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Automatic Estimation of Heart Boundaries and Cardiothoracic Ratio from Chest X-ray Images

机译:从胸部X射线图像自动估计心脏边界和心胸比率

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Cardiothoracic ratio (CTR) is a widely used radiographic index to assess heart size on chest X-rays (CXRs). Recent studies have suggested that also two-dimensional CTR might contain clinical information about the heart function. However, manual measurement of such indices is both subjective and time consuming. This study proposes a fast algorithm to automatically estimate CTR indices based on CXRs. The algorithm has three main steps: 1) model based lung segmentation, 2) estimation of heart boundaries from lung contours, and 3) computation of cardiothoracic indices from the estimated boundaries. We extended a previously employed lung detection algorithm to automatically estimate heart boundaries without using ground truth heart markings. We used two datasets: a publicly available dataset with 247 images as well as clinical dataset with 167 studies from Geisinger Health System. The models of lung fields are learned from both datasets. The lung regions in a given test image are estimated by registering the learned models to patient CXRs. Then, heart region is estimated by applying Harris operator on segmented lung fields to detect the corner points corresponding to the heart boundaries. The algorithm calculates three indices, CTR1D, CTR2D, and cardiothoracic area ratio (CTAR). The method was tested on 103 clinical CXRs and average error rates of 7.9%, 25.5%, and 26.4% (for CTR1D, CTR2D, and CTAR respectively) were achieved. The proposed method outperforms previous CTR estimation methods without using any heart templates. This method can have important clinical implications as it can provide fast and accurate estimate of cardiothoracic indices.
机译:心胸比率(CTR)是广泛使用的射线照相指数,用于评估胸部X射线(CXR)上的心脏大小。最近的研究表明,二维CTR也可能包含有关心脏功能的临床信息。但是,手动测量此类指标既主观又耗时。这项研究提出了一种基于CXR自动估算点击率指标的快速算法。该算法包括三个主要步骤:1)基于模型的肺分割; 2)根据肺轮廓估计心脏边界; 3)根据估计边界计算心胸指数。我们扩展了以前采用的肺部检测算法,以自动估计心脏边界,而无需使用地面真实心脏标记。我们使用了两个数据集:一个包含247张图像的公开可用数据集,以及来自Geisinger Health System的167个研究的临床数据集。肺野模型是从两个数据集中学习的。通过将学习的模型注册到患者CXR,可以估算给定测试图像中的肺区域。然后,通过在分割的肺野上应用哈里斯算子来检测与心脏边界相对应的角点,从而估计心脏区域。该算法计算三个指标CTR1D,CTR2D和心胸面积比(CTAR)。该方法在103个临床CXR上进行了测试,平均错误率达到7.9%,25.5%和26.4%(分别为CTR1D,CTR2D和CTAR)。所提出的方法在不使用任何心脏模板的情况下优于以前的点击率估算方法。该方法可提供快速准确的心胸指数评估,因此具有重要的临床意义。

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