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在反肩置换手术规划期间的自动肌肉延长测量。

Automated muscle elongation measurement during reverse shoulder arthroplasty planning.

机构信息

Materialise, Heverlee, Belgium; Multiscale in Mechanical and Biological Engineering (M2BE), University of Zaragoza, Zaragoza, Spain; Biomechanics Section, KU Leuven, Leuven, Belgium.

Materialise, Heverlee, Belgium; Biomechanics Section, KU Leuven, Leuven, Belgium.

出版信息

J Shoulder Elbow Surg. 2021 Mar;30(3):561-571. doi: 10.1016/j.jse.2020.07.007. Epub 2020 Jul 21.

Abstract

BACKGROUND

Adequate deltoid and rotator cuff elongation in reverse shoulder arthroplasty is crucial to maximize postoperative functional outcomes and to avoid complications. Measurements of deltoid and rotator cuff elongation during preoperative planning can support surgeons in selecting a suitable implant design and position. Therefore, this study presented and evaluated a fully automated method for measuring deltoid and rotator cuff elongation.

METHODS

Complete scapular and humeral models were extracted from computed tomography scans of 40 subjects. First, a statistical shape model of the complete humerus was created and evaluated to identify the muscle attachment points. Next, a muscle wrapping algorithm was developed to identify the muscle paths and to compute muscle lengths and elongations after reverse shoulder arthroplasty implantation. The accuracy of the muscle attachment points and the muscle elongation measurements was evaluated for the 40 subjects by use of both complete and artificially created partial humeral models. Additionally, the muscle elongation measurements were evaluated for a set of 50 arthritic shoulder joints. Finally, a sensitivity analysis was performed to evaluate the impact of implant positioning on deltoid and rotator cuff elongation.

RESULTS

For the complete humeral models, all muscle attachment points were identified with a median error < 3.5 mm. For the partial humeral models, the errors on the deltoid attachment point largely increased. Furthermore, all muscle elongation measurements showed an error < 1 mm for 75% of the subjects for both the complete and partial humeral models. For the arthritic shoulder joints, the errors on the muscle elongation measurements were <2 mm for 75% of the subjects. Finally, the sensitivity analysis showed that muscle elongations were affected by implant positioning.

DISCUSSION

This study presents an automated method for accurately measuring muscle elongations during preoperative planning of shoulder arthroplasty. The results show that the accuracy in measuring muscle elongations is higher than the accuracy in indicating the muscle attachment points. Hence, muscle elongation measurements are insensitive to the observed errors on the muscle attachment points. Related to this finding, muscle elongations can be accurately measured for both a complete humeral model and a partial humeral model. Because the presented method also showed accurate results for arthritic shoulder joints, it can be used during preoperative shoulder arthroplasty planning, in which typically only the proximal humerus is present in the scan and in which bone arthropathy can be present. As the muscle elongations are sensitive to implant positioning, surgeons can use the muscle elongation measurements to refine their surgical plan.

摘要

背景

在反肩置换术中,充分的三角肌和肩袖延长对于最大限度地提高术后功能结果和避免并发症至关重要。在术前规划中测量三角肌和肩袖的延长可以帮助外科医生选择合适的植入物设计和位置。因此,本研究提出并评估了一种完全自动化的测量三角肌和肩袖延长的方法。

方法

从 40 名受试者的计算机断层扫描中提取完整的肩胛骨和肱骨模型。首先,创建并评估了完整肱骨的统计形状模型,以确定肌肉附着点。接下来,开发了一种肌肉包裹算法,以识别肌肉路径,并计算反肩置换术后的肌肉长度和延长。使用完整和人工创建的部分肱骨模型评估了 40 名受试者的肌肉附着点和肌肉延长测量的准确性。此外,还评估了一组 50 个关节炎肩关节的肌肉延长测量值。最后,进行了敏感性分析,以评估植入物定位对三角肌和肩袖延长的影响。

结果

对于完整的肱骨模型,所有肌肉附着点的识别误差均<3.5 毫米。对于部分肱骨模型,三角肌附着点的误差大大增加。此外,对于完整和部分肱骨模型,75%的受试者的所有肌肉延长测量值的误差均<1 毫米。对于关节炎肩关节,75%的受试者的肌肉延长测量值的误差<2 毫米。最后,敏感性分析表明,肌肉延长受植入物定位的影响。

讨论

本研究提出了一种在肩关节置换术前规划中准确测量肌肉延长的自动化方法。结果表明,测量肌肉延长的准确性高于指示肌肉附着点的准确性。因此,肌肉延长测量值对观察到的肌肉附着点误差不敏感。与这一发现相关,本方法也能准确测量完整肱骨模型和部分肱骨模型的肌肉延长。由于所提出的方法对关节炎肩关节也有准确的结果,因此它可以在术前肩关节置换规划中使用,在这种情况下,扫描中通常只有肱骨近端,并且可能存在骨关节炎。由于肌肉延长对植入物定位敏感,外科医生可以使用肌肉延长测量值来完善他们的手术计划。

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