Xin Yi, Song Gang, Cereda Maurizio, Kadlecek Stephen, Hamedani Hooman, Jiang Yunqing, Rajaei Jennia, Clapp Justin, Profka Harrilla, Meeder Natalie, Wu Jue, Tustison Nicholas J, Gee James C, Rizi Rahim R
Department of Radiology, University of Pennsylvania, Philadelphia, Pennsylvania;
Department of Anesthesiology and Critical Care, University of Pennsylvania, Philadelphia, Pennsylvania; and
J Appl Physiol (1985). 2015 Feb 1;118(3):377-85. doi: 10.1152/japplphysiol.00627.2014. Epub 2014 Nov 13.
Quantitative analysis of computed tomography (CT) is essential to the study of acute lung injury. However, quantitative CT is made difficult by poor lung aeration, which complicates the critical step of image segmentation. To overcome this obstacle, this study sought to develop and validate a semiautomated, multilandmark, registration-based scheme for lung segmentation that is effective in conditions of poor aeration. Expiratory and inspiratory CT images were obtained in rats (n = 8) with surfactant depletion of incremental severity to mimic worsening aeration. Trained operators manually delineated the images to provide a comparative landmark. Semiautomatic segmentation originated from a single, previously segmented reference image obtained at healthy baseline. Deformable registration of the target images (after surfactant depletion) was performed using the symmetric diffeomorphic transformation model with B-spline regularization. Registration used multiple landmarks (i.e., rib cage, spine, and lung parenchyma) to minimize the effect of poor aeration. Then target images were automatically segmented by applying the calculated transformation function to the reference image contour. Semiautomatically and manually segmented contours proved to be highly similar in all aeration conditions, including those characterized by more severe surfactant depletion and expiration. The Dice similarity coefficient was over 0.9 in most conditions, confirming high agreement, irrespective of poor aeration. Furthermore, CT density-based measurements of gas volume, tissue mass, and lung aeration distribution were minimally affected by the method of segmentation. Moving forward, multilandmark registration has the potential to streamline quantitative CT analysis by enabling semiautomatic image segmentation of lungs with a broad range of injury severity.
计算机断层扫描(CT)的定量分析对于急性肺损伤的研究至关重要。然而,肺通气不良会使定量CT分析变得困难,这使得图像分割这一关键步骤变得复杂。为了克服这一障碍,本研究旨在开发并验证一种基于多标记配准的半自动肺分割方案,该方案在通气不良的情况下也有效。对8只大鼠进行了实验,通过逐渐增加表面活性剂耗竭程度来模拟通气恶化情况,分别获取了呼气和吸气时的CT图像。训练有素的操作人员手动勾勒图像以提供对比标记。半自动分割源自健康基线时获得的单个预先分割的参考图像。使用具有B样条正则化的对称微分同胚变换模型对目标图像(表面活性剂耗竭后)进行可变形配准。配准使用多个标记(即肋骨、脊柱和肺实质)以最小化通气不良的影响。然后,通过将计算出的变换函数应用于参考图像轮廓来自动分割目标图像。在所有通气条件下,包括那些表面活性剂耗竭更严重和呼气特征的条件下,半自动和手动分割的轮廓都非常相似。在大多数情况下,骰子相似系数超过0.9,证实了高度一致性,无论通气不良情况如何。此外,基于CT密度的气体体积、组织质量和肺通气分布测量受分割方法的影响最小。展望未来,多标记配准有可能通过实现对具有广泛损伤严重程度的肺部进行半自动图像分割来简化定量CT分析。