首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.6 no.24 >Automatic brain tumor detection in MRI: methodology and statistical validation
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Automatic brain tumor detection in MRI: methodology and statistical validation

机译:MRI中脑肿瘤的自动检测:方法论和统计验证

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Automated brain tumor segmentation and detection are immensely important in medical diagnostics because it provides information associated to anatomical structures as well as potential abnormal tissue necessary to delineate appropriate surgical planning. In this work, we propose a novel automated brain tumor segmentation technique based on multiresolution texture information that combines fractal Brownian motion (fBm) and wavelet multiresolution analysis. Our wavelet-fractal technique combines the excellent multiresolution localization property of wavelets to texture extraction of fractal. We prove the efficacy of our technique by successfully segmenting pediatric brain MR images (MRIs) from St. Jude Children's Research Hospital. We use self-organizing map (SOM) as our clustering tool wherein we exploit both pixel intensity and multiresolution texture features to obtain segmented tumor. Our test results show that our technique successfully segments abnormal brain tissues in a set of T1 images. In the next step, we design a classifier using Feed-Forward (FF) neural network to statistically validate the presence of tumor in MRI using both the multiresolution texture and the pixel intensity features. We estimate the corresponding receiver operating curve (ROC) based on the findings of true positive fractions and false positive fractions estimated from our classifier at different threshold values. An ROC, which can be considered as a gold standard to prove the competence of a classifier, is obtained to ascertain the sensitivity and specificity of our classifier. We observe that at threshold 0.4 we achieve true positive value of 1.0 (100%) sacrificing only 0.16 (16%) false positive value for the set of 50 T1 MRI analyzed in this experiment.
机译:自动化的脑肿瘤分割和检测在医学诊断中极为重要,因为它提供了与解剖结构以及潜在的异常组织相关的信息,以描述适当的手术计划。在这项工作中,我们提出了一种基于多分辨率纹理信息的新型自动脑肿瘤分割技术,该技术结合了分形布朗运动(fBm)和小波多分辨率分析。我们的小波分形技术将小波出色的多分辨率定位特性与分形的纹理提取结合在一起。我们成功地分割了圣裘德儿童研究医院的小儿脑MR图像(MRI),证明了我们技术的有效性。我们使用自组织图(SOM)作为我们的聚类工具,其中我们利用像素强度和多分辨率纹理特征来获取分割的肿瘤。我们的测试结果表明,我们的技术成功地在一组T1图像中分割了异常的脑组织。在下一步中,我们将使用前馈(FF)神经网络设计一个分类器,以使用多分辨率纹理和像素强度特征在统计学上验证MRI中肿瘤的存在。我们根据分类器在不同阈值下估计的真实阳性分数和错误阳性分数的发现,估计相应的接收器工作曲线(ROC)。可以将ROC视为证明分类器能力的金标准,从而确定我们分类器的敏感性和特异性。我们观察到,在此阈值0.4处,对于本实验中分析的50个T1 MRI组,仅获得0.16(16%)个假阳性值的真实正值1.0(100%)。

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