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基于深度学习的腕关节 X 线片中舟月和月骨脱位的自动检测

Automatic Detection of Perilunate and Lunate Dislocations on Wrist Radiographs Using Deep Learning.

机构信息

From the Division of Plastic Surgery, Department of Surgery.

The Buncke Clinic.

出版信息

Plast Reconstr Surg. 2024 Jun 1;153(6):1138e-1141e. doi: 10.1097/PRS.0000000000010928. Epub 2023 Jul 17.

Abstract

Delayed or missed diagnosis of perilunate or lunate dislocations can lead to significant morbidity. Advances in computer vision provide an opportunity to improve diagnostic performance. In this study, a deep learning algorithm was used for detection of perilunate and lunate dislocations on lateral wrist radiographs. A total of 435 lateral wrist radiographs were labeled as normal or pathologic (perilunate or lunate dislocation). The lunate in each radiograph was segmented with a rectangular bounding box. Images were partitioned into training and test sets. Two neural networks, consisting of an object detector followed by an image classifier, were applied in series. First, the object detection module was used to localize the lunate. Next, the image classifier performed a binary classification for normal or pathologic. The accuracy, sensitivity, and specificity of the overall system were evaluated. A receiver operating characteristic curve and the associated area under the curve were used to demonstrate the overall performance of the computer vision algorithm. The lunate object detector was 97.0% accurate at identifying the lunate. Accuracy was 98.7% among the subgroup of normal wrist radiographs and 91.3% among the subgroup of wrist radiographs with perilunate/lunate dislocations. The perilunate/lunate dislocation classifier had a sensitivity (recall) of 93.8%, a specificity of 93.3%, and an accuracy of 93.4%. The area under the curve was 0.986. The authors have developed a proof-of-concept computer vision system for diagnosis of perilunate/lunate dislocations on lateral wrist radiographs. This novel deep learning algorithm has potential to improve clinical sensitivity to ultimately prevent delayed or missed diagnosis of these injuries.

摘要

月骨周围或月骨脱位的延迟或漏诊可导致严重的发病率。计算机视觉的进步为提高诊断性能提供了机会。在这项研究中,使用深度学习算法检测侧腕关节 X 光片中的月骨周围和月骨脱位。总共 435 张侧腕关节 X 光片被标记为正常或病理(月骨周围或月骨脱位)。用矩形边界框对每个 X 光片中的月骨进行分割。将图像分割为训练集和测试集。两个神经网络,由一个物体探测器和一个图像分类器组成,依次应用。首先,物体检测模块用于定位月骨。接下来,图像分类器对正常或病理进行二进制分类。评估了整个系统的准确性、敏感性和特异性。使用受试者工作特征曲线和相关曲线下面积来展示计算机视觉算法的整体性能。月骨物体探测器在识别月骨方面的准确率为 97.0%。在正常腕关节 X 光片中,准确率为 98.7%,在月骨周围/月骨脱位的腕关节 X 光片中,准确率为 91.3%。月骨周围/月骨脱位分类器的敏感性(召回率)为 93.8%,特异性为 93.3%,准确性为 93.4%。曲线下面积为 0.986。作者已经开发了一种用于诊断侧腕关节 X 光片中月骨周围/月骨脱位的概念验证计算机视觉系统。这种新的深度学习算法有可能提高临床敏感性,最终防止这些损伤的延迟或漏诊。

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