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Automatic segmentation of liver & lesion detection using H-minima transform and connecting component labeling

机译:利用H-MIMIMA变换和连接组件标记自动分割肝脏和病变检测

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摘要

Automatic segmentation of the liver and the Lesion detection can be a very challenging task due to its variability in size, shape, position and the presence of other organs with similar intensities. Manual segmentation and detection of a tumor is a time-consuming task and greatly depends upon the expertise and experience of the physician. We proposed a method which consists of automatic segmentation and detection of liver and lesion using CT scan modality. H-minima transform filter, Otsu global thresholds, Morphological opening by reconstruction and modified Connected Component Labeling algorithms are applied for liver segmentation. To keep the technique simple and effective, an appropriate range of threshold values are defined to detect different types of lesions. Performance of the proposed system is evaluated and compared with the state-of-the art algorithms. The results of the comparison show that the proposed approach is robust and efficient due to its simplicity. The dice coefficient score for the hepatic segmentation is 94% while sensitivity and specificity for hepatic lesion are 93% and 87% respectively.
机译:由于其尺寸,形状,位置和具有相似强度的其他器官的存在的可变性,肝脏和病变检测的自动分割可以是非常具有挑战性的任务。手动分割和肿瘤的检测是耗时的任务,大大取决于医生的专业知识和经验。我们提出了一种方法,该方法包括使用CT扫描模态的自动分割和检测肝脏和病变。 H-MIMIMA变换过滤器,OTSU全局阈值,通过重建和改进的连接组分标记算法应用于肝脏分割。为了使技术简单且有效地,定义适当范围的阈值以检测不同类型的病变。评估所提出的系统的性能,并与最先进的算法进行比较。比较结果表明,由于其简单性,所提出的方法具有稳健且有效。肝细分的骰子系数分数为94%,而肝病变的敏感性和特异性分别为93%和87%。

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