IEEE Trans Med Imaging. 2015 Feb;34(2):599-607. doi: 10.1109/TMI.2014.2363611. Epub 2014 Oct 16.
This paper presents an approach to predict the deformation of the lungs and surrounding organs during respiration. The framework incorporates a computational model of the respiratory system, which comprises an anatomical model extracted from computed tomography (CT) images at end-expiration (EE), and a biomechanical model of the respiratory physiology, including the material behavior and interactions between organs. A personalization step is performed to automatically estimate patient-specific thoracic pressure, which drives the biomechanical model. The zone-wise pressure values are obtained by using a trust-region optimizer, where the estimated motion is compared to CT images at end-inspiration (EI). A detailed convergence analysis in terms of mesh resolution, time stepping and number of pressure zones on the surface of the thoracic cavity is carried out. The method is then tested on five public datasets. Results show that the model is able to predict the respiratory motion with an average landmark error of 3.40 ±1.0 mm over the entire respiratory cycle. The estimated 3-D lung motion may constitute as an advanced 3-D surrogate for more accurate medical image reconstruction and patient respiratory analysis.
本文提出了一种预测肺部和周围器官在呼吸过程中变形的方法。该框架包含一个呼吸系统的计算模型,该模型由在呼气末期(EE)从 CT 图像提取的解剖模型和呼吸生理学的生物力学模型组成,包括器官之间的材料行为和相互作用。执行个性化步骤以自动估计患者特定的胸内压力,该压力驱动生物力学模型。通过使用信赖域优化器获得分区压力值,其中将估计的运动与呼气末期(EI)的 CT 图像进行比较。对胸腔表面的网格分辨率、时间步长和压力区数量进行了详细的收敛分析。然后在五个公共数据集上进行了测试。结果表明,该模型能够预测整个呼吸周期的呼吸运动,平均标志点误差为 3.40±1.0mm。估计的 3D 肺部运动可以作为更准确的医学图像重建和患者呼吸分析的高级 3D 替代物。