Friedberger Andreas, Figueiredo Camille, Bäuerle Tobias, Schett Georg, Engelke Klaus
Institute of Medical Physics, University of Erlangen-Nuremberg, Henkestraße 91, 91052, Erlangen, Germany.
Department of Medicine 3, University of Erlangen-Nuremberg, Erlangen, Germany.
BMC Rheumatol. 2020 Dec 22;4(1):72. doi: 10.1186/s41927-020-00170-3.
Rheumatoid arthritis (RA) is characterized by systemic inflammation and bone and muscle loss. Recent research showed that obesity facilitates inflammation, but it is unknown if obesity also increases the risk or severity of RA. Further research requires an accurate quantification of muscle volume and fat content.
The aim was to develop a reproducible (semi) automated method for hand muscle segmentation and quantification of hand muscle fat content and to reduce the time consuming efforts of manual segmentation. T1 weighted scans were used for muscle segmentation based on a random forest classifier. Optimal segmentation parameters were determined by cross validation with 30 manually segmented hand datasets (gold standard). An operator reviewed the automatically created segmentation and applied corrections if necessary. For fat quantification, the segmentation masks were automatically transferred to MRI Dixon sequences by rigid registration. In total 76 datasets from RA patients were analyzed. Accuracy was validated against the manual gold standard segmentations.
Average analysis time per dataset was 10 min, more than 10 times faster compared to manual outlining. All 76 datasets could be analyzed and were accurate as judged by a clinical expert. 69 datasets needed minor manual segmentation corrections. Segmentation accuracy compared to the gold standard (Dice ratio 0.98 ± 0.04, average surface distance 0.04 ± 0.10 mm) and reanalysis precision were excellent. Intra- and inter-operator precision errors were below 0.3% (muscle) and 0.7% (fat). Average Hausdorff distances were higher (1.09 mm), but high values originated from a shift of the analysis VOI by one voxel in scan direction.
We presented a novel semi-automated method for quantitative assessment of hand muscles with excellent accuracy and operator precision, which highly reduced a traditional manual segmentation effort. This method may greatly facilitate further MRI image based muscle research of the hands.
类风湿性关节炎(RA)的特征是全身性炎症以及骨骼和肌肉流失。最近的研究表明,肥胖会促进炎症,但肥胖是否也会增加RA的风险或严重程度尚不清楚。进一步的研究需要对手部肌肉体积和脂肪含量进行准确量化。
目的是开发一种可重复的(半)自动化方法,用于手部肌肉分割和手部肌肉脂肪含量的量化,并减少手动分割的耗时工作。基于随机森林分类器,使用T1加权扫描进行肌肉分割。通过对30个手动分割的手部数据集(金标准)进行交叉验证来确定最佳分割参数。操作人员检查自动创建的分割结果,并在必要时进行校正。为了进行脂肪定量,通过刚性配准将分割掩码自动转移到MRI Dixon序列。总共分析了76例RA患者的数据集。根据手动金标准分割验证准确性。
每个数据集的平均分析时间为10分钟,比手动勾勒快10倍以上。所有76个数据集均可进行分析,临床专家判断其准确性良好。69个数据集需要进行少量手动分割校正。与金标准相比,分割准确性(骰子系数0.98±0.04,平均表面距离0.04±0.10毫米)和重新分析精度都非常出色。操作人员内部和操作人员之间的精度误差低于0.3%(肌肉)和0.7%(脂肪)。平均豪斯多夫距离较高(1.09毫米),但高值源于分析感兴趣区在扫描方向上移动了一个体素。
我们提出了一种新颖的半自动方法,用于对手部肌肉进行定量评估,具有出色的准确性和操作人员精度,极大地减少了传统的手动分割工作量。该方法可能会极大地促进基于MRI图像的手部肌肉进一步研究。