Volumetric Classification: Unveiling the True Extent of Rotator Cuff Tears.

IF 2.9 2区 医学 Q1 ORTHOPEDICS Journal of Shoulder and Elbow Surgery Pub Date : 2024-10-15 DOI:10.1016/j.jse.2024.08.030
Guilherme Augusto Stirma, Paulo Santoro Belangero, Carlos Vicente Andreoli, Alberto de Castro Pochini, Nitamar Abdala, André Fukunishi Yamada, Benno Ejnisman
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Abstract

Introduction: Rotator cuff injury diagnosis involves comprehensive clinical, physical, and imaging assessments, with MRI being pivotal for detecting and classifying these injuries. However, the absence of a universally accepted classification system necessitates a more precise approach, advocating for the use of three-dimensional (3D) modeling to better understand and categorize rotator cuff tears.

Methodology: This research was conducted as a prospective, single-institution study on 62 patients exhibiting full-thickness rotator cuff tears. Utilizing preoperative 1.5T MRI, the study aimed to create a more detailed classification system based on volumetric and surface area measurements. Advanced 3D modeling software was employed to transform MRI data into precise 3D representations, facilitating a more accurate analysis of the lesions.

Results: The study unveiled a novel classification system rooted in volumetric and surface area assessments, revealing significant discrepancies in the existing two-dimensional classifications. Approximately 45% of the cases demonstrated inconsistencies between traditional classifications and 3D measurements. Notably, medium-sized lesions were often overestimated, while small and large lesions were consistently underestimated in their severity. The volumetric and surface area-based classifications provided a more accurate depiction, highlighting the limitations of relying solely on coronal plane assessments in MRI. Comparative analysis confirmed the improved accuracy of the 3D method.

Conclusion: The integration of 3D imaging and volumetric analysis offers novel advancement in diagnosing and classifying rotator cuff injuries. This study's findings challenge the conventional reliance on 2D MRI, proposing a more detailed and accurate classification system that enhances the precision of surgical planning and potentially improves patient outcomes. The incorporation of comprehensive 3D assessments into the diagnostic process represents a significant step forward in the orthopedic imaging field.

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体积分类:揭示肩袖撕裂的真正范围。
导言:肩袖损伤的诊断涉及全面的临床、体格和影像学评估,其中核磁共振成像是检测和分类这些损伤的关键。然而,由于缺乏普遍接受的分类系统,因此有必要采用更精确的方法,提倡使用三维(3D)建模来更好地理解肩袖撕裂并对其进行分类:本研究是一项前瞻性的单机构研究,研究对象为 62 名全厚肩袖撕裂患者。该研究利用术前 1.5T 核磁共振成像,旨在根据体积和表面积测量结果建立一个更详细的分类系统。研究采用了先进的三维建模软件,将核磁共振成像数据转化为精确的三维图像,以便对病变进行更准确的分析:研究揭示了一种基于体积和表面积评估的新型分类系统,揭示了现有二维分类的显著差异。约 45% 的病例显示传统分类与三维测量结果不一致。值得注意的是,中等大小的病变往往被高估,而小型和大型病变的严重程度则一直被低估。基于容积和表面积的分类提供了更准确的描述,凸显了磁共振成像仅依赖冠状面评估的局限性。对比分析证实,三维方法的准确性有所提高:三维成像与容积分析的整合为肩袖损伤的诊断和分类提供了新的进展。这项研究的结果对传统的二维核磁共振成像提出了挑战,提出了一种更详细、更准确的分类系统,提高了手术规划的精确性,并有可能改善患者的预后。将全面的三维评估纳入诊断过程是骨科成像领域向前迈出的重要一步。
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来源期刊
CiteScore
6.50
自引率
23.30%
发文量
604
审稿时长
11.2 weeks
期刊介绍: The official publication for eight leading specialty organizations, this authoritative journal is the only publication to focus exclusively on medical, surgical, and physical techniques for treating injury/disease of the upper extremity, including the shoulder girdle, arm, and elbow. Clinically oriented and peer-reviewed, the Journal provides an international forum for the exchange of information on new techniques, instruments, and materials. Journal of Shoulder and Elbow Surgery features vivid photos, professional illustrations, and explicit diagrams that demonstrate surgical approaches and depict implant devices. Topics covered include fractures, dislocations, diseases and injuries of the rotator cuff, imaging techniques, arthritis, arthroscopy, arthroplasty, and rehabilitation.
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