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Application of multiresolution analysis for automated detection of brain abnormality using MR images: A comparative study

机译:多分辨率分析在MR图像自动检测脑部异常中的应用:一项比较研究

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Neurological disorders are abnormalities related to the human nervous system, and comprise electrical, biochemical, or structural changes in the spinal cord, brain, or central nervous system that induce various symptoms. These symptoms may be in the form of muscle weakness, paralysis, and poor coordination, among other factors. Early diagnosis of these changes is important for treatment, to limit disease progression. Magnetic resonance (MR) imaging is a widely used modality for diagnosing brain abnormality. Expert reading and interpretation of MR images is time-consuming, tedious, and subject to interobserver variability. Hence, various automated computer aided diagnosis (CAD) tools have been developed to detect brain abnormalities from MR imaging. Multiresolution analysis involves the transformation of images to capture obscure signatures. In this paper, we compare the performance of three different multi-resolution analysis techniques - the discrete wavelet transform, curvelet transform and shearlet transform - for detecting brain abnormality. Further, textural features extracted from the transformed image are optimally selected using particle swarm optimization (PSO), and classified using a support vector machine (SVM). The proposed method is applied on 83 control images, as well as 529 abnormal images from patients with cerebrovascular, neoplastic, degenerative and inflammatory diseases. For quantitative analysis, a cross validation scheme is implemented to improve system generality. Among the three techniques, the shearlet transform achieves a highest classification accuracy of 97.38% using only fifteen optimally selected features. The proposed system requires testing on a large data set prior to implementation as a standalone system to assist neurologists and radiologists in the early detection of brain abnormality. (C) 2018 Elsevier B.V. All rights reserved.
机译:神经系统疾病是与人类神经系统相关的异常,包括引起各种症状的脊髓,大脑或中枢神经系统的电,生化或结构变化。这些症状可能是肌肉无力,麻痹和协调不佳等形式。这些改变的早期诊断对于治疗很重要,以限制疾病的进展。磁共振成像(MR)是诊断脑部异常的一种广泛使用的方式。专家读取和解释MR图像非常耗时,乏味,并且会因观察者之间的差异而变化。因此,已经开发了各种自动计算机辅助诊断(CAD)工具来从MR成像检测脑部异常。多分辨率分析涉及图像转换以捕获模糊的签名。在本文中,我们比较了三种不同的多分辨率分析技术(离散小波变换,曲线波变换和剪切波变换)在检测脑部异常方面的性能。此外,使用粒子群优化(PSO)最佳地选择从转换后的图像中提取的纹理特征,并使用支持向量机(SVM)对其进行分类。该方法适用于83例对照图像以及529例来自脑血管,肿瘤,退行性和炎性疾病患者的异常图像。对于定量分析,实施交叉验证方案以提高系统通用性。在这三种技术中,小波变换仅使用15个最佳选择的特征即可达到97.38%的最高分类精度。拟议中的系统需要在作为独立系统实施之前对大型数据集进行测试,以帮助神经科医生和放射科医生尽早发现脑部异常。 (C)2018 Elsevier B.V.保留所有权利。

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