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利用人工智能诊断 X 光平片上的骨质疏松性椎体骨折。

Using Artificial Intelligence to Diagnose Osteoporotic Vertebral Fractures on Plain Radiographs.

机构信息

Department of Osteoporosis and Bone Disease, Shanghai Clinical Research Center of Bone Disease, Sixth People's Hospital Affiliated to Shanghai Jiao Tong University School of Medicine, Shanghai, China.

Clinical Research Center, Sixth People's Hospital Affiliated to Shanghai Jiao Tong University School of Medicine, Shanghai, China.

出版信息

J Bone Miner Res. 2023 Sep;38(9):1278-1287. doi: 10.1002/jbmr.4879. Epub 2023 Aug 2.

Abstract

Osteoporotic vertebral fracture (OVF) is a risk factor for morbidity and mortality in elderly population, and accurate diagnosis is important for improving treatment outcomes. OVF diagnosis suffers from high misdiagnosis and underdiagnosis rates, as well as high workload. Deep learning methods applied to plain radiographs, a simple, fast, and inexpensive examination, might solve this problem. We developed and validated a deep-learning-based vertebral fracture diagnostic system using area loss ratio, which assisted a multitasking network to perform skeletal position detection and segmentation and identify and grade vertebral fractures. As the training set and internal validation set, we used 11,397 plain radiographs from six community centers in Shanghai. For the external validation set, 1276 participants were recruited from the outpatient clinic of the Shanghai Sixth People's Hospital (1276 plain radiographs). Radiologists performed all X-ray images and used the Genant semiquantitative tool for fracture diagnosis and grading as the ground truth data. Accuracy, sensitivity, specificity, positive predictive value, and negative predictive value were used to evaluate diagnostic performance. The AI_OVF_SH system demonstrated high accuracy and computational speed in skeletal position detection and segmentation. In the internal validation set, the accuracy, sensitivity, and specificity with the AI_OVF_SH model were 97.41%, 84.08%, and 97.25%, respectively, for all fractures. The sensitivity and specificity for moderate fractures were 88.55% and 99.74%, respectively, and for severe fractures, they were 92.30% and 99.92%. In the external validation set, the accuracy, sensitivity, and specificity for all fractures were 96.85%, 83.35%, and 94.70%, respectively. For moderate fractures, the sensitivity and specificity were 85.61% and 99.85%, respectively, and 93.46% and 99.92% for severe fractures. Therefore, the AI_OVF_SH system is an efficient tool to assist radiologists and clinicians to improve the diagnosing of vertebral fractures. © 2023 The Authors. Journal of Bone and Mineral Research published by Wiley Periodicals LLC on behalf of American Society for Bone and Mineral Research (ASBMR).

摘要

骨质疏松性椎体骨折(OVF)是老年人群发病率和死亡率的一个危险因素,准确的诊断对于改善治疗效果很重要。OVF 的诊断存在高误诊和漏诊率,以及工作量大的问题。应用于简单、快速、廉价的 X 光检查的深度学习方法可能会解决这个问题。我们开发并验证了一种基于面积损失比的基于深度学习的椎体骨折诊断系统,该系统辅助一个多任务网络进行骨骼位置检测和分割,并识别和分级椎体骨折。我们使用了来自上海六个社区中心的 11397 张 X 光片作为训练集和内部验证集。对于外部验证集,我们从上海市第六人民医院的门诊招募了 1276 名参与者(1276 张 X 光片)。放射科医生对所有 X 射线图像进行评估,并使用 Genant 半定量工具进行骨折诊断和分级作为金标准数据。我们使用准确性、敏感性、特异性、阳性预测值和阴性预测值来评估诊断性能。AI_OVF_SH 系统在骨骼位置检测和分割方面表现出了很高的准确性和计算速度。在内部验证集中,AI_OVF_SH 模型对所有骨折的准确性、敏感性和特异性分别为 97.41%、84.08%和 97.25%。对中度骨折的敏感性和特异性分别为 88.55%和 99.74%,对重度骨折的敏感性和特异性分别为 92.30%和 99.92%。在外部验证集中,对所有骨折的准确性、敏感性和特异性分别为 96.85%、83.35%和 94.70%。对中度骨折的敏感性和特异性分别为 85.61%和 99.85%,对重度骨折的敏感性和特异性分别为 93.46%和 99.92%。因此,AI_OVF_SH 系统是一种有效的工具,可以帮助放射科医生和临床医生提高椎体骨折的诊断能力。

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