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用于从MRI图像定量分析椎旁肌肉成分的自动阈值算法评估

Evaluation of an automated thresholding algorithm for the quantification of paraspinal muscle composition from MRI images.

作者信息

Fortin Maryse, Omidyeganeh Mona, Battié Michele Crites, Ahmad Omair, Rivaz Hassan

机构信息

PERFORM Centre, Concordia University, 7200 Sherbrooke W, Montreal, QC, H4B 1R6, Canada.

Department of Electrical Engineering, Engineering, Computer Science and Visual Arts Integrated Complex, Concordia University, 1515 Ste-Catherine W. Street, Montreal, QC, H3G 2W1, Canada.

出版信息

Biomed Eng Online. 2017 May 22;16(1):61. doi: 10.1186/s12938-017-0350-y.

Abstract

BACKGROUND

The imaging assessment of paraspinal muscle morphology and fatty infiltration has gained considerable attention in the past decades, with reports suggesting an association between muscle degenerative changes and low back pain (LBP). To date, qualitative and quantitative approaches have been used to assess paraspinal muscle composition. Though highly reliable, manual thresholding techniques are time consuming and not always feasible in a clinical setting. The tedious and rater-dependent nature of such manual thresholding techniques provides the impetus for the development of automated or semi-automated segmentation methods. The purpose of the present study was to develop and evaluate an automated thresholding algorithm for the assessment of paraspinal muscle composition. The reliability and validity of the muscle measurements using the new automated thresholding algorithm were investigated through repeated measurements and comparison with measurements from an established, highly reliable manual thresholding technique.

METHODS

Magnetic resonance images of 30 patients with LBP were randomly selected cohort of patients participating in a project on commonly diagnosed lumbar pathologies in patients attending spine surgeon clinics. A series of T2-weighted MR images were used to train the algorithm; preprocessing techniques including adaptive histogram equalization method image adjustment scheme were used to enhance the quality and contrast of the images. All muscle measurements were repeated twice using a manual thresholding technique and the novel automated thresholding algorithm, from axial T2-weigthed images, at least 5 days apart. The rater was blinded to all earlier measurements. Inter-method agreement and intra-rater reliability for each measurement method were assessed. The study did not received external funding and the authors have no disclosures.

RESULTS

There was excellent agreement between the two methods with inter-method reliability coefficients (intraclass correlation coefficients) varying from 0.79 to 0.99. Bland and Altman plots further confirmed the agreement between the two methods. Intra-rater reliability and standard error of measurements were comparable between methods, with reliability coefficient varying between 0.95 and 0.99 for the manual thresholding and 0.97-0.99 for the automated algorithm.

CONCLUSION

The proposed automated thresholding algorithm to assess paraspinal muscle size and composition measurements was highly reliable, with excellent agreement with the reference manual thresholding method.

摘要

背景

在过去几十年中,椎旁肌形态和脂肪浸润的影像学评估受到了广泛关注,有报告表明肌肉退行性改变与腰痛(LBP)之间存在关联。迄今为止,定性和定量方法已被用于评估椎旁肌组成。尽管手动阈值技术高度可靠,但在临床环境中既耗时又并非总是可行。这种手动阈值技术的繁琐性和评分者依赖性促使了自动或半自动分割方法的发展。本研究的目的是开发和评估一种用于评估椎旁肌组成的自动阈值算法。通过重复测量并与一种成熟的、高度可靠的手动阈值技术的测量结果进行比较,研究了使用新的自动阈值算法进行肌肉测量的可靠性和有效性。

方法

从参与脊柱外科诊所常见腰椎疾病项目的患者队列中随机选取30例LBP患者的磁共振图像。使用一系列T2加权磁共振图像训练算法;采用包括自适应直方图均衡化方法图像调整方案在内的预处理技术来提高图像的质量和对比度。使用手动阈值技术和新型自动阈值算法,从轴向T2加权图像上对所有肌肉测量重复进行两次,间隔至少5天。评分者对所有先前的测量结果不知情。评估了每种测量方法的方法间一致性和评分者内可靠性。该研究未接受外部资金,作者无利益冲突声明。

结果

两种方法之间具有极好的一致性,方法间可靠性系数(组内相关系数)在0.79至0.99之间。布兰德-奥特曼图进一步证实了两种方法之间的一致性。方法间的评分者内可靠性和测量标准误差相当,手动阈值技术的可靠性系数在0.95至0.99之间,自动算法的可靠性系数在0.97至0.99之间。

结论

所提出的用于评估椎旁肌大小和组成测量的自动阈值算法高度可靠,与参考手动阈值方法具有极好的一致性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/81fc/5441067/f786595a34ed/12938_2017_350_Fig1_HTML.jpg

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