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A new effective and powerful medical image segmentation algorithm based on optimum path snakes

机译:一种基于最优路径蛇的新有效和强大的医学图像分割算法

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Novel segmentation methods based on models of deformable active contours are constantly proposed and validated in different fields of knowledge, with the aim to make the detection of the regions of interest standard. This paper propose a new method called Optimum Path Snakes (OPS), a new adaptive algorithm and free of parameters to define the total energy of a active contour model with automatic initialization and stop criteria. In the experimental assessment, the OPS is compared against some approaches commonly used in the following fields, such as vector field convolution, gradient vector flow, and other specialists methods for lung segmentation using thorax computed tomography images. The segmentation of regions with stroke was carried out with methods based on region growing, watershed and a specialist level set approach. Statistical validations metrics using Dice coefficient (DC) and Hausdorff distance (HD) were also evaluated, as well as the processing time. The results showed that the OPS is a promising tool for image segmentation, presenting satisfactory results for DC and HD, and, many times, superior to the other algorithms it was compared with, including those generated by specialists. Another advantage of the OPS is that it is not restricted to specific types of images, neither applications. (C) 2018 Elsevier B.V. All rights reserved.
机译:基于可变形活性轮廓模型的新型分段方法在不同的知识领域不断提出和验证,目的是检测利息标准的区域。本文提出了一种新的方法,称为最佳路径蛇(OPS),新的自适应算法和空闲参数,以定义具有自动初始化和停止标准的活动轮廓模型的总能量。在实验评估中,将OPS与以下领域中常用的一些方法进行比较,例如矢量现场卷积,梯度向量流等于使用胸部计算断层摄影图像的肺分割的其他专家方法。通过基于区域生长,流域和专业水平集合方法的方法进行地区的分割。还评估了使用骰子系数(DC)和Hausdorff距离(HD)的统计验证度量,以及处理时间。结果表明,OPS是用于图像分割的有希望的工具,呈现DC和HD的令人满意的结果,并且许多次,优于与其比较的其他算法,包括由专家产生的算法。 OPS的另一个优点是它不限于特定类型的图像,既不是应用。 (c)2018 Elsevier B.v.保留所有权利。

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