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A Robust, Automated Left Ventricle Region of Interest Localization Technique using a Cardiac Cine MRI Atlas

机译:使用心脏调解MRI图集的鲁棒,自动左心室左心室左心室地区

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Region of interest detection is a precursor to many medical image processing and analysis applications, including segmentation, registration and other image manipulation techniques. The optimal region of interest is often selected manually, based on empirical knowledge and features of the image dataset. However, if inconsistently identified, the selected region of interest may greatly affect the subsequent image analysis or interpretation steps, in turn leading to incomplete assessment during computer-aided diagnosis or incomplete visualization or identification of the surgical targets, if employed in the context of pre-procedural planning or image-guided interventions. Therefore, the need for robust, accurate and computationally efficient region of interest localization techniques is prevalent in many modern computer-assisted diagnosis and therapy applications. Here we propose a fully automated, robust, a priori learning-based approach that provides reliable estimates of the left and right ventricle features from cine cardiac MR images. The proposed approach leverages the temporal frame-to-frame motion extracted across a range of short axis left ventricle slice images with small training set generated from les than 10% of the population. This approach is based on histogram of oriented gradients features weighted by local intensities to first identify an initial region of interest depicting the left and right ventricles that exhibits the greatest extent of cardiac motion. This region is correlated with the homologous region that belongs to the training dataset that best matches the test image using feature vector correlation techniques. Lastly, the optimal left ventricle region of interest of the test image is identified based on the correlation of known ground truth segmentations associated with the training dataset deemed closest to the test image. The proposed approach was tested on a population of 100 patient datasets and was validated against the ground truth region of interest of the test images manually annotated by experts. This tool successfully identified a mask around the LV and RV and furthermore the minimal region of interest around the LV that fully enclosed the left ventricle from all testing datasets, yielding a 98% overlap with their corresponding ground truth. The achieved mean absolute distance error between the two contours that normalized by the radius of the ground truth is 0.20 ± 0.09.
机译:感兴趣的区域是许多医学图像处理和分析应用的前兆,包括分段,登记和其他图像操纵技术。基于图像数据集的经验知识和特征,通常是手动选择的最佳感兴趣区域。然而,如果识别出不一致的话,所选择的感兴趣区域可能会极大地影响随后的图像分析或解释步骤,导致计算机辅助诊断或不完全可视化或手术目标的不完全可视化或识别,如果采用预先存在 - 制定规划或图像引导的干预措施。因此,在许多现代计算机辅助诊断和治疗应用中,对稳健性,准确和计算有效的兴趣区域的需求普遍存在。在这里,我们提出了一个完全自动化的,坚固的基于学习的方法,提供了来自Cine心先生图像的左侧和右心室特征的可靠估计。所提出的方法利用了跨越短轴提取的时间帧到框架运动,左心室切片图像具有小于LES的小型训练集。该方法基于由局部强度加权的取向梯度特征的直方图,首先识别描绘表现出最大的心动程度的左和右心动的初始感兴趣区域。该区域与属于训练数据集的同源区域相关,其使用特征向量相关技术最佳地匹配测试图像。最后,基于与最接近测试图像的训练数据集相关联的已知地面真实分段的相关性来识别测试图像的最佳左心室区域。拟议的方法在100名患者数据集的人群上进行了测试,并根据专家手动注释的测试图像的地面真理区域验证。该工具成功地识别了LV和RV周围的掩码,此外,LV周围的最小感兴趣区域是完全封闭来自所有测试数据集的左心室,产生98%的重叠与相应的地面真相。通过地面真相半径标准化的两轮廓之间的平均绝对距离误差为0.20±0.09。

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