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分割对全肺功能 MRI 定量的影响:来自多位人类观察者和人工神经网络的可重复性和再现性。

The impact of segmentation on whole-lung functional MRI quantification: Repeatability and reproducibility from multiple human observers and an artificial neural network.

机构信息

Division of Pediatric Respiratory Medicine, Department of Pediatrics, Inselspital, Bern University Hospital, University of Bern, Bern, Switzerland.

Division of Radiological Physics, Department of Radiology, University of Basel Hospital, Basel, Switzerland.

出版信息

Magn Reson Med. 2021 Feb;85(2):1079-1092. doi: 10.1002/mrm.28476. Epub 2020 Sep 6.

DOI:10.1002/mrm.28476
PMID:32892445
Abstract

PURPOSE

To investigate the repeatability and reproducibility of lung segmentation and their impact on the quantitative outcomes from functional pulmonary MRI. Additionally, to validate an artificial neural network (ANN) to accelerate whole-lung quantification.

METHOD

Ten healthy children and 25 children with cystic fibrosis underwent matrix pencil decomposition MRI (MP-MRI). Impaired relative fractional ventilation (R ) and relative perfusion (R ) from MP-MRI were compared using whole-lung segmentation performed by a physician at two time-points (A and A ), by an MRI technician (B), and by an ANN (C). Repeatability and reproducibility were assess with Dice similarity coefficient (DSC), paired t-test and Intraclass-correlation coefficient (ICC).

RESULTS

The repeatability within an observer (A vs A ) resulted in a DSC of 0.94 ± 0.01 (mean ± SD) and an unsystematic difference of -0.01% for R (P = .92) and +0.1% for R (P = .21). The reproducibility between human observers (A vs B) resulted in a DSC of 0.88 ± 0.02, and a systematic absolute difference of -0.81% (P < .001) for R and -0.38% (P = .037) for R . The reproducibility between human and the ANN (A vs C) resulted in a DSC of 0.89 ± 0.03 and a systematic absolute difference of -0.36% for R (P = .017) and -0.35% for R (P = .002). The ICC was >0.98 for all variables and comparisons.

CONCLUSIONS

Despite high overall agreement, there were systematic differences in lung segmentation between observers. This needs to be considered for longitudinal studies and could be overcome by using an ANN, which performs as good as human observers and fully automatizes MP-MRI post-processing.

摘要

目的

研究肺部分割的可重复性和再现性及其对功能性肺部 MRI 定量结果的影响。此外,验证人工神经网络(ANN)来加速全肺定量。

方法

10 名健康儿童和 25 名囊性纤维化儿童接受矩阵铅笔分解 MRI(MP-MRI)检查。使用医生在两个时间点(A 和 A )、MRI 技术员(B)和 ANN(C)进行的全肺分割,比较 MP-MRI 中受损的相对分通气(R )和相对灌注(R )。使用 Dice 相似系数(DSC)、配对 t 检验和组内相关系数(ICC)评估重复性和再现性。

结果

观察者内的重复性(A 与 A )导致 R 的 DSC 为 0.94 ± 0.01(平均值 ± 标准差),且无系统性差异为 -0.01%(P =.92),R 的 DSC 为 +0.1%(P =.21)。观察者之间的再现性(A 与 B)导致 R 的 DSC 为 0.88 ± 0.02,R 的 DSC 为 -0.81%(P <.001),R 的 DSC 为 -0.38%(P =.037)。人类与 ANN 之间的再现性(A 与 C)导致 R 的 DSC 为 0.89 ± 0.03,R 的 DSC 为 -0.36%(P =.017),R 的 DSC 为 -0.35%(P =.002)。所有变量和比较的 ICC 均>0.98。

结论

尽管总体上具有高度一致性,但观察者之间的肺部分割存在系统差异。这需要在纵向研究中考虑,并且可以通过使用与人类观察者一样好并且完全自动化 MP-MRI 后处理的 ANN 来克服。

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