论文标题

给我膝盖X光片,我会告诉您膝盖关节区域在哪里:深度卷积神经网络冒险

Give me a knee radiograph, I will tell you where the knee joint area is: a deep convolutional neural network adventure

论文作者

Yan, Shi, Ramazanian, Taghi, Sagheb, Elham, Kremers, Walter K., Chaudhary, Vipin, Taunton, Michael, Kremers, Hilal Maradit, Tafti, Ahmad P.

论文摘要

膝盖疼痛无疑是最常见的肌肉骨骼症状,会损害生活质量,限制所有年龄段的流动性和功能。膝盖疼痛通过常规X光片评估,在该射线照相中,射线照相图像的广泛采用及其可用性低廉,使其成为评估膝关节疼痛和膝盖病理学的主要成分,例如关节炎,创伤和运动损伤。但是,对膝盖X光片的解释仍然是高度主观的,并且在X光片内重叠的结构以及每天需要分析的大量图像,使解释对天真和经验丰富的从业者都有挑战。因此,有必要实施人工智能策略,以客观地自动解释膝盖X光片,从而及时促进异常X光片的分类。当前的工作提出了一条准确有效的管道,用于对膝关节区域的自主检测,定位和分类,在平原X光片组合,将您看起来只看一次(YOLO V3)深卷积神经网络与大型且完全注重的膝盖X光片数据集。预计目前的工作将刺激从深度学习计算机视觉社区到这种务实和临床应用的更多兴趣。

Knee pain is undoubtedly the most common musculoskeletal symptom that impairs quality of life, confines mobility and functionality across all ages. Knee pain is clinically evaluated by routine radiographs, where the widespread adoption of radiographic images and their availability at low cost, make them the principle component in the assessment of knee pain and knee pathologies, such as arthritis, trauma, and sport injuries. However, interpretation of the knee radiographs is still highly subjective, and overlapping structures within the radiographs and the large volume of images needing to be analyzed on a daily basis, make interpretation challenging for both naive and experienced practitioners. There is thus a need to implement an artificial intelligence strategy to objectively and automatically interpret knee radiographs, facilitating triage of abnormal radiographs in a timely fashion. The current work proposes an accurate and effective pipeline for autonomous detection, localization, and classification of knee joint area in plain radiographs combining the You Only Look Once (YOLO v3) deep convolutional neural network with a large and fully-annotated knee radiographs dataset. The present work is expected to stimulate more interest from the deep learning computer vision community to this pragmatic and clinical application.

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