基于统计分析的良性脑肿瘤自动检测

N. M. Ali, Omnia M. ElZubair, A. Hamza, H. Elnour, Mohamed O. Khider
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引用次数: 0

摘要

肿瘤是指颅骨内有害细胞不受控制地生长,从而使颅内压升高。在医学研究领域,医学图像分类是至关重要的。影像学在脑肿瘤的诊断中起着至关重要的作用。磁共振成像是一种无创的三维成像技术,可以产生高质量的图像。对图像的解释可能不完全准确,需要第二意见的帮助,不同医生甚至同一医生在不同情况下做出的诊断存在差异,原因包括工作负荷、医生的观察准确性、图像清晰度、噪音或医生的视力或情绪。基于上述原因,我们开发了一种计算机辅助诊断系统,以帮助在脑磁共振成像扫描中识别或检测良性肿瘤。在本研究的第一阶段,为了便于系统对脑肿瘤类型进行准确的分类,我们对图像进行了图像增强和正确的分割处理。在第二阶段,我们使用一种称为灰度共现矩阵的技术研究了几个统计特征。这项技术的实现是用MATLAB (Matrix Laboratory)软件来确定诊断脑部良性肿瘤的最佳特征。灰度共生矩阵是描述空间关系和具有相似灰度值的像素位置信息的二阶统计分析;我们发现一些特征在正常组织和异常组织之间有很大的界限。采用反向传播人工神经网络进行分类。检测结果和定量数据分析表明,该系统是有效的,检测准确率为99.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Detection of Benign Brain Tumors Using Statistical Analysis
Tumor is an uncontrolled growth of harmful cells within the skull that raises intracranial pressure. In the field of medical research, medical picture classification is critical. Imaging plays a crucial role in the diagnosis of brain tumors. Magnetic resonance imaging is a noninvasive, 3-dimensional imaging technique that produces high-quality images. The interpretation of an image might not be completely precise and require the assistance of a second opinion, variability in diagnosis made by different doctors and even by the same doctor under different circumstances due to job load, observation accuracy for the physician, picture clarity, noise, or the physician's vision or mood. Based on the previously mentioned reasons, we have developed a computer-aided diagnosis system to aid in the identification or detection of benign tumor in brain magnetic resonance imaging scans. In the first stage of this study, image enhancement and correct segmentation processes have been conducted into the images in order to facilitate the system to give an accurate classification of brain tumor type. In the second stage, we investigated several statistical features using a technique called gray-level co-occurrence matrix. The implementation of this technique was done with software called MATLAB (Matrix Laboratory) to determine the best features for diagnosing benign tumors of the brain. Gray-level co-occurrence matrix is second-order statistical analysis that describes spatial relationships and the information about the pixel position that has a similar gray-level value; we have found that some features have a big cutoff range between normal and abnormal tissues. Classification was done using back-propagation artificial neural network. The detection findings and quantitative data analysis show that our suggested system is effective, with a detection accuracy of 99.8%.
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