Drexel University College of Medicine, Philadelphia, PA, USA.
University of Maryland Medical Intelligent Imaging (UM2ii) Center, Department of Diagnostic Radiology and Nuclear Medicine, University of Maryland, University of Maryland School of Medicine, Baltimore, MD, USA.
Skeletal Radiol. 2024 Mar;53(3):445-454. doi: 10.1007/s00256-023-04416-2. Epub 2023 Aug 16.
The purpose of this systematic review was to summarize the results of original research studies evaluating the characteristics and performance of deep learning models for detection of knee ligament and meniscus tears on MRI.
We searched PubMed for studies published as of February 2, 2022 for original studies evaluating development and evaluation of deep learning models for MRI diagnosis of knee ligament or meniscus tears. We summarized study details according to multiple criteria including baseline article details, model creation, deep learning details, and model evaluation.
19 studies were included with radiology departments leading the publications in deep learning development and implementation for detecting knee injuries via MRI. Among the studies, there was a lack of standard reporting and inconsistently described development details. However, all included studies reported consistently high model performance that significantly supplemented human reader performance.
From our review, we found radiology departments have been leading deep learning development for injury detection on knee MRIs. Although studies inconsistently described DL model development details, all reported high model performance, indicating great promise for DL in knee MRI analysis.
本系统评价旨在总结评估 MRI 检测膝关节韧带和半月板撕裂的深度学习模型的特征和性能的原始研究结果。
截至 2022 年 2 月 2 日,我们在 PubMed 上检索了评估用于 MRI 诊断膝关节韧带或半月板撕裂的深度学习模型的开发和评估的原始研究。我们根据多项标准总结了研究细节,包括基线文章细节、模型创建、深度学习细节和模型评估。
共纳入 19 项研究,放射科在通过 MRI 检测膝关节损伤的深度学习开发和实施方面处于领先地位。在这些研究中,缺乏标准报告和不一致的描述开发细节。然而,所有纳入的研究都报告了一致的高模型性能,显著补充了人类读者的表现。
从我们的综述中可以发现,放射科在膝关节 MRI 损伤检测的深度学习开发方面处于领先地位。尽管研究对 DL 模型开发细节的描述不一致,但所有研究都报告了高模型性能,表明 DL 在膝关节 MRI 分析中有很大的应用前景。