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Evaluating the Feasibility of an Agglomerative Hierarchy Clustering Algorithm for the Automatic Detection of the Arterial Input Function Using DSC-MRI

机译:评估使用DSC-MRI自动检测动脉输入功能的聚集层次聚类算法的可行性

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摘要

During dynamic susceptibility contrast-magnetic resonance imaging (DSC-MRI), it has been demonstrated that the arterial input function (AIF) can be obtained using fuzzy c-means (FCM) and k-means clustering methods. However, due to the dependence on the initial centers of clusters, both clustering methods have poor reproducibility between the calculation and recalculation steps. To address this problem, the present study developed an alternative clustering technique based on the agglomerative hierarchy (AH) method for AIF determination. The performance of AH method was evaluated using simulated data and clinical data based on comparisons with the two previously demonstrated clustering-based methods in terms of the detection accuracy, calculation reproducibility, and computational complexity. The statistical analysis demonstrated that, at the cost of a significantly longer execution time, AH method obtained AIFs more in line with the expected AIF, and it was perfectly reproducible at different time points. In our opinion, the disadvantage of AH method in terms of the execution time can be alleviated by introducing a professional high-performance workstation. The findings of this study support the feasibility of using AH clustering method for detecting the AIF automatically.
机译:在动态磁化率对比磁共振成像(DSC-MRI)过程中,已证明可以使用模糊c均值(FCM)和k均值聚类方法获得动脉输入功能(AIF)。但是,由于依赖于聚类的初始中心,因此两种聚类方法在计算步骤和重新计算步骤之间的可重复性均较差。为了解决这个问题,本研究开发了一种基于聚类层次(AH)方法的AIF确定替代聚类技术。 AH方法的性能是根据模拟数据和临床数据与先前证明的两种基于聚类的方法进行比较后评估的,这些方法在检测准确性,计算可重复性和计算复杂性方面均得到了评价。统计分析表明,以显着更长的执行时间为代价,AH方法获得的AIF与预期的AIF更加一致,并且在不同时间点均可完美再现。我们认为,通过引入专业的高性能工作站可以缓解AH方法在执行时间方面的缺点。这项研究的结果支持使用AH聚类方法自动检测AIF的可行性。

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  • 期刊名称 other
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  • 年(卷),期 -1(9),6
  • 年度 -1
  • 页码 e100308
  • 总页数 9
  • 原文格式 PDF
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