Fernquest Scott, Park Daniel, Marcan Marija, Palmer Antony, Voiculescu Irina, Glyn-Jones Sion
Nuffield Department of Orthopaedics, Rheumatology, and Musculoskeletal Sciences, Botnar Research Centre, University of Oxford, Oxford, OX3 7LD, United Kingdom.
Department of Computer Science, University of Oxford, Oxford, OX1 3QD, United Kingdom.
J Orthop Res. 2018 Feb 22. doi: 10.1002/jor.23881.
Manual segmentation is a significant obstacle in the analysis of compositional MRI for clinical decision-making and research. Our aim was to produce a fast, accurate, reproducible, and clinically viable semi-automated method for segmentation of hip MRI. We produced a semi-automated segmentation method for cartilage segmentation of hip MRI sequences consisting of a two step process: (i) fully automated hierarchical partitioning of the data volume generated using a bespoke segmentation approach applied recursively, followed by (ii) user selection of the regions of interest using a region editor. This was applied to dGEMRIC scans at 3T taken from a prospective longitudinal study of individuals considered at high-risk of developing osteoarthritis (SibKids) which were also manually segmented for comparison. Fourteen hips were segmented both manually and using our semi-automated method. Per hip, processing time for semi-automated and manual segmentation was 10-15, and 60-120 min, respectively. Accuracy and Dice similarity coefficient (DSC) for the comparison of semi-automated and manual segmentations was 0.9886 and 0.8803, respectively. Intra-observer and inter-observer reproducibility of the semi-automated segmentation method gave an accuracy of 0.9997 and 0.9991, and DSC of 0.9726 and 0.9354, respectively. We have proposed a fast, accurate, reproducible, and clinically viable semi-automated method for segmentation of hip MRI sequences. This enables accurate anatomical and biochemical measurements to be obtained quickly and reproducibly. This is the first such method that shows clinical applicability, and could have large ramifications for the use of compositional MRI in research and clinically. © 2018 Orthopaedic Research Society. Published by Wiley Periodicals, Inc. J Orthop Res.
在用于临床决策和研究的成分MRI分析中,手动分割是一个重大障碍。我们的目标是开发一种快速、准确、可重复且临床可行的半自动方法来分割髋关节MRI。我们开发了一种用于髋关节MRI序列软骨分割的半自动分割方法,该方法包括两个步骤:(i)使用定制的分割方法对生成的数据体进行全自动分层划分,该方法递归应用,然后(ii)使用区域编辑器由用户选择感兴趣区域。该方法应用于来自一项针对被认为患骨关节炎高风险个体的前瞻性纵向研究(SibKids)的3T dGEMRIC扫描,这些扫描也进行了手动分割以作比较。对14个髋关节进行了手动分割和使用我们的半自动方法的分割。每个髋关节的半自动分割和手动分割处理时间分别为10 - 15分钟和60 - 120分钟。半自动分割与手动分割比较的准确性和骰子相似系数(DSC)分别为0.9886和0.8803。半自动分割方法的观察者内和观察者间可重复性的准确性分别为0.9997和0.9991,DSC分别为0.9726和0.9354。我们提出了一种快速、准确、可重复且临床可行的半自动方法来分割髋关节MRI序列。这使得能够快速且可重复地获得准确的解剖学和生化测量结果。这是第一种显示出临床适用性的此类方法,并且可能对成分MRI在研究和临床中的应用产生重大影响。©2018骨科研究协会。由威利期刊公司出版。《矫形外科研究杂志》