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Performance of grey level statistic features versus Gabor wavelet for screening MRI brain tumors: A comparative study

机译:灰度级统计特征的性能与筛选MRI脑肿瘤的Gabor小波:比较研究

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Medical imaging technologies have an important role in the care of all human's organs and disease entities, where they are used widely for the effective diagnosis, treatment and monitoring of the disease. The MRI has been among the most important of all these technologies in the care of patients with brain tumors, where the brain tumor is the one of the most common diseases that cause the death. Screening of brain tumors is an essential to significant improvements in the diagnose and reduce the incidence of death, it can only be as successful as the feature extraction techniques it relies on. Many of these techniques have been used, but it is still not exactly clear which of feature extraction techniques ought to be favored. In this paper, we present here the results of a study in which we compare the proficiency of utilizing grey level statistic method and Gabor wavelet method in detecting and recognizing MRI brain abnormality. The framework that serves as our testbed includes med-sagittal plane detection and correction, feature extraction, feature selection, and lastly classification and comparison.
机译:医学成像技术在照顾所有人类器官和疾病实体中具有重要作用,在那里它们广泛用于疾病的有效诊断,治疗和监测。 MRI一直是关心脑肿瘤患者的所有这些技术中最重要的,脑肿瘤是导致死亡的最常见疾病之一。脑肿瘤的筛查对于诊断和降低死亡的发生率至关重要,只能与其依赖的特征提取技术一样成功。已经使用了许多这些技术,但仍然不完全清楚哪种特征提取技术应该受到青睐。在本文中,我们在这里展示了一项研究的结果,其中我们比较利用灰度级统计方法和Gabor小波法检测和识别MRI脑异常的研究。用作我们的测试平台的框架包括MED-Sagittal平面检测和校正,功能提取,特征选择,以及最后分类和比较。

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