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Intra- and Inter-Fractional Variation Prediction of Lung Tumors Using Fuzzy Deep Learning

机译:基于模糊深度学习的肺肿瘤内和碎片间变异预测

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摘要

Tumor movements should be accurately predicted to improve delivery accuracy and reduce unnecessary radiation exposure to healthy tissue during radiotherapy. The tumor movements pertaining to respiration are divided into intra-fractional variation occurring in a single treatment session and inter-fractional variation arising between different sessions. Most studies of patients’ respiration movements deal with intra-fractional variation. Previous studies on inter-fractional variation are hardly mathematized and cannot predict movements well due to inconstant variation. Moreover, the computation time of the prediction should be reduced. To overcome these limitations, we propose a new predictor for intra- and inter-fractional data variation, called intra- and inter-fraction fuzzy deep learning (IIFDL), where FDL, equipped with breathing clustering, predicts the movement accurately and decreases the computation time. Through the experimental results, we validated that the IIFDL improved root-mean-square error (RMSE) by 29.98% and prediction overshoot by 70.93%, compared with existing methods. The results also showed that the IIFDL enhanced the average RMSE and overshoot by 59.73% and 83.27%, respectively. In addition, the average computation time of IIFDL was 1.54 ms for both intra- and inter-fractional variation, which was much smaller than the existing methods. Therefore, the proposed IIFDL might achieve real-time estimation as well as better tracking techniques in radiotherapy.
机译:应准确预测肿瘤的运动,以提高分娩的准确性,并减少放射治疗期间对健康组织的不必要的辐射暴露。与呼吸有关的肿瘤运动被分为在一次治疗中发生的分数内变化和在不同的治疗之间发生的分数间变化。大多数有关患者呼吸运动的研究都涉及分数内变异。先前关于分数间变化的研究很难数学化,并且由于变化不定而无法很好地预测运动。此外,应该减少预测的计算时间。为了克服这些限制,我们提出了一种用于分数内和分数间数据变化的新预测器,称为分数内和分数间模糊深度学习(IIFDL),其中配备了呼吸聚类的FDL可以准确地预测运动并减少计算量时间。通过实验结果,我们验证了与现有方法相比,IIFDL的均方根误差(RMSE)提高了29.98%,预测超调提高了70.93%。结果还表明,IIFDL将平均RMSE和超调分别提高了59.73%和83.27%。此外,对于分数内和分数间变化,IIFDL的平均计算时间为1.54毫秒,这比现有方法小得多。因此,提出的IIFDL可能会实现实时估计以及放射治疗中更好的跟踪技术。

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