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基于深度学习的临床磁共振扫描中肩袖肌肉全自动分割方法的开发。

Development of a deep learning-based fully automated segmentation of rotator cuff muscles from clinical MR scans.

机构信息

Department of Orthopaedic Surgery, Seoul National University Hospital, Seoul, Republic of Korea.

Department of Radiology, Seoul National University Hospital, Seoul, Republic of Korea.

出版信息

Acta Radiol. 2024 Sep;65(9):1126-1132. doi: 10.1177/02841851241262325. Epub 2024 Jul 23.

Abstract

BACKGROUND

The fatty infiltration and atrophy in the muscle after a rotator cuff (RC) tear are important in surgical decision-making and are linked to poor clinical outcomes after rotator cuff repair. An accurate and reliable quantitative method should be developed to assess the entire RC muscles.

PURPOSE

To develop a fully automated approach based on a deep neural network to segment RC muscles from clinical magnetic resonance imaging (MRI) scans.

MATERIAL AND METHODS

In total, 94 shoulder MRI scans (mean age = 62.3 years) were utilized for the training and internal validation datasets, while an additional 20 MRI scans (mean age = 62.6 years) were collected from another institution for external validation. An orthopedic surgeon and a radiologist manually segmented muscles and bones as reference masks. Segmentation performance was evaluated using the Dice score, sensitivities, precision, and percent difference in muscle volume (%). In addition, the segmentation performance was assessed based on sex, age, and the presence of a RC tendon tear.

RESULTS

The average Dice score, sensitivities, precision, and percentage difference in muscle volume of the developed algorithm were 0.920, 0.933, 0.912, and 4.58%, respectively, in external validation. There was no difference in the prediction of shoulder muscles, with the exception of teres minor, where significant prediction errors were observed (0.831, 0.854, 0.835, and 10.88%, respectively). The segmentation performance of the algorithm was generally unaffected by age, sex, and the presence of RC tears.

CONCLUSION

We developed a fully automated deep neural network for RC muscle and bone segmentation with excellent performance from clinical MRI scans.

摘要

背景

肩袖撕裂后肌肉的脂肪浸润和萎缩在手术决策中很重要,与肩袖修复后临床结果不良有关。应该开发一种准确可靠的定量方法来评估整个肩袖肌肉。

目的

开发一种基于深度神经网络的全自动方法,从临床磁共振成像(MRI)扫描中分割肩袖肌肉。

材料与方法

共使用 94 例肩部 MRI 扫描(平均年龄=62.3 岁)进行训练和内部验证数据集,另外从另一机构收集 20 例 MRI 扫描(平均年龄=62.6 岁)进行外部验证。一名矫形外科医生和一名放射科医生手动分割肌肉和骨骼作为参考掩模。使用 Dice 评分、敏感度、精确度和肌肉体积百分比差异(%)评估分割性能。此外,还根据性别、年龄和肩袖肌腱撕裂的存在评估了分割性能。

结果

在外部验证中,开发的算法的平均 Dice 评分、敏感度、精确度和肌肉体积百分比差异分别为 0.920、0.933、0.912 和 4.58%。除冈下肌外,肩袖肌肉的预测没有差异,在冈下肌中观察到显著的预测误差(分别为 0.831、0.854、0.835 和 10.88%)。该算法的分割性能通常不受年龄、性别和肩袖撕裂的影响。

结论

我们开发了一种全自动的深度神经网络,用于从临床 MRI 扫描中分割肩袖肌肉和骨骼,具有出色的性能。

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