An optimal segmentation method for processing medical image to detect the brain tumor

Ho Thi Thao, V. C. Phan, Tuan Anh Le, Hong-Ha Nguyen, Quang Thanh Ha, B. Tran
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Abstract

In the field of medical physics, detection of brain tumor from computed tomography (CT) or magnetic resonance (MRI) scans is a difficult task due to complexity of the brain hence it is one of the top priority goals of many recent researches. In this article, we describe a new method that combines four different steps including smoothing, Sobel edge detection, connected component, and finally region growing algorithms for locating and extracting the various lesions in the brain. The computational algorithm of the proposed method was implemented using Insight Toolkit (ITK). The analysis results indicate that the proposed method automatically and efficiently detected the tumor region from the CT or MRI image of the brain. It is very clear for physicians to separate the abnormal from the normal surrounding tissue to get a real identification of related areas; improving quality and accuracy of diagnosis, which would help to increase success possibility by early detection of tumor as well as reducing surgical planning time. This is an important step in correctly calculating the dose in radiation therapy later.
一种用于医学图像检测的最佳分割方法
在医学物理领域,由于大脑的复杂性,通过计算机断层扫描(CT)或磁共振(MRI)扫描检测脑肿瘤是一项艰巨的任务,因此它是许多近期研究的首要目标之一。在本文中,我们描述了一种结合四个不同步骤的新方法,包括平滑,索贝尔边缘检测,连接分量,最后是区域增长算法,用于定位和提取大脑中的各种病变。采用Insight Toolkit (ITK)实现了该方法的计算算法。分析结果表明,该方法能够自动有效地从CT或MRI图像中检测出肿瘤区域。对于医生来说,将异常组织与正常的周围组织区分开来以获得相关区域的真实识别是非常清楚的;提高诊断质量和准确性,有助于早期发现肿瘤,增加成功的可能性,减少手术计划时间。这是正确计算放射治疗剂量的重要一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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