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Intelligent Medical Image Segmentation Using Evolving Fuzzy Sets

机译:使用进化模糊集的智能医学图像分割

摘要

Image segmentation is an important step in the image analysis process. Current image segmentation techniques, however, require that the user tune several parameters in order to obtain maximum segmentation accuracy, a computationally inefficient approach, especially when a large number of images must be processed sequentially in real time. Another major challenge, particularly with medical image analysis, is the discrepancy between objective measures for assessing and guiding the segmentation process, on the one hand, and the subjective perception of the end users (e.g., clinicians), on the other. Hence, the setting and adjustment of parameters for medical image segmentation should be performed in a manner that incorporates user feedback.Despite the substantial number of techniques proposed in recent years, accurate segmentation of digital images remains a challenging task for automated computer algorithms. Approaches based on machine learning hold particular promise in this regard because, in many applications, including medical image analysis, frequent user intervention can be assumed as a means of correcting the results, thereby generating valuable feedback for algorithmic learning. This thesis presents an investigation of the use of evolving fuzzy systems for designing a method that overcomes the problems associated with medical image segmentation. An evolving fuzzy system can be trained using a set of invariant features, along with their optimum parameters, which act as a target for the system. Evolving fuzzy systems are also capable of adjusting parameters based on online updates of their rule base. This thesis proposes three different approaches that employ an evolving fuzzy system for the continual adjustment of the parameters of any medical image segmentation technique.The first proposed approach is based on evolving fuzzy image segmentation (EFIS). EFIS can adjust the parameters of existing segmentation methods and switch between them or fuse their results. The evolving rules have been applied for breast ultrasound images, with EFIS being used to adjust the parameters of three segmentation methods: global thresholding, region growing, and statistical region merging. The results for ten independent experiments for each of the three methods show average increases in accuracy of 5%, 12% and 9% respectively. A comparison of the EFIS results with those obtained using five other thresholding methods revealed improvements. On the other hand, EFIS has some weak points, such as some fixed parameters and an inefficient feature calculation process.The second approach proposed as a means of overcoming the problems with EFIS is a new version of EFIS, called self-configuring EFIS (SC-EFIS). SC-EFIS uses the available data to estimate all of the parameters that are fixed in EFIS and has a feature selection process that selects suitable features based on current data. SC-EFIS was evaluated using the same three methods as for EFIS. The results show that SC-EFIS is competitive with EFIS but provides a higher level of automation.In the third approach, SC-EFIS is used to dynamically adjust more than one parameter, for example, three parameters of the normalized cut (N-cut) segmentation technique. This method, called multi-parametric SC-EFIS (MSC-EFIS), was applied to magnetic resonance images (MRIs) of the bladder and to breast ultrasound images. The results show the ability of MSC-EFIS to adjust multiple parameters. For ten independent experiments for each of the bladder and the breast images, this approach produced average accuracies that are 8% and 16% higher respectively, compared with their default values.The experimental results indicate that the proposed algorithms show significant promise in enhancing image segmentation, especially for medical applications.
机译:图像分割是图像分析过程中的重要步骤。然而,当前的图像分割技术要求用户调整几个参数以获得最大的分割精度,这是一种计算效率低下的方法,尤其是当必须实时顺序地处理大量图像时。另一个主要挑战,特别是医学图像分析的另一个挑战是,一方面,用于评估和指导分割过程的客观措施与另一方面,对最终用户(例如,临床医生)的主观感知之间存在差异。因此,用于医学图像分割的参数的设置和调整应该以结合用户反馈的方式进行。尽管近年来提出了大量技术,但是数字图像的精确分割对于自动化计算机算法仍然是一项艰巨的任务。基于机器学习的方法在这方面具有特殊的前景,因为在包括医学图像分析在内的许多应用中,可以将频繁的用户干预视为纠正结果的一种手段,从而为算法学习提供有价值的反馈。本文提出了对演化模糊系统的使用的研究,以设计一种克服与医学图像分割有关的问题的方法。可以使用一组不变特征及其最佳参数来训练演化的模糊系统,这些不变特征用作系统的目标。不断发展的模糊系统还能够基于其规则库的在线更新来调整参数。本文提出了三种不同的方法,这些方法采用了演化模糊系统来连续调整任何医学图像分割技术的参数。第一种方法是基于演化模糊图像分割(EFIS)的。 EFIS可以调整现有分割方法的参数,并在它们之间切换或融合其结果。不断发展的规则已应用于乳腺超声图像,EFIS用于调整三种分割方法的参数:全局阈值化,区域增长和统计区域合并。三种方法中每种方法的十次独立实验的结果表明,平均准确度分别提高了5%,12%和9%。将EFIS结果与使用其他五种阈值方法获得的结果进行比较,发现有所改进。另一方面,EFIS存在一些弱点,例如一些固定参数和低效的特征计算过程。作为克服EFIS问题的一种方法,第二种方法是提出的EFIS的新版本,称为自配置EFIS(SC -EFIS)。 SC-EFIS使用可用数据来估计EFIS中固定的所有参数,并具有一个特征选择过程,该过程根据当前数据选择合适的特征。使用与EFIS相同的三种方法评估SC-EFIS。结果表明,SC-EFIS与EFIS相比具有竞争优势,但自动化程度更高。在第三种方法中,SC-EFIS用于动态调整多个参数,例如归一化切割(N-cut)的三个参数)细分技术。这种方法称为多参数SC-EFIS(MSC-EFIS),已应用于膀胱的磁共振图像(MRI)和乳房超声图像。结果显示了MSC-EFIS调整多个参数的能力。对于每个针对膀胱和乳房图像的十次独立实验,该方法产生的平均准确度分别比其默认值高8 %和16 %。实验结果表明,所提出的算法在增强效果方面显示出显着的希望图像分割,尤其是医疗应用。

著录项

  • 作者

    Othman Ahmed;

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  • 年度 2013
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  • 正文语种 en
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