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Optimal kernel sizes for 4D image reconstruction using normalized convolution from sparse fast-rotating transesophageal 2D ultrasound images

机译:使用来自稀疏快速旋转经乳管2D 2D超声图像的标准化卷积的4D图像重建的最佳核大小

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A transesophageal echocardiography (TEE) microprobe is suitable for monitoring long minimally invasive interventions in the heart, because it is well tolerated by patients. To visualize complex 3D structures of the beating heart, a 4D-image reconstruction derived from irregularly and sparsely sampled 2D images is needed. We previously showed that normalized convolution (NC) with optimized kernels performs better than nearest-neighbor or linear interpolation. In order to use NC for image reconstructions we need to be able to predict optimal kernel sizes. We therefore present an advanced optimization scheme, and estimate optimal NC kernel sizes for five different patient-data sets. From the optimization results we derive a model for estimating optimal NC kernel sizes. As ground truth (GT), we used five full-volume 4D TEE patient scans, acquired with the X7-2t matrix transducer. To simulate 2D data acquisition, the GT datasets were sliced at random rotation angles and at random normalized cardiac phases. Data sets containing 400, 600, 900, 1350, and 1800 2D images were created for all patients, producing a total of 25 data sets. A 2D Gaussian function was used as NC kernel, and optimal kernel sizes were obtained with a quasi-Newton optimizer. A power law model was fitted to the optimal kernels estimated. We conclude that optimal kernel sizes for NC can be successfully predicted by a model at the cost of a relatively small increase in the reconstruction error.
机译:化学眼镜超声心动图(TEE)微探测器适合于监测心脏中长的微创干预,因为患者耐受良好。为了可视化跳动心的复杂3D结构,需要从不规则和稀疏的采样的2D图像衍生的4D图像重建。我们之前展示了具有优化内核的标准化卷积(NC)比最近邻居或线性插值更好。为了使用NC进行图像重建,我们需要能够预测最佳内核大小。因此,我们提出了一种高级优化方案,并为五种不同的患者数据集估计最佳NC内核大小。从优化结果,我们推导了一种估算最佳NC内核大小的模型。作为地面真理(GT),我们使用了五个全卷4D TEE患者扫描,用X7-2T矩阵传感器获得。为了模拟2D数据采集,GT数据集在随机旋转角度和随机归一化心脏阶段切片。为所有患者创建了包含400,600,900,1350和1800 2D图像的数据集,产生共25个数据集。使用2D高斯函数用作NC内核,并使用准牛顿优化器获得最佳内核大小。估计最佳内核的电力法模型。我们得出结论,可以通过模型以相对较小的重建误差增加成本来成功预测NC的最佳内核大小。

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