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Online Target Volume Estimation and Prediction from an Interlaced Slice Acquisition - A Manifold Embedding and Learning Approach

机译:在线目标音量估计和来自交错切片采集的预测 - 一种歧管嵌入和学习方法

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In radiotherapy it is critical to have access to real-time volumetric information to support online dose calculation and motion management. MRI-guidance offers an online imaging platform but is restricted by image acquisition speed. This work alleviates this limitation by integrating processing techniques with an interlaced 2D real-time acquisition protocol. We characterize the volumetric anatomical states as samples on a manifold, and consider the alternating 2D slice acquisition as observation models. We infer sample locations in the manifold from partial observations and extrapolate on the manifold to generate realtime target predictions. A series of 10 adjacent images were repeatedly acquired at three frames per second in an interleaved fashion using a 0.35 T MRI-guided radiotherapy system. Eight volunteer studies were performed during free breathing utilizing normal anatomical features as targets. Locally linear embedding (LLE) was combined with manifold alignment to establish correspondence across slice positions. Multislice target contours were generated using a LLE-based motion model for each real-time image. Motion predictions were performed using a weighted k-nearest neighbor based inference with respect to the underlying volume manifold. In the absence of a 3D ground-truth, we evaluate the part of the volume where the acquisition is available retrospectively. The dice similarity coefficient and centroid distance were on average 0.84 and 1.75 mm respectively. This work reports a novel approach and demonstrates promise to achieve volumetric quantifications from partial image information online.
机译:在放射疗法中,可以访问实时体积信息以支持在线剂量计算和运动管理至关重要。 MRI-Guidance提供了一个在线成像平台,但受到图像采集速度的限制。通过将处理技术与交错的2D实时采集协议集成来减轻这种限制来减轻这种限制。我们将体积解剖状态表征为歧管上的样本,并考虑作为观察模型的交替的2D切片采集。我们从歧管中从歧管中推断出样品位置,并在歧管上推断以产生实时目标预测。使用0.35 T MRI引导的放射治疗系统,在每秒三个帧中重复地获取一系列10个相邻图像。在自由呼吸期间利用正常解剖特征作为目标,进行八项志愿者研究。局部线性嵌入(LLE)与歧管对准相结合,以建立跨切片位置的对应。使用基于LLE的运动模型为每个实时图像产生多层目标轮廓。使用加权k最近邻邻基于基于底层歧管的推断进行运动预测。在没有3D地面真理的情况下,我们评估了追溯获得收购的体积的一部分。骰子相似系数和质心距离平均为0.84和1.75mm。这项工作报告了一种新颖的方法,并证明了在线从部分图像信息实现体积量化。

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