首页> 外文期刊>International Journal of Radiation Oncology, Biology, Physics >Novel breathing motion model for radiotherapy.
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Novel breathing motion model for radiotherapy.

机译:用于放射治疗的新型呼吸运动模型。

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PURPOSE: An accurate model of breathing motion under quiet respiration is desirable to obtain the most accurate and conformal dose distributions for mobile lung cancer lesions. On the basis of recent lung motion measurements and the physiologic functioning of the lungs, we have determined that the motion of lung and lung tumor tissues can be modeled as a function of five degrees of freedom, the position of the tissues at a user-specified reference breathing phase, tidal volume and its temporal derivative airflow (tidal volume phase space). Time is an implicit variable in this model. METHODS AND MATERIALS: To test this hypothesis, a mathematical model of motion was developed that described the motion of objects p in the lungs as linear functions of tidal volume and airflow. The position of an object was described relative to its position -->P0 at the reference tidal volume and zero airflow, and the motion of the object was referenced to this position. Hysteresis behavior was hypothesized to be caused bypressure imbalances in the lung during breathing and was, in this model, a function of airflow. The motion was modeled as independent tidal volume and airflow displacement vectors, with the position of the object at time t equal to the vector sum -->rP(t) = -->rv(t) + -->rf(t) where -->rv(t) and -->rf(t) were displacement vectors with magnitudes approximated by linear functions of the tidal volume and airflow. To test this model, we analyzed five-dimensional CT scans (CT scans acquired with simultaneous real-time monitoring of the tidal volume) of 4 patients. The scans were acquired throughout the lungs, but the trajectories were analyzed in the couch positions near the diaphragm. A template-matching algorithm was implemented to identify the positions of the points throughout the 15 scans. In total, 76 points throughout the 4 patients were tracked. The lateral motion of these points was minimal; thus, the model was described in two spatial dimensions, with a total of six parameters necessary to describe the 30 degrees of freedom inherent in the 15 positions. RESULTS: For the 76 evaluated points, the average discrepancy (the distance between the measured and prediction positions) of the 15 locations for each tracked point was 0.75 +/- 0.25 mm, with an average maximal discrepancy of 1.55 +/- 0.54 mm. The average discrepancy was also tabulated as a fraction of the breathing motion. Discrepancies of <10% and 15% of the overall motion occurred in 73% and 95% of the tracked points, respectively. CONCLUSION: The motion tracking algorithms are being improved and automated to provide more motion data to test the models. This may allow a measurement of the motion-fitting parameters throughout the lungs. If the parameters vary smoothly, interpolation may be possible, yielding a continuous mathematical model of the breathing motion throughout the lungs. The utility of the model will depend on its stability as a function of time. If the model is only robust during the measurement session, it may be useful for determining lung function. If it is robust for weeks, it may be useful for treatment planning and gating of lung treatments. The use of tidal volume phase space for characterizing breathing motion appears to have provided, for the first time, the potential for a patient-specific mathematical model of breathing motion.
机译:目的:安静呼吸下呼吸运动的精确模型是获得移动性肺癌病变最精确和适形剂量分布的理想方法。根据最近的肺运动测量和肺的生理功能,我们确定可以将肺和肺肿瘤组织的运动建模为五个自由度的函数,即用户指定的组织位置参考呼吸阶段,潮气量及其时间导数气流(潮气相空间)。时间是此模型中的隐式变量。方法和材料:为了检验该假设,建立了运动数学模型,该模型将对象p在肺中的运动描述为潮气量和气流的线性函数。描述了对象的位置相对于参考潮气量和零气流时其位置-> P0的相对位置,并且对象的运动以该位置为参考。滞后行为被认为是由呼吸过程中肺部压力失衡引起的,并且在此模型中是气流的函数。运动被建模为独立的潮气量和气流位移矢量,对象在时间t的位置等于矢量和-> rP(t)=-> rv(t)+-> rf(t)其中-> rv(t)和-> rf(t)是位移矢量,其大小近似于潮气量和气流的线性函数。为了测试该模型,我们分析了4例患者的5维CT扫描(通过同时实时监测潮气量获得的CT扫描)。在整个肺部进行了扫描,但是在靠近横diaphragm膜的卧榻位置分析了运动轨迹。实施了模板匹配算法以在整个15次扫描中识别点的位置。总共追踪了4位患者的76分。这些点的横向运动很小。因此,该模型是在两个空间维度上描述的,总共需要六个参数来描述15个位置固有的30个自由度。结果:对于76个评估点,每个跟踪点的15个位置的平均差异(测量位置和预测位置之间的距离)为0.75 +/- 0.25 mm,平均最大差异为1.55 +/- 0.54 mm。平均差异也被列表为呼吸运动的一部分。分别在73%和95%的跟踪点中出现了小于10%和15%的整体运动的差异。结论:运动跟踪算法正在改进和自动化,以提供更多运动数据来测试模型。这可以允许测量整个肺的运动拟合参数。如果参数平滑变化,则可能会进行插值,从而得出整个肺部呼吸运动的连续数学模型。该模型的实用性将取决于其作为时间的函数的稳定性。如果该模型仅在测量期间是稳健的,则对确定肺功能可能有用。如果它能持续数周,则对于治疗计划和肺部治疗门控可能很有用。潮气体积相空间用于表征呼吸运动似乎首次为患者特定的呼吸运动数学模型提供了潜力。

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