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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Three techniques for automatic extraction of corpus callosum in structural midsagittal brain MR images: Valley Matching, Evolutionary Corpus Callosum Detection and Hybrid method
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Three techniques for automatic extraction of corpus callosum in structural midsagittal brain MR images: Valley Matching, Evolutionary Corpus Callosum Detection and Hybrid method

机译:自动提取结构中矢状脑MR图像中call体的三种技术:谷匹配,进化Corp体检测和混合方法

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摘要

Corpus callosum (CC) is an important structure for medical image registration. We propose three novel fully automated for the extraction of CC. Our first algorithm, Valley matching (VM), is based on fixed searched range in histogram processing and uses prior anatomical information for locating CC. The second one, Evolutionary CC Detection (ECD), based on genetic algorithm presents a new fitness function that uses anatomical ratios, instead of fixed prior knowledge without the need for preprocessing. The final one, called Evolutionary Valley Matching (EVM), takes advantages of the strong points of the first and second algorithms. The search space defined for ECD is reduced by VM which uses crowding method to find the peaks in the multi-modal histogram. Another important contribution of this study is that there is no existing method using genetic algorithm for extracting CC. Our proposed algorithms perform with the success rates up to 95.5%.
机译:us体(CC)是医学图像配准的重要结构。我们提出了三种新颖的全自动CC提取方法。我们的第一种算法,谷值匹配(VM),是基于直方图处理中的固定搜索范围,并使用先前的解剖信息来定位CC。第二种方法是基于遗传算法的进化CC检测(ECD),它提出了一种新的适应度函数,该函数使用解剖学比率,而不需要固定的先验知识而无需进行预处理。最后一个称为进化谷匹配(EVM),它利用了第一算法和第二算法的优点。 VM减少了为ECD定义的搜索空间,VM使用拥挤方法在多峰直方图中找到峰值。这项研究的另一个重要贡献是,没有使用遗传算法提取CC的现有方法。我们提出的算法的成功率高达95.5%。

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