Performance analysis of various segmentation techniques for detection of brain abnormality

M. Sumithra, B. Deepa
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引用次数: 16

Abstract

In the field of neuropsychiatric disorders, it is known that brain segmentation is important for both detection and diagnosis. Processing of MRI/PET images for brain pathology detection is a challenging task for radiologists. To address this issue the performance of various segmentation techniques has been analyzed with Independent component analysis (ICA) as a pre-processing step for removal of salt and pepper and speckle noise at 5dB noise level. There are so many segmentation methodology used for medical diagnosis, which comes under the classification strategy like supervised and unsupervised segmentation, region and edge based segmentation. The methodologies considered in this paper will cover the main classification strategy of segmentation for brain abnormality. Mean Shift (MS), Fuzzy C Means (FCM), Hough Transform (HT), Normalized Graph Cut (NGC), Thresholding by Histogram (ThH) and Support Vector Machine (SVM) are taken here for performance analysis. Experimental results suggest that, for PET images, pathology detection is found good while using ICA as denoising method for removing salt and pepper and speckle noise at 5dB and SVM as segmentation technique. Whereas for MRI images the performance of both ThH and SVM goes hand in hand as a segmentation methodology with ICA as noise removal method. The evaluation measure used here are Jaccard and Dice Coefficient, Peak Signal to Noise Ratio (PSNR), Global Consistency Error (GCE), Under Segmentation (UnS), Over segmentation (OvS) and Incorrect Segmentation (InC), Selectivity, Specificity, Accuracy, Positive predictive value (PPV) and Negative predictive value (NPV) . From the obtained results it is seen that SVM gives better result for detection of mild cognitive impairment in PET scan images and both SVM and ThH is performing good for brain tumor detection in MRI images, without affecting the image quality.
脑异常检测中各种分割技术的性能分析
在神经精神疾病领域,众所周知,脑分割对检测和诊断都很重要。对放射科医生来说,处理MRI/PET图像用于脑病理检测是一项具有挑战性的任务。为了解决这一问题,采用独立分量分析(ICA)作为预处理步骤,在5dB噪声水平下去除椒盐和斑点噪声,分析了各种分割技术的性能。医学诊断中使用的分割方法有很多,主要有监督分割和无监督分割、区域分割和边缘分割。本文所考虑的方法将涵盖脑异常分割的主要分类策略。本文采用均值移(MS)、模糊C均值(FCM)、霍夫变换(HT)、归一化图割(NGC)、直方图阈值法(ThH)和支持向量机(SVM)进行性能分析。实验结果表明,对于PET图像,采用ICA作为去噪方法去除5dB的椒盐和斑点噪声,采用SVM作为分割技术,病理检测效果良好。然而,对于MRI图像,ThH和SVM的性能都是携手并进的分割方法,ICA作为噪声去除方法。这里使用的评估指标是Jaccard和Dice系数,峰值信噪比(PSNR),全局一致性误差(GCE),分割不足(UnS),过度分割(OvS)和错误分割(InC),选择性,特异性,准确性,阳性预测值(PPV)和阴性预测值(NPV)。从得到的结果可以看出,SVM在PET扫描图像中对轻度认知障碍的检测效果更好,SVM和ThH在MRI图像中对脑肿瘤的检测效果都很好,且不影响图像质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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