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A two-view ultrasound CAD system for spina bifida detection using Zernike features

机译:使用Zernike功能的脊柱裂检测的双视图超声CAD系统

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In this work, we address a very specific CAD (Computer Aided Detection/Diagnosis) problem and try to detect one of the relatively common birth defects - spina bifida, in the prenatal period. To do this, fetal ultrasound images are used as the input imaging modality, which is the most convenient so far. Our approach is to decide using two particular types of views of the fetal neural tube. Transcerebellar head (i.e. brain) and transverse (axial) spine images are processed to extract features which are then used to classify healthy (normal), suspicious (probably defective) and non-decidable cases. Decisions raised by two independent classifiers may be individually treated, or if desired and data related to both modalities are available, those decisions can be combined to keep matters more secure. Even more security can be attained by using more than two modalities and base the final decision on all those potential classifiers. Our current system relies on feature extraction from images for cases (for particular patients). The first step is image preprocessing and segmentation to get rid of useless image pixels and represent the input in a more compact domain, which is hopefully more representative for good classification performance. Next, a particular type of feature extraction, which uses Zernike moments computed on either B/W or gray-scale image segments, is performed. The aim here is to obtain values for indicative markers that signal the presence of spina bifida. Markers differ depending on the image modality being used. Either shape or texture information captured by moments may propose useful features. Finally, SVM is used to train classifiers to be used as decision makers. Our experimental results show that a promising CAD system can be actualized for the specific purpose. On the other hand, the performance of such a system would highly depend on the qualities of image preprocessing, segmentation, feature extraction and comprehensiveness of image data.
机译:在这项工作中,我们解决了一个非常特殊的CAD(计算机辅助检测/诊断)问题,并试图在产前发现一种相对常见的出生缺陷-脊柱裂。为此,将胎儿超声图像用作输入成像模态,这是迄今为止最方便的方法。我们的方法是使用两种特殊类型的胎儿神经管视图来决定。处理小脑头部(即大脑)和横向(轴向)脊柱图像以提取特征,然后将其用于对健康(正常),可疑(可能有缺陷)和不确定情况进行分类。由两个独立分类器提出的决策可以单独处理,或者如果需要并且可以使用与两种模式相关的数据,可以将这些决策组合起来以使事务更安全。通过使用两种以上的方式并将最终决策基于所有这些潜在的分类器,可以实现更高的安全性。我们当前的系统依赖于案例(针对特定患者)的图像特征提取。第一步是图像预处理和分割,以去除无用的图像像素,并在更紧凑的域中表示输入,希望该域对于良好的分类性能更具代表性。接下来,执行一种特定类型的特征提取,该特征提取使用在黑白或灰度图像段上计算出的Zernike矩。此处的目的是获得指示脊柱裂存在的指示性标志物的值。标记会根据所使用的图像模式而有所不同。瞬间捕获的形状或纹理信息都可以提出有用的功能。最后,SVM用于训练分类器以用作决策者。我们的实验结果表明,可以针对特定目的实现有前途的CAD系统。另一方面,这种系统的性能在很大程度上取决于图像预处理,分割,特征提取和图像数据的全面性的质量。

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