Lanzhou University Second Hospital, Orthopaedic Clinical Research Center of Gansu Province, Intelligent Orthopaedic Industry Technology Center of Gansu Province, Lanzhou Gansu, China.
Lanzhou University Second Hospital, Orthopaedic Clinical Research Center of Gansu Province, Intelligent Orthopaedic Industry Technology Center of Gansu Province, Lanzhou Gansu, China.
Arthroscopy. 2024 Feb;40(2):567-578. doi: 10.1016/j.arthro.2023.06.018. Epub 2023 Jun 23.
To determine the model performance of artificial intelligence (AI) in detecting rotator cuff pathology using different imaging modalities and to compare capability with physicians in clinical scenarios.
The review followed the PRISMA guidelines and was registered on PROSPERO. The criteria were as follows: 1) studies on the application of AI in detecting rotator cuff pathology using medical images, and 2) studies on smart devices for assisting in diagnosis were excluded. The following data were extracted and recorded: statistical characteristics, input features, AI algorithms used, sample sizes of training and testing sets, and model performance. The data extracted from the included studies were narratively reviewed.
A total of 14 articles, comprising 23,119 patients, met the inclusion and exclusion criteria. The pooled mean age of the patients was 56.7 years, and the female rate was 56.1%. The area under the curve (AUC) of the algorithmic model to detect rotator cuff pathology from ultrasound images, MRI images, and radiographic series ranged from 0.789 to 0.950, 0.844 to 0.943, and 0.820 to 0.830, respectively. Notably, 1 of the studies reported that AI models based on ultrasound images demonstrated a diagnostic performance similar to that of radiologists. Another comparative study demonstrated that AI models using MRI images exhibited greater accuracy and specificity compared to orthopedic surgeons in the diagnosis of rotator cuff pathology, albeit not in sensitivity.
The detection of rotator cuff pathology has been significantly aided by the exceptional performance of AI models. In particular, these models are equally adept as musculoskeletal radiologists in using ultrasound to diagnose rotator cuff pathology. Furthermore, AI models exhibit statistically superior levels of accuracy and specificity when using MRI to diagnose rotator cuff pathology, albeit with no marked difference in sensitivity, in comparison to orthopaedic surgeons.
Level III, systematic review of Level III studies.
确定人工智能(AI)在使用不同成像方式检测肩袖病变中的模型性能,并比较其在临床环境中的能力与医生相比。
本研究遵循 PRISMA 指南,并在 PROSPERO 上进行了注册。标准如下:1)使用医学图像检测肩袖病变的 AI 应用研究,2)智能设备辅助诊断的研究除外。提取并记录以下数据:统计特征、输入特征、使用的 AI 算法、训练集和测试集的样本量以及模型性能。从纳入的研究中提取的数据进行了叙述性审查。
共有 14 篇文章,包含 23119 名患者,符合纳入和排除标准。患者的平均年龄为 56.7 岁,女性比例为 56.1%。算法模型检测超声图像、MRI 图像和放射学系列中的肩袖病变的曲线下面积(AUC)范围分别为 0.789 至 0.950、0.844 至 0.943 和 0.820 至 0.830。值得注意的是,有 1 项研究报告称,基于超声图像的 AI 模型表现出与放射科医生相似的诊断性能。另一项比较研究表明,在诊断肩袖病变方面,使用 MRI 图像的 AI 模型比骨科医生具有更高的准确性和特异性,尽管在敏感性方面没有差异。
人工智能模型的出色表现极大地辅助了肩袖病变的检测。特别是,这些模型在使用超声诊断肩袖病变方面与肌肉骨骼放射科医生一样熟练。此外,与骨科医生相比,使用 MRI 诊断肩袖病变时,AI 模型的准确性和特异性具有统计学上的优势,尽管敏感性没有明显差异。
三级,三级研究的系统评价。