Real-time marker tracking for MV treatment beam imaging

Wei-Yang Lin, Shu-Fang Lin, Sheng-Chang Yang, Shu-Cheng Liou, Wu Liu
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Abstract

A new approach to obtain real-time positions of fiducial markers in MV treatment beam images is proposed. The MV images are firstly preprocessed to enhance contrast in the treatment field. To deal with large variations in projected marker shape, we propose a learning-based approach to detect marker locations in the enhanced MV images. We also show that marker tracking can be accomplished much more efficiently and reliably by exploiting temporal correlation between consecutive MV images. Thus, the proposed framework can accurately localize multiple markers in low-contrast MV images while satisfying the real-time constraints imposed by the IGRT. Our method has been validated using manual marker annotations as ground-truth. The marker detection rate on patient images was at least 96% for the cases collected from multiple treatment fractions.
用于中压治疗光束成像的实时标记跟踪
提出了一种获取中压治疗光束图像中基准标记点实时位置的新方法。首先对MV图像进行预处理,增强治疗场的对比度。为了处理投影标记形状的巨大变化,我们提出了一种基于学习的方法来检测增强MV图像中的标记位置。我们还表明,利用连续MV图像之间的时间相关性,可以更有效、更可靠地完成标记跟踪。因此,该框架能够在满足IGRT实时约束的情况下,准确定位低对比度MV图像中的多个标记。我们的方法已经使用手动标记注释作为基础事实进行了验证。对于从多个治疗组收集的病例,患者图像上的标记物检出率至少为96%。
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