Comparison of Healthy and Stroke Cerebral Vasculature

论文作者

Deshpande, Aditi, Jamilpour, Nima, Jiang, Bin, Kidwell, Chelsea, Wintermark, Max, Laksari, Kaveh

论文摘要

准确分割脑血管和脑血管形态的定量评估对于各种诊断和治疗目的至关重要,并且与研究脑健康和疾病有关。但是,由于血管成像数据的复杂性,这仍然是一项艰巨的任务。我们提出了一种无需任何手动干预的脑血管分割的自动化方法,也提出了一种使二进制体积骨架的方法以提取可以表征血管结构的血管几何特征。我们将概率血管增强过滤结合在一起,使用活性库技术进行分割磁共振和计算机断层扫描血管造影(MRA和CTA),然后提取血管中心线和直径,以计算脉管系统的几何特性。我们的方法使用了威利斯区域的3D幻影验证,平均骰子相似性为84%,平均Pearson相关性为84%,而修改后的Hausdorff距离误差最小。我们将此方法应用于健康受试者和中风患者的数据集,并在他们之间进行了定量比较。 We found significant differences in the geometric features including total length (2.88 +/- 0.38 m for healthy and 2.20 +/- 0.67 m for stroke), volume (40.18 +/- 25.55 ml for healthy and 34.43 +/- 21.83 ml for stroke), tortuosity (3.24 +/- 0.88 rad/cm for healthy and 5.80 +/- 0.92 rad/cm for stroke) and分形(盒子尺寸为1.36 +/- 0.28,而中风为1.69 +/- 0.20)。该技术可以应用于任何成像方式上,将来可以自动获取3D分段的脉管系统,用于诊所和其他脑血管疾病(CVD)的诊断和治疗计划,并研究由各种CVD引起的形态变化。

Accurate segmentation of cerebral vasculature and a quantitative assessment of cerebrovascular morphology is critical to various diagnostic and therapeutic purposes and is pertinent to studying brain health and disease. However, this is still a challenging task due to the complexity of the vascular imaging data. We propose an automated method for cerebral vascular segmentation without the need of any manual intervention as well as a method to skeletonize the binary volume to extract vascular geometric features which can characterize vessel structure. We combine a probabilistic vessel-enhancing filtering with an active-contour technique to segment magnetic resonance and computed tomography angiograms (MRA and CTA) and subsequently extract the vessel centerlines and diameters to calculate the geometrical properties of the vasculature. Our method was validated using a 3D phantom of the Circle-of-Willis region with 84% mean Dice Similarity and 85% mean Pearson Correlation with minimal modified Hausdorff distance error. We applied this method to a dataset of healthy subjects and stroke patients and present a quantitative comparison between them. We found significant differences in the geometric features including total length (2.88 +/- 0.38 m for healthy and 2.20 +/- 0.67 m for stroke), volume (40.18 +/- 25.55 ml for healthy and 34.43 +/- 21.83 ml for stroke), tortuosity (3.24 +/- 0.88 rad/cm for healthy and 5.80 +/- 0.92 rad/cm for stroke) and fractality (box dimension 1.36 +/- 0.28 for healthy vs. 1.69 +/- 0.20 for stroke). This technique can be applied on any imaging modality and can be used in the future to automatically obtain the 3D segmented vasculature for diagnosis and treatment planning of Stroke and other cerebrovascular diseases (CVD) in the clinic and also to study the morphological changes caused by various CVD.

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