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Automatic selection of localized region-based active contour models using image content analysis applied to brain tumor segmentation

机译:使用应用于脑肿瘤分割的图像内容分析自动选择基于区域的基于区域的主动轮廓模型

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Abstract Brain tumor segmentation is a routine process in a clinical setting and provides useful information for diagnosis and treatment planning. Manual segmentation, performed by physicians or radiologists, is a time-consuming task due to the large quantity of medical data generated presently. Hence, automatic segmentation methods are needed, and several approaches have been introduced in recent years including the Localized Region-based Active Contour Model (LRACM). There are many popular LRACM, but each of them presents strong and weak points. In this paper, the automatic selection of LRACM based on image content and its application on brain tumor segmentation is presented. Thereby, a framework to select one of three LRACM, i.e., Local Gaussian Distribution Fitting (LGDF), localized Chan-Vese (C-V) and Localized Active Contour Model with Background Intensity Compensation (LACM-BIC), is proposed. Twelve visual features are extracted to properly select the method that may process a given input image. The system is based on a supervised approach. Applied specifically to Magnetic Resonance Imaging (MRI) images, the experiments showed that the proposed system is able to correctly select the suitable LRACM to handle a specific image. Consequently, the selection framework achieves better accuracy performance than the three LRACM separately. Graphical abstract Display Omitted Highlights ? Automatic selection of the Localized Region-based Active Contour Model (LRACM). ? Statistical moment-based features as image descriptors. ? Automatic Brain tumor segmentation framework. ? LRACM performance depends on the image content. ? Fast and reliable MRI data analysis.
机译:摘要脑肿瘤分割是临床环境中的常规过程,并提供诊断和治疗计划的有用信息。由于目前生成的大量医疗数据,由医生或放射科学家执行的手动分割是一种耗时的任务。因此,需要自动分段方法,近年来已经引入了几种方法,包括基于局部区域的主动轮廓模型(LRACM)。有许多流行的LRACM,但他们每个人都呈现出强弱点。本文介绍了基于图像含量的LRACM的自动选择及其在脑肿瘤分割上的应用。由此,提出了一种选择三种LRACM中的一种的框架,即局部高斯分布(LGDF),局部化的CHAN-VESE(C-V)和具有背景强度补偿(LACM-BIC)的局部激活轮廓模型。提取十二个可视功能以正确选择可以处理给定输入图像的方法。该系统基于监督方法。专门应用于磁共振成像(MRI)图像,实验表明,所提出的系统能够正确地选择合适的LRACM来处理特定图像。因此,选择框架与三个LRACM分别实现了更好的精度性能。图形抽象显示省略了亮点?自动选择局部基于区域的主动轮廓模型(LRACM)。还基于统计时刻的特征作为图像描述符。还自动脑肿瘤分割框架。还LRACM性能取决于图像内容。还快速可靠的MRI数据分析。

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