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A Novel Dynamic Programming Based Semi-Automatic Endocardial Border Detection Method for 4D Cardiac Ultrasound

机译:一种新型动态规划基于动态规划的4D心脏超声的半自动内膜边界检测方法

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We propose a semi-automatic endocardial borderdetection method for left ventricular volume estimation in 3D time series of cardiac ultrasound data. We evaluated on data acquired with the Fast Rotating Ultrasound (FRU) transducer: a linear phased array transducer rotated at high speed around its image axis, generating high quality 2D images of the heart. From four manually drawn contours a 3D + time shape and edge pattern model is derived from which contour shape and edge patterns are estimated for each image using the models. Pattern matching and dynamic programming is applied to detect the contours automatically. The method allows easy corrections in the detected 2D contours, to iteratively achieve more accurate models and improved detections. An evaluation of this method on FRU data against MRI was done for full cycle LV volumes on 10 patients. Good correlations were found against MRI volumes (r(velence)0.94, y(velence)0.73x + 30.3, difference of 9.6+/- 17.4 ml (Av +/-SD)) and a low interobserver variability for US (r(velence)0.94, y(velence)1.11x - 16.8, difference of 1.4 +/-14.2 ml). On average only 2.8 corrections per patient were needed (in a total of 160 images). Although the method shows good correlations with MRI without corrections, applying these corrections can make considerable improvements.
机译:我们提出了一种半自动心内膜下界,用于3D时间序列的左心室体积估计。我们评估了快速旋转超声(FRU)换能器获取的数据:线性相位阵列换能器以高速旋转其图像轴,产生心脏的高质量2D图像。从四个手动拉伸的轮廓,3D +时间形状和边缘图案模型源自使用该模型为每个图像估计轮廓形状和边缘图案。模式匹配和动态编程应用于自动检测轮廓。该方法允许在检测到的2D轮廓中易于校正,以迭代地实现更准确的模型和改进的检测。对10例患者的全循环LV体积进行了对FRU数据的评估。发现良好的相关性对阵MRI体积(R(velence)0.94,Y(Velence)0.73x + 30.3,差异为9.6 +/- 17.4 ml(AV +/-SD)和我们的低Interobserver变异性(R(velence )0.94,Y(柔性)1.11x - 16.8,1.4 +/- 14.2 ml差异)。平均只需要每位患者的2.8个校正(总共160个图像)。虽然该方法显示与MRI没有校正的良好相关性,但是应用这些校正可以做出相当大的改进。

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