Kohlmann Peter, Strehlow Jan, Jobst Betram, Krass Stefan, Kuhnigk Jan-Martin, Anjorin Angela, Sedlaczek Oliver, Ley Sebastian, Kauczor Hans-Ulrich, Wielpütz Mark Oliver
Fraunhofer MEVIS, Bremen, Germany,
Int J Comput Assist Radiol Surg. 2015 Apr;10(4):403-17. doi: 10.1007/s11548-014-1090-0. Epub 2014 Jul 3.
A novel fully automatic lung segmentation method for magnetic resonance (MR) images of patients with chronic obstructive pulmonary disease (COPD) is presented. The main goal of this work was to ease the tedious and time-consuming task of manual lung segmentation, which is required for region-based volumetric analysis of four-dimensional MR perfusion studies which goes beyond the analysis of small regions of interest.
The first step in the automatic algorithm is the segmentation of the lungs in morphological MR images with higher spatial resolution than corresponding perfusion MR images. Subsequently, the segmentation mask of the lungs is transferred to the perfusion images via nonlinear registration. Finally, the masks for left and right lungs are subdivided into a user-defined number of partitions. Fourteen patients with two time points resulting in 28 perfusion data sets were available for the preliminary evaluation of the developed methods.
Resulting lung segmentation masks are compared with reference segmentations from experienced chest radiologists, as well as with total lung capacity (TLC) acquired by full-body plethysmography. TLC results were available for thirteen patients. The relevance of the presented method is indicated by an evaluation, which shows high correlation between automatically generated lung masks with corresponding ground-truth estimates.
The evaluation of the developed methods indicates good accuracy and shows that automatically generated lung masks differ from expert segmentations about as much as segmentations from different experts.
提出一种用于慢性阻塞性肺疾病(COPD)患者磁共振(MR)图像的新型全自动肺分割方法。这项工作的主要目标是减轻手动肺分割这一繁琐且耗时的任务,这是基于区域的四维MR灌注研究体积分析所必需的,该分析超出了对小感兴趣区域的分析。
自动算法的第一步是在空间分辨率高于相应灌注MR图像的形态学MR图像中分割肺。随后,通过非线性配准将肺的分割掩码转移到灌注图像。最后,将左右肺的掩码细分为用户定义数量的分区。十四名患者有两个时间点,产生了28个灌注数据集,可用于对所开发方法的初步评估。
将得到的肺分割掩码与经验丰富的胸部放射科医生的参考分割以及通过全身体积描记法获得的肺总量(TLC)进行比较。十三名患者有TLC结果。评估表明了所提出方法的相关性,该评估显示自动生成的肺掩码与相应的真实估计之间具有高度相关性。
对所开发方法的评估表明准确性良好,并且表明自动生成的肺掩码与专家分割的差异程度与不同专家之间的分割差异程度相当。