论文标题

使用深度学习改善了MRI图像上胫骨软骨缺陷的诊断

Improved Diagnosis of Tibiofemoral Cartilage Defects on MRI Images Using Deep Learning

论文作者

Merkely, Gergo, Borjali, Alireza, Zgoda, Molly, Farina, Evan M., Gortz, Simon, Muratoglu, Orhun, Lattermann, Christian, Varadarajan, Kartik M.

论文摘要

背景:MRI是软骨成像的首选方式;但是,其诊断性能可变,并且明显低于金标准诊断膝关节镜检查。近年来,深度学习已被用来自动解释医学图像以提高诊断准确性和速度。目的:本研究的主要目的是评估是否可以利用将深度学习应用于膝关节MRI图像的解释,以准确识别软骨缺陷。方法:我们分析了接受膝关节MRI评估并因此进行关节镜膝盖手术的患者的数据(207个软骨缺陷,90,没有软骨缺陷)。将患者的关节镜检查结果与术前MRI图像进行比较,以验证存在或不存在分离的胫骨软骨缺陷。我们开发了三个卷积神经网络(CNN),以分析MRI图像并实现特定图像的显着性图来可视化CNN的决策过程。为了比较CNN与人类解释的表现,向经验丰富的骨科医生和骨科居民提供了相同的测试数据集图像。结果:显着性图表明,CNN学会了专注于决策过程中MRI图像上胫骨关节软骨的临床相关区域。一个CNN的性能比骨科医生更高,由CNN做出了两个更准确的诊断。所有CNN的表现都优于骨科居民。结论:CNN可用于增强MRI的诊断性能,以鉴定孤立的胫骨软骨缺陷,并在某些情况下可能会替代诊断性的膝关节镜。

Background: MRI is the modality of choice for cartilage imaging; however, its diagnostic performance is variable and significantly lower than the gold standard diagnostic knee arthroscopy. In recent years, deep learning has been used to automatically interpret medical images to improve diagnostic accuracy and speed. Purpose: The primary purpose of this study was to evaluate whether deep learning applied to the interpretation of knee MRI images can be utilized to identify cartilage defects accurately. Methods: We analyzed data from patients who underwent knee MRI evaluation and consequently had arthroscopic knee surgery (207 with cartilage defect, 90 without cartilage defect). Patients' arthroscopic findings were compared to preoperative MRI images to verify the presence or absence of isolated tibiofemoral cartilage defects. We developed three convolutional neural networks (CNNs) to analyze the MRI images and implemented image-specific saliency maps to visualize the CNNs' decision-making process. To compare the CNNs' performance against human interpretation, the same test dataset images were provided to an experienced orthopaedic surgeon and an orthopaedic resident. Results: Saliency maps demonstrated that the CNNs learned to focus on the clinically relevant areas of the tibiofemoral articular cartilage on MRI images during the decision-making processes. One CNN achieved higher performance than the orthopaedic surgeon, with two more accurate diagnoses made by the CNN. All the CNNs outperformed the orthopaedic resident. Conclusion: CNN can be used to enhance the diagnostic performance of MRI in identifying isolated tibiofemoral cartilage defects and may replace diagnostic knee arthroscopy in certain cases in the future.

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