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Classification of post contrast T1 weighted MRI brain images using support vector machine

机译:使用支持向量机对对比后T1加权MRI脑图像进行分类

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In the field of clinical neuroscience, Magnetic Resonance Imaging (MRI) is amongst the most rapidly progressing diagnostic tools. However, the diagnostic accuracy is limited by the competency of the operating personnel to distinguish between physiological and pathological images. A computational system trained with various unhealthy and healthy brain images can help detect abnormalities in the 2D brain scans to aid in diagnosis. The pre-classification steps required are feature extraction and feature reduction. A Gaussian membership function was used for the former and principal component analysis for the latter. After testing the algorithm with various grid sizes, an optimum of 2×2 was chosen for the study. For classification, support vector machine with a quadratic kernel was used. An equal number of healthy and unhealthy post-contrast T1 weighted (radiological) images were used for training and test purposes (n=384). Accuracy as high as 87.5% was reported with this method. Therefore, this methodology can be applied effectively to classify MRI brain images.
机译:在临床神经科学领域,磁共振成像(MRI)是发展最快的诊断工具之一。但是,诊断准确性受到操作人员区分生理图像和病理图像的能力的限制。训练有各种不健康和健康的大脑图像的计算系统可以帮助检测2D大脑扫描中的异常情况,以帮助诊断。所需的预分类步骤是特征提取和特征缩减。高斯隶属度函数用于前者,而主成分分析用于后者。在使用各种网格尺寸测试算法后,为研究选择了最佳2×2。为了分类,使用了具有二次核的支持向量机。将相等数量的健康和不健康的对比后T1加权(放射)图像用于训练和测试(n = 384)。据报道该方法的准确度高达87.5%。因此,该方法可以有效地应用于对MRI脑图像进行分类。

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