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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Supervised Variational Model With Statistical Inference and Its Application in Medical Image Segmentation
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Supervised Variational Model With Statistical Inference and Its Application in Medical Image Segmentation

机译:具有统计推断的监督变分模型及其在医学图像分割中的应用

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摘要

Automated and general medical image segmentation can be challenging because the foreground and the background may have complicated and overlapping density distributions in medical imaging. Conventional region-based level set algorithms often assume piecewise constant or piecewise smooth for segments, which are implausible for general medical image segmentation. Furthermore, low contrast and noise make identification of the boundaries between foreground and background difficult for edge-based level set algorithms. Thus, to address these problems, we suggest a supervised variational level set segmentation model to harness the statistical region energy functional with a weighted probability approximation. Our approach models the region density distributions by using the mixture-of-mixtures Gaussian model to better approximate real intensity distributions and distinguish statistical intensity differences between foreground and background. The region-based statistical model in our algorithm can intuitively provide better performance on noisy images. We constructed a weighted probability map on graphs to incorporate spatial indications from user input with a contextual constraint based on the minimization of contextual graphs energy functional. We measured the performance of our approach on ten noisy synthetic images and 58 medical datasets with heterogeneous intensities and ill-defined boundaries and compared our technique to the Chan–Vese region-based level set model, the geodesic active contour model with distance regularization, and the random walker model. Our method consistently achieved the highest Dice similarity coefficient when compared to the other methods.
机译:由于前景和背景在医学成像中可能具有复杂且重叠的密度分布,因此自动和常规医学图像分割可能具有挑战性。传统的基于区域的水平集算法通常假设分段的分段常数或分段平滑度,这对于一般医学图像分割来说是难以置信的。此外,低对比度和噪声使基于边缘的水平集算法难以识别前景和背景之间的边界。因此,为解决这些问题,我们提出了一种监督的变异水平集分割模型,以加权概率近似利用统计区域能量函数。我们的方法通过使用混合混合高斯模型对区域密度分布进行建模,以更好地近似实际强度分布并区分前景和背景之间的统计强度差异。我们算法中基于区域的统计模型可以直观地在嘈杂的图像上提供更好的性能。我们在图上构建了一个加权概率图,以基于上下文图能量函数的最小化,将来自用户输入的空间指示与上下文约束结合在一起。我们在十个嘈杂的合成图像和58个具有异类强度和边界不明确的医学数据集上测量了我们的方法的性能,并将我们的技术与基于Chan-Vese地区的水平集模型,具有距离正则化的测地线活动轮廓模型和随机沃克模型。与其他方法相比,我们的方法始终获得最高的Dice相似系数。

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