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Detection and Localization of Early-Stage Multiple Brain Tumors Using a Hybrid Technique of Patch-Based Processing, k-means Clustering and Object Counting

机译:使用基于补丁的处理的混合技术检测和定位早期多脑肿瘤,K均值聚类和对象计数

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摘要

Brain tumors are a major health problem that affect the lives of many people. These tumors are classified as benign or cancerous. The latter can be fatal if not properly diagnosed and treated. Therefore, the diagnosis of brain tumors at the early stages of their development can significantly improve the chances of patient’s full recovery after treatment. In addition to laboratory analyses, clinicians and surgeons extract information from medical images, recorded by various systems such as magnetic resonance imaging (MRI), X-ray, and computed tomography (CT). The extracted information is used to identify the essential characteristics of brain tumors (location, size, and type) in order to achieve an accurate diagnosis to determine the most appropriate treatment protocol. In this paper, we present an automated machine vision technique for the detection and localization of brain tumors in MRI images at their very early stages using a combination of k-means clustering, patch-based image processing, object counting, and tumor evaluation. The technique was tested on twenty real MRI images and was found to be capable of detecting multiple tumors in MRI images regardless of their intensity level variations, size, and location including those with very small sizes. In addition to its use for diagnosis, the technique can be integrated into automated treatment instruments and robotic surgery systems.
机译:脑肿瘤是影响很多人的生活的主要健康问题。这些肿瘤被归类为良性或恶性的。后者可能是致命的,如果不妥善诊断和治疗。因此,脑肿瘤在其发展的早期诊断可以显著改善患者的治疗后完全康复的机会。除了实验室分析,临床医师和从医学图像提取的外科医生的信息,由各种系统记录诸如磁共振成像(MRI),X射线,和计算机断层摄影(CT)。所提取的信息用于为了实现准确的诊断,以确定最合适的治疗方案,以确定脑肿瘤(位置,尺寸,和类型)的基本特征。在本文中,我们提出了使用中的k均值聚类,基于块拼贴的图像处理,对象计数,并评价肿瘤的组合的检测和在MRI图像脑肿瘤的定位在其早期阶段自动化机器视觉技术。该技术是在20个真实MRI图像测试,并发现能够在MRI图像中检测多个肿瘤不管它们的强度电平的变化,大小和位置的包括那些具有非常小的尺寸。除了其用于诊断用途,该技术可以被集成到自动治疗器械和机器人手术系统。

著录项

  • 作者

    Mohamed Nasor; Walid Obaid;

  • 作者单位
  • 年度 2020
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  • 原文格式 PDF
  • 正文语种 eng
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