He Zexing, Fang Kaibin, Lin Xiaocong, Xiang ChengHao, Li Yuanzhe, Huang Nianlai, Hu XuJun, Chen Zekai, Dai Zhangsheng
Department of Orthopaedic Surgery, The Second Affiliated Hospital of Fujian Medical University, Quanzhou 362000, China (Z.H., K.F., X.L., N.H., Z.D.).
Department of Joint Surgery, The Central Hospital of Enshi Tujia and Miao Autonomous Prefecture, Enshi 445000, China (C.X.).
Acad Radiol. 2025 Feb;32(2):907-915. doi: 10.1016/j.acra.2024.09.049. Epub 2024 Oct 5.
Rotator cuff injury is a common ailment in the musculoskeletal system, with the subscapularis muscle being the largest and most robust muscle of the rotator cuff. The occurrence of subscapularis muscle tears is more frequent than previously reported. The main objective of this research is to harness the power of artificial intelligence to enhance the precision in diagnosing subscapularis muscle injuries via magnetic resonance imaging of the shoulder joint, prior to surgical intervention. This study seeks to integrate advanced artificial intelligence algorithms to analyze magnetic resonance imaging data, aiming to provide more accurate preoperative assessments, which can potentially lead to better surgical outcomes and patient care and promote technological progress in the field of medical imaging analysis.
This is a multicenter study that involves 324 patients from a major medical center serving as both the training and testing groups, with an additional 60 patients from two other medical centers comprising the verifying group. The imaging protocol for all these subjects included a series of shoulder magnetic resonance imaging scans: T1-weighted coronal sequences, T2-weighted coronal, axial, and sagittal images. These comprehensive imaging modalities were utilized to thoroughly examine the shoulder joint's anatomical details and to detect any signs of subscapularis muscle damage. To enhance the diagnostic accuracy before surgical procedures, radiomic analysis was employed. This technique involves the extraction of a multitude of quantitative features from the magnetic resonance imaging, which can provide a more nuanced and data-driven approach to identifying subscapularis muscle injuries. The integration of radiomics in this study aims to offer a more precise preoperative assessment, potentially leading to improved surgical planning and patient outcomes.
In the course of this study, a comprehensive extraction of 1197 radiomic features was performed for each imaging modality of every patient. The coronal T1-weighted modality, when assessed within the internal verifying cohort, delivered a diagnostic accuracy of 0.766, coupled with an AUC of 0.803. In the case of the T2-weighted modality, the coronal planes exhibited a diagnostic accuracy of 0.781 and an AUC of 0.844. The axial T2-weighted images recorded an accuracy of 0.719 and an AUC of 0.761, while the sagittal T2-weighted images scored an accuracy of 0.766 and an AUC of 0.821. The amalgamation of these imaging techniques through a multimodal strategy markedly enhanced the accuracy to 0.828, with an AUC of 0.916 for the internal verifying group. The diagnostic performance of the coronal T1-weighted modality in the external verifying cohort yielded an accuracy of 0.833, with an area under the curve (AUC) of 0.819. For the T2-weighted modality, the coronal imaging demonstrated an accuracy of 0.767 and an AUC of 0.794. The axial T2-weighted images had an accuracy of 0.783 and an AUC of 0.797, while the sagittal T2-weighted images achieved an accuracy of 0.833 and an AUC of 0.800. When combining the modalities, the multimodal approach significantly improved the accuracy to 0.867, with an AUC of 0.803 in the external verifying group, indicating a robust diagnostic capability.
Our study demonstrates that the application of multimodal radiomic techniques to shoulder magnetic resonance imaging significantly enhances the precision of preoperative diagnosis for subscapularis muscle injuries. This approach leverages the comprehensive data provided by various magnetic resonance imaging modalities to offer a more detailed and accurate assessment, which is crucial for surgical planning and patient care.
肩袖损伤是肌肉骨骼系统中的常见疾病,肩胛下肌是肩袖中最大且最有力的肌肉。肩胛下肌撕裂的发生率比之前报道的更高。本研究的主要目的是利用人工智能的力量,通过肩关节磁共振成像在手术干预前提高肩胛下肌损伤诊断的准确性。本研究旨在整合先进的人工智能算法来分析磁共振成像数据,旨在提供更准确的术前评估,这可能会带来更好的手术效果和患者护理,并推动医学影像分析领域的技术进步。
这是一项多中心研究,涉及一家大型医疗中心的324名患者作为训练组和测试组,另外来自其他两家医疗中心的60名患者组成验证组。所有这些受试者的成像方案包括一系列肩部磁共振成像扫描:T1加权冠状序列、T2加权冠状、轴向和矢状图像。这些全面的成像方式用于全面检查肩关节的解剖细节并检测肩胛下肌损伤的任何迹象。为了提高手术前的诊断准确性,采用了影像组学分析。该技术涉及从磁共振成像中提取大量定量特征,这可以提供一种更细致入微且数据驱动的方法来识别肩胛下肌损伤。本研究中影像组学的整合旨在提供更精确的术前评估,可能会改善手术规划和患者预后。
在本研究过程中,对每位患者的每种成像方式进行了1197个影像组学特征的全面提取。在内部验证队列中评估时,冠状T1加权方式的诊断准确率为0.766,曲线下面积(AUC)为0.803。对于T2加权方式,冠状平面的诊断准确率为0.781,AUC为0.844。轴向T2加权图像的准确率为0.719,AUC为0.761,而矢状T2加权图像的准确率为0.766,AUC为0.821。通过多模态策略将这些成像技术结合起来,显著提高了准确率至0.828,内部验证组的AUC为0.916。冠状T1加权方式在外部验证队列中的诊断性能准确率为0.833,曲线下面积(AUC)为0.819。对于T2加权方式,冠状成像的准确率为0.767,AUC为0.794。轴向T2加权图像的准确率为0.783,AUC为0.797,而矢状T2加权图像的准确率为0.833,AUC为0.800。当结合这些方式时,多模态方法显著提高了准确率至0.867,外部验证组的AUC为0.803,表明具有强大的诊断能力。
我们的研究表明,将多模态影像组学技术应用于肩部磁共振成像可显著提高肩胛下肌损伤术前诊断的准确性。这种方法利用各种磁共振成像方式提供的综合数据进行更详细、准确的评估,这对手术规划和患者护理至关重要。