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A Novel Aortic Valve Segmentation from Ultrasound Image Using Continuous Max-Flow Approach

机译:利用连续最大流动方法的超声图像的新型主动脉瓣分割

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Geometric features of aortic valve can be applied in diagnostic, modeling and image-guided cardiac intervention, however methods to accurately and effectively delineate aortic valve from ultrasound (US) image are not well addressed. This paper proposes a novel aortic valve segmentation algorithm for intra-operative 2D short-axis US image using probability estimation and continuous max-flow (CMF) approach. The algorithm first calculates composite probability estimation (CPE) and single probability estimation (SPE) over 5 prior images based on both intensity and distance to the corresponding centroid, then the energy function for the current input image is constructed, followed by a Graphic Processing Unit (GPU) accelerated CMF approach to achieve aortic valve contours in approximately real time. Quantitative evaluations over 270 images acquired from 3 subjects indicated the results of the algorithm had good correlation with the manual segmentation results (ground truth) by an expert. The Average Symmetric Contour Distance (ASCD), Dice Metric (DM), and Reliability were employed to evaluate our algorithm, and the evaluation results of these three metrics were 1.79±0.46 (in pixels), 0.96±0.01 and 0.84 (d=0.95) respectively, where the computational time was 39.23±5.02 ms per frame.
机译:主动脉瓣的几何特征可以应用于诊断,建模和图像引导的心脏介入,但是可以从超声(US)图像中准确和有效地描绘主动脉瓣的方法并不良好地解决。本文提出了一种使用概率估计和连续最大流量(CMF)方法的操作型2D短轴US图像的新型主动脉瓣分割算法。该算法首先基于与相应质心的强度和距离的先前图像来计算复合概率估计(CPE)和单个概率估计(SPE),然后构造电流输入图像的能量功能,然后是图形处理单元(GPU)加速CMF方法,在大约实时实现主动脉瓣轮廓。从3个受试者获取的270次图像的定量评估表明了算法的结果与专家的手动分段结果(地面真理)有良好的相关性。采用平均对称轮廓距离(ASCD),骰子度量(DM)和可靠性来评估我们的算法,并且这三项度量的评估结果为1.79±0.46(以像素为单位),0.96±0.01和0.84(d = 0.95 )分别计算时间为每帧的计算时间为39.23±5.02 ms。

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