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Semi-automatic computer aided lesion detection in dental X-rays using variational level set

机译:使用变化水平集的牙科X射线半自动计算机辅助病变检测

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A semi-automatic lesion detection framework is proposed to detect areas of lesions from periapical dental X-rays using level set method. In this framework, first, a new proposed competitive coupled level set method is used to segment the image into three pathologically meaningful regions using two coupled level set functions. Tailored for the dental clinical setting, a two-stage clinical segmentation acceleration scheme is used. The method uses a trained support vector machine (SVM) classifier to provide an initial contour for two coupled level sets. Then, based on the segmentation results, an analysis scheme is applied. Firstly, the scheme builds an uncertainty map from which those areas with radiolucent will be automatically emphasized by a proposed color emphasis scheme. Those radiolucent in the teeth or jaw usually suggested possible lesions. Secondly, the scheme employs a method based on the average intensity profile to isolate the teeth and locate two types of lesions: periapical lesion (PL) and bifurcation lesion (BL). Experimental results show that our proposed segmentation method is able to segment the image into pathological meaningful regions for further analysis; our proposed framework is able to automatically provide direct Visual cues for the lesion detection; and when given the orientation of the teeth, it is able to automatically locate the PL and BL with a seriousness level marked for further dental diagnosis. When used in the clinical setting, the framework enables dentist to improve interpretation and to focus their attention on critical areas. (c) 2007 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:提出了一种半自动病变检测框架,可以使用水平集方法从根尖牙X线片检测病变区域。在此框架中,首先,使用两个耦合的水平集函数,使用一种新提出的竞争耦合水平集方法将图像分割为三个具有病理学意义的区域。针对牙科临床环境量身定制,使用了两阶段临床分割加速方案。该方法使用训练的支持向量机(SVM)分类器为两个耦合的水平集提供初始轮廓。然后,基于分割结果,应用分析方案。首先,该方案建立了一个不确定性图,拟议的色彩强调方案将从中自动将那些具有射线可透性的区域强调出来。牙齿或颌骨的射线可透性通常提示可能存在病变。其次,该方案采用一种基于平均强度分布的方法来隔离牙齿并定位两种类型的病变:根尖周病变(PL)和分叉病变(BL)。实验结果表明,本文提出的分割方法能够将图像分割为有意义的病理区域,以进行进一步的分析。我们提出的框架能够自动为病变检测提供直接的视觉提示;当给定牙齿的方向时,它能够自动定位具有标记的严重性级别的PL和BL,以进行进一步的牙齿诊断。当在临床环境中使用时,该框架使牙医能够改善解释并将他们的注意力集中在关键领域。 (c)2007模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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