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用于自动分割腰痛患者腰椎旁肌的卷积神经网络。

Convolutional neural networks for the automatic segmentation of lumbar paraspinal muscles in people with low back pain.

机构信息

Faculty of Behavioural and Movement Sciences, Amsterdam Movement Sciences, Vrije Universiteit Amsterdam (FGB), Van der Boechorststraat 9, 1081 BT, Amsterdam, The Netherlands.

Faculty of Medicine and Health and the Northern Sydney Local Health District, The Kolling Institute, The University of Sydney, Sydney, Australia.

出版信息

Sci Rep. 2022 Aug 5;12(1):13485. doi: 10.1038/s41598-022-16710-5.

Abstract

The size, shape, and composition of paraspinal muscles have been widely reported in disorders of the cervical and lumbar spine. Measures of size, shape, and composition have required time-consuming and rater-dependent manual segmentation techniques. Convolutional neural networks (CNNs) provide alternate timesaving, state-of-the-art performance measures, which could realise clinical translation. Here we trained a CNN for the automatic segmentation of lumbar paraspinal muscles and determined the impact of CNN architecture and training choices on segmentation performance. T-weighted MRI axial images from 76 participants (46 female; age (SD): 45.6 (12.8) years) with low back pain were used to train CNN models to segment the multifidus, erector spinae, and psoas major muscles (left and right segmented separately). Using cross-validation, we compared 2D and 3D CNNs with and without data augmentation. Segmentation accuracy was compared between the models using the Sørensen-Dice index as the primary outcome measure. The effect of increasing network depth on segmentation accuracy was also investigated. Each model showed high segmentation accuracy (Sørensen-Dice index ≥ 0.885) and excellent reliability (ICC ≥ 0.941). Overall, across all muscles, 2D models performed better than 3D models (p = 0.012), and training without data augmentation outperformed training with data augmentation (p < 0.001). The 2D model trained without data augmentation demonstrated the highest average segmentation accuracy. Increasing network depth did not improve accuracy (p = 0.771). All trained CNN models demonstrated high accuracy and excellent reliability for segmenting lumbar paraspinal muscles. CNNs can be used to efficiently and accurately extract measures of paraspinal muscle health from MRI.

摘要

脊柱旁肌肉的大小、形状和组成在颈椎和腰椎疾病中已有广泛报道。大小、形状和组成的测量需要耗时且依赖评估者的手动分割技术。卷积神经网络(CNN)提供了替代的省时、最先进的性能测量方法,可实现临床转化。在这里,我们训练了一个用于自动分割腰椎脊柱旁肌肉的 CNN,并确定了 CNN 架构和训练选择对分割性能的影响。我们使用来自 76 名参与者(46 名女性;年龄(SD):45.6(12.8)岁)的低背痛 T1 加权 MRI 轴向图像来训练 CNN 模型以分割多裂肌、竖脊肌和腰大肌(左右分别分割)。使用交叉验证,我们比较了具有和不具有数据增强的 2D 和 3D CNN。使用索里森-迪奇指数作为主要的评估指标来比较模型之间的分割准确性。还研究了增加网络深度对分割准确性的影响。每个模型的分割准确性都很高(索里森-迪奇指数≥0.885),可靠性也很好(ICC≥0.941)。总体而言,在所有肌肉中,2D 模型的表现优于 3D 模型(p=0.012),并且不进行数据增强的训练优于进行数据增强的训练(p<0.001)。不进行数据增强的 2D 模型表现出最高的平均分割准确性。增加网络深度并没有提高准确性(p=0.771)。所有训练的 CNN 模型在分割腰椎脊柱旁肌肉方面都表现出了很高的准确性和极好的可靠性。CNN 可用于从 MRI 中高效且准确地提取脊柱旁肌肉健康的测量值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cb9d/9355981/fba95bbec3b0/41598_2022_16710_Fig1_HTML.jpg

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