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Respiratory motion estimation of the liver with abdominal motion as a surrogate

机译:腹部运动作为替代的肝脏呼吸运动估算

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Abstract Background: Respiratory‐induced motion (RIM) causes uncertainties in localizing hepatic lesions, which could lead to inaccurate targeting during interventions. One approach to mitigate the problem is respiratory motion estimation (RME), in which the liver motion is estimated by measuring external signals called surrogates. Methods: A learning‐based approach has been developed and validated to estimate the RIM of hepatic lesions. External markers placed on the human's abdomen were chosen as surrogates. Accordingly, appropriate motion models (multivariate, Ridge and Lasso regression models) were designed to correlate the liver motion with the abdominal motion, and trained to estimate the superior–inferior (SI) motion of the liver. Three subjects volunteered for 6 sessions of such that liver images acquired by magnetic resonance imaging (MRI) were recorded alongside camera‐tracked external markers. Results and conclusions: The proposed machine learning approach was validated in MRI on human subjects and the results show that the approach could estimate the respiratory‐induced SI motion of the liver with a mean absolute error (MAE) accuracy below 2?mm.
机译:摘要背景:呼吸诱导的运动(RIM)导致定位肝脏病变的不确定性,这可能导致干预措施期间的靶向不准确。减轻问题的一种方法是呼吸运动估计(RME),其中通过测量称为代理的外部信号来估计肝运动。方法:已经开发并验证了基于学习的方法,以估计肝病变的边缘。选择在人腹部的外部标记被选为替代品。因此,设计适当的运动模型(多变量,脊和套索回归模型)以将肝脏运动与腹部运动相关联,并训练以估计肝脏的优越(Si)运动。三个受试者志愿的6个会话,使得通过磁共振成像(MRI)获得的肝脏图像与相机跟踪的外部标记一起记录。结果与结论:在人体MRI验证了所提出的机器学习方法,结果表明,该方法可以估计肝脏呼吸诱导的Si运动,其平均绝对误差(MAE)精度低于2?mm。

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