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使用支持向量回归开发 CyberKnife Synchrony 呼吸追踪系统的追踪误差预测系统。

Development of a tracking error prediction system for the CyberKnife Synchrony Respiratory Tracking System with use of support vector regression.

机构信息

Department Radiotherapy Quality Management, Yokohama CyberKnife Center, Ichizawa-cho 574-1, Asahi-ku, Yokohama, 241-0014, Japan.

Graduate School of Comprehensive Human Science, University of Tsukuba, Ibaraki, 305-8577, Japan.

出版信息

Med Biol Eng Comput. 2021 Nov;59(11-12):2409-2418. doi: 10.1007/s11517-021-02445-4. Epub 2021 Oct 15.

Abstract

PURPOSE

The accuracy of the CyberKnife Synchrony Respiratory Tracking System is dependent on the breathing pattern of a patient. Therefore, the tracking error in each patient must be determined. Support vector regression (SVR) can be used to easily identify the tracking error in each patient. This study aimed to develop a system with SVR that can predict tracking error according to a patient's respiratory waveform.

METHODS

Datasets of the respiratory waveforms of 93 patients were obtained. The feature variables were variation in respiration amplitude, tumor velocity, and phase shift between tumor and the chest wall, and the target variable was tracking error. A learning model was evaluated with tenfold cross-validation. We documented the difference between the predicted and actual tracking errors and assessed the correlation coefficient and coefficient of determination.

RESULTS

The average difference and maximum difference between the actual and predicted tracking errors were 0.57 ± 0.63 mm and 2.1 mm, respectively. The correlation coefficient and coefficient of determination were 0.86 and 0.74, respectively.

CONCLUSION

We developed a system for obtaining tracking error by using SVR. The accuracy of such a system is clinically useful. Moreover, the system can easily evaluate tracking error. We developed a system that can be used to predict the tracking error of SRTS in the CyberKnife Robotic Radiosurgery System using machine learning. The feature variables were the breathing parameters, and the target variable was the tracking error. We used support vector regression algorithm.

摘要

目的

CyberKnife Synchrony 呼吸跟踪系统的准确性取决于患者的呼吸模式。因此,必须确定每个患者的跟踪误差。支持向量回归(SVR)可用于轻松识别每个患者的跟踪误差。本研究旨在开发一种具有 SVR 的系统,该系统可根据患者的呼吸波形预测跟踪误差。

方法

获得了 93 名患者呼吸波形的数据集。特征变量为呼吸幅度变化、肿瘤速度和肿瘤与胸壁之间的相位差,目标变量为跟踪误差。使用十折交叉验证评估学习模型。我们记录了实际和预测跟踪误差之间的差异,并评估了相关系数和确定系数。

结果

实际和预测跟踪误差之间的平均差异和最大差异分别为 0.57 ± 0.63 毫米和 2.1 毫米。相关系数和确定系数分别为 0.86 和 0.74。

结论

我们开发了一种使用 SVR 获取跟踪误差的系统。该系统的准确性在临床上很有用。此外,该系统可以轻松评估跟踪误差。我们开发了一种系统,可使用机器学习预测 CyberKnife 机器人放射外科系统中 SRTS 的跟踪误差。特征变量是呼吸参数,目标变量是跟踪误差。我们使用支持向量回归算法。

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