Fuerst B, Mansi T, Zhang Jianwen, Khurd P, Declerck J, Boettger T, Navab Nassir, Bayouth J, Comaniciu Dorin, Kamen A
Siemens Corporation, Corporate Research and Technology, Princeton, NJ, USA.
Med Image Comput Comput Assist Interv. 2012;15(Pt 3):566-73. doi: 10.1007/978-3-642-33454-2_70.
Time-resolved imaging of the thorax or abdominal area is affected by respiratory motion. Nowadays, one-dimensional respiratory surrogates are used to estimate the current state of the lung during its cycle, but with rather poor results. This paper presents a framework to predict the 3D lung motion based on a patient-specific finite element model of respiratory mechanics estimated from two CT images at end of inspiration (EI) and end of expiration (EE). We first segment the lung, thorax and sub-diaphragm organs automatically using a machine-learning algorithm. Then, a biomechanical model of the lung, thorax and sub-diaphragm is employed to compute the 3D respiratory motion. Our model is driven by thoracic pressures, estimated automatically from the EE and EI images using a trust-region approach. Finally, lung motion is predicted by modulating the thoracic pressures. The effectiveness of our approach is evaluated by predicting lung deformation during exhale on five DIR-Lab datasets. Several personalization strategies are tested, showing that an average error of 3.88 +/- 1.54 mm in predicted landmark positions can be achieved. Since our approach is generative, it may constitute a 3D surrogate information for more accurate medical image reconstruction and patient respiratory analysis.
胸部或腹部区域的时间分辨成像会受到呼吸运动的影响。如今,一维呼吸替代信号被用于估计肺部在其周期中的当前状态,但效果相当不佳。本文提出了一个框架,用于基于从吸气末(EI)和呼气末(EE)的两张CT图像估计的患者特异性呼吸力学有限元模型来预测三维肺部运动。我们首先使用机器学习算法自动分割肺部、胸部和膈下器官。然后,采用肺部、胸部和膈下的生物力学模型来计算三维呼吸运动。我们的模型由胸部压力驱动,使用信赖域方法从EE和EI图像中自动估计胸部压力。最后,通过调节胸部压力来预测肺部运动。我们通过在五个DIR-Lab数据集上预测呼气期间的肺部变形来评估我们方法的有效性。测试了几种个性化策略,结果表明在预测地标位置时平均误差可达3.88±1.54毫米。由于我们的方法具有生成性,它可能构成用于更精确医学图像重建和患者呼吸分析的三维替代信息。