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Likelihood-Fuzzy Analysis of Parotid Gland Shrinkage in Radiotherapy Patients

机译:放射治疗患者腮腺收缩的可能性 - 模糊分析

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In head-and-neck radiotherapy, an early detection of patients who will undergo parotid glands shrinkage during the treatment is of primary importance, since this condition has been found to be associated with acute toxicity. In this work, a recently proposed approach, here named Likelihood-Fuzzy Analysis, based on both statistical learning and Fuzzy Logic, is proposed to support the identification of early predictors of parotid shrinkage from Computed Tomography images acquired during radiotherapy. For this purpose, a set of textural image parameters was extracted and considered as candidate of parotid shrinkage prediction; for all these parameters and combinations of maximum three of them, a fuzzy rule base was extracted, gaining very good results in terms of accuracy, sensitivity and specificity. The performance of classification was also compared to a classical Fisher's Linear Discriminant Analysis and found to provide better results. Moreover, the use of Fuzzy Logic allowed obtaining an interpretable description of the relations between textural features and the shrinkage process.
机译:在头部和颈部放射疗法中,早期检测治疗期间将接受腮腺收缩的患者的主要重要性,因为发现这种情况与急性毒性有关。在这项工作中,基于统计学习和模糊逻辑的基于统计学习和模糊逻辑的最近提出的方法是最近提出的方法,以支持在放射治疗期间获得的计算机断层摄影图像的腮腺收缩早期预测因子。为此目的,提取了一组纹理图像参数并被认为是腮腺收缩预测的候选物;对于所有这些参数和最大三个的组合,提取了模糊的规则基础,在准确性,敏感度和特异性方面获得了非常好的结果。分类的性能也与古典渔民的线性判别分析相比,发现提供了更好的结果。此外,使用模糊逻辑允许获得纹理特征与收缩过程之间关系的可解释描述。

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