University of Adelaide, Adelaide.
IEEE Trans Pattern Anal Mach Intell. 2013 Nov;35(11):2592-607. doi: 10.1109/TPAMI.2013.96.
We present a new statistical pattern recognition approach for the problem of left ventricle endocardium tracking in ultrasound data. The problem is formulated as a sequential importance resampling algorithm such that the expected segmentation of the current time step is estimated based on the appearance, shape, and motion models that take into account all previous and current images and previous segmentation contours produced by the method. The new appearance and shape models decouple the affine and nonrigid segmentations of the left ventricle to reduce the running time complexity. The proposed motion model combines the systole and diastole motion patterns and an observation distribution built by a deep neural network. The functionality of our approach is evaluated using a dataset of diseased cases containing 16 sequences and another dataset of normal cases comprised of four sequences, where both sets present long axis views of the left ventricle. Using a training set comprised of diseased and healthy cases, we show that our approach produces more accurate results than current state-of-the-art endocardium tracking methods in two test sequences from healthy subjects. Using three test sequences containing different types of cardiopathies, we show that our method correlates well with interuser statistics produced by four cardiologists.
我们提出了一种新的统计模式识别方法,用于解决超声数据中左心室心内膜跟踪的问题。该问题被表述为一种序贯重要性重采样算法,使得当前时间步的期望分割基于外观、形状和运动模型进行估计,这些模型考虑了所有以前和当前的图像以及该方法产生的以前的分割轮廓。新的外观和形状模型将左心室的仿射和非刚性分割解耦,以降低运行时的复杂度。所提出的运动模型结合了收缩期和舒张期运动模式以及由深度神经网络构建的观测分布。我们的方法的功能使用包含 16 个序列的患病病例数据集和由四个序列组成的正常病例数据集进行评估,这两个数据集都呈现了左心室的长轴视图。使用由患病和健康病例组成的训练集,我们表明,我们的方法在两个来自健康受试者的测试序列中产生的结果比当前最先进的心内膜跟踪方法更准确。使用包含不同类型心脏病的三个测试序列,我们表明我们的方法与四位心脏病专家生成的用户间统计数据相关性很好。