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首页> 外文期刊>The International Journal of Cardiovascular Imaging >New automated Markov–Gibbs random field based framework for myocardial wall viability quantification on agent enhanced cardiac magnetic resonance images
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New automated Markov–Gibbs random field based framework for myocardial wall viability quantification on agent enhanced cardiac magnetic resonance images

机译:新的基于Markov–Gibbs随机场的自动框架,用于在药物增强的心脏磁共振图像上定量心肌壁的生存能力

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A novel automated framework for detecting and quantifying viability from agent enhanced cardiac magnetic resonance images is proposed. The framework identifies the pathological tissues based on a joint Markov–Gibbs random field (MGRF) model that accounts for the 1st-order visual appearance of the myocardial wall (in terms of the pixel-wise intensities) and the 2nd-order spatial interactions between pixels. The pathological tissue is quantified based on two metrics: the percentage area in each segment with respect to the total area of the segment, and the trans-wall extent of the pathological tissue. This transmural extent is estimated using point-to-point correspondences based on a Laplace partial differential equation. Transmural extent was validated using a simulated phantom. We tested the proposed framework on 14 datasets (168 images) and validated against manual expert delineation of the pathological tissue by two observers. Mean Dice similarity coefficients (DSC) of 0.90 and 0.88 were obtained for the observers, approaching the ideal value, 1. The Bland–Altman statistic of infarct volumes estimated by manual versus the MGRF estimation revealed little bias difference, and most values fell within the 95% confidence interval, suggesting very good agreement. Using the DSC measure we documented statistically significant superior segmentation performance for our MGRF method versus established intensity-based methods (greater DSC, and smaller standard deviation). Our Laplace method showed good operating characteristics across the full range of extent of transmural infarct, outperforming conventional methods. Phantom validation and experiments on patient data confirmed the robustness and accuracy of the proposed framework.
机译:提出了一种新颖的自动化框架,用于从药剂增强的心脏磁共振图像中检测和量化生存力。该框架基于联合马尔可夫-吉布斯随机场(MGRF)模型识别病理组织,该模型说明了心肌壁的一阶视觉外观(以像素方向的强度表示)以及两者之间的二阶空间相互作用像素。根据两个指标对病理组织进行定量:每个节段相对于节段总面积的百分比,以及病理组织的跨壁范围。使用基于Laplace偏微分方程的点对点对应关系来估算此透壁程度。使用模拟体模验证透壁程度。我们在14个数据集(168个图像)上测试了所提出的框架,并由两名观察员针对病理组织的人工专家描述进行了验证。观察者的平均骰子相似性系数(DSC)为0.90和0.88,接近理想值1。通过手动估计与MGRF估计得出的梗死体积的Bland-Altman统计量显示出很小的偏差差异,并且大多数值都落在了95%的置信区间,表明一致性很好。使用DSC度量,我们记录了MGRF方法与已建立的基于强度的方法(较大的DSC和较小的标准偏差)相比,具有统计学上显着的出色分割效果。我们的拉普拉斯(Laplace)方法在整个透壁梗塞范围内均显示出良好的操作特性,优于传统方法。虚拟验证和对患者数据的实验证实了所提出框架的鲁棒性和准确性。

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