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首页> 外文期刊>Journal of applied clinical medical physics / >Optimum location of external markers using feature selection algorithms for real‐time tumor tracking in external‐beam radiotherapy: a virtual phantom study
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Optimum location of external markers using feature selection algorithms for real‐time tumor tracking in external‐beam radiotherapy: a virtual phantom study

机译:使用特征选择算法在外部束放射治疗中实时跟踪肿瘤的外部标记物的最佳位置:虚拟模型研究

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In external-beam radiotherapy, using external markers is one of the most reliable tools to predict tumor position, in clinical applications. The main challenge in this approach is tumor motion tracking with highest accuracy that depends heavily on external markers location, and this issue is the objective of this study. Four commercially available feature selection algorithms entitled 1) Correlation-based Feature Selection, 2) Classifier, 3) Principal Components, and 4) Relief were proposed to find optimum location of external markers in combination with two “Genetic” and “Ranker” searching procedures. The performance of these algorithms has been evaluated using four-dimensional extended cardiac-torso anthropomorphic phantom. Six tumors in lung, three tumors in liver, and 49 points on the thorax surface were taken into account to simulate internal and external motions, respectively. The root mean square error of an adaptive neuro-fuzzy inference system (ANFIS) as prediction model was considered as metric for quantitatively evaluating the performance of proposed feature selection algorithms. To do this, the thorax surface region was divided into nine smaller segments and predefined tumors motion was predicted by ANFIS using external motion data of given markers at each small segment, separately. Our comparative results showed that all feature selection algorithms can reasonably select specific external markers from those segments where the root mean square error of the ANFIS model is minimum. Moreover, the performance accuracy of proposed feature selection algorithms was compared, separately. For this, each tumor motion was predicted using motion data of those external markers selected by each feature selection algorithm. Duncan statistical test, followed by F -test, on final results reflected that all proposed feature selection algorithms have the same performance accuracy for lung tumors. But for liver tumors, a correlation-based feature selection algorithm, in combination with a genetic search algorithm, proved to yield best performance accuracy for selecting optimum markers.PACS numbers: 87.55.km, 87.56.Fc
机译:在外部束放射治疗中,在临床应用中,使用外部标记是预测肿瘤位置的最可靠工具之一。这种方法的主要挑战是最高精度的肿瘤运动跟踪,这在很大程度上取决于外部标记的位置,这个问题是本研究的目的。提出了四种商业上可用的特征选择算法,分别是:1)基于相关的特征选择,2)分类器,3)主成分和4)救济,以结合两个“遗传”和“随机”搜索程序来找到外部标记的最佳位置。这些算法的性能已使用四维扩展的心脏躯干拟人模型进行了评估。分别模拟了六个肺部肿瘤,三个肝部肿瘤和胸部表面49个点,以模拟内部和外部运动。自适应神经模糊推理系统(ANFIS)作为预测模型的均方根误差被认为是定量评估所提出特征选择算法性能的指标。为此,将胸部表面区域划分为9个较小的部分,并通过ANFIS使用每个小部分的给定标记的外部运动数据分别预测预定义的肿瘤运动。我们的比较结果表明,所有特征选择算法都可以从ANFIS模型的均方根误差最小的那些段中合理选择特定的外部标记。此外,分别比较了所提出的特征选择算法的性能准确性。为此,使用由每种特征选择算法选择的那些外部标记的运动数据来预测每种肿瘤的运动。在最终结果上进行Duncan统计检验,然后进行F检验,反映出所有提出的特征选择算法对肺肿瘤的性能准确性均相同。但对于肝肿瘤,事实证明基于相关性的特征选择算法与遗传搜索算法相结合可产生最佳性能,以选择最佳标记物.PACS编号:87.55.km,87.56.Fc

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