Wu Yifan, Lu Xin, Hong Jianqiao, Lin Weijie, Chen Shiming, Mou Shenghong, Feng Gang, Yan Ruijian, Cheng Zhiyuan
Department of Surgery, Zhejiang University Hospital.
College of Information Science & Electronic Engineering, Key Lab. of Advanced Micro/Nano Electronics Devices & Smart Systems of Zhejiang, Zhejiang University.
Medicine (Baltimore). 2020 Feb;99(9):e19239. doi: 10.1097/MD.0000000000019239.
Despite the availability of a series of tests, detection of chronic traumatic osteomyelitis is still exhausting in clinical practice. We hypothesized that machine learning based on computed-tomography (CT) images would provide better diagnostic performance for extremity traumatic chronic osteomyelitis than the serological biomarker alone. A retrospective study was carried out to collect medical data from patients with extremity traumatic osteomyelitis according to the criteria of musculoskeletal infection society. In each patient, serum levels of C-reactive protein (CRP), erythrocyte sedimentation rate (ESR), and D-dimer were measured and CT scan of the extremity was conducted 7 days after admission preoperatively. A deep residual network (ResNet) machine learning model was established for recognition of bone lesion on the CT image. A total of 28,718 CT images from 163 adult patients were included. Then, we randomly extracted 80% of all CT images from each patient for training, 10% for validation, and 10% for testing. Our results showed that machine learning (83.4%) outperformed CRP (53.2%), ESR (68.8%), and D-dimer (68.1%) separately in accuracy. Meanwhile, machine learning (88.0%) demonstrated highest sensitivity when compared with CRP (50.6%), ESR (73.0%), and D-dimer (51.7%). Considering the specificity, machine learning (77.0%) is better than CRP (59.4%) and ESR (62.2%), but not D-dimer (83.8%). Our findings indicated that machine learning based on CT images is an effective and promising avenue for detection of chronic traumatic osteomyelitis in the extremity.
尽管有一系列检测方法,但在临床实践中,慢性创伤性骨髓炎的检测仍然很费劲。我们推测,基于计算机断层扫描(CT)图像的机器学习在诊断四肢创伤性慢性骨髓炎方面比单独使用血清生物标志物具有更好的性能。根据肌肉骨骼感染学会的标准,进行了一项回顾性研究,以收集四肢创伤性骨髓炎患者的医疗数据。在每位患者中,测量血清C反应蛋白(CRP)、红细胞沉降率(ESR)和D-二聚体水平,并在入院后7天术前对患侧肢体进行CT扫描。建立了一个深度残差网络(ResNet)机器学习模型,用于识别CT图像上的骨病变。共纳入163例成年患者的28718张CT图像。然后,我们从每位患者的所有CT图像中随机抽取80%用于训练,10%用于验证,10%用于测试。我们的结果显示,在准确性方面,机器学习(83.4%)分别优于CRP(53.2%)、ESR(68.8%)和D-二聚体(68.1%)。同时,与CRP(50.6%)、ESR(73.0%)和D-二聚体(51.7%)相比,机器学习(88.0%)表现出最高的敏感性。在特异性方面,机器学习(77.0%)优于CRP(59.4%)和ESR(62.2%),但不如D-二聚体(83.8%)。我们的研究结果表明,基于CT图像的机器学习是检测四肢慢性创伤性骨髓炎的一种有效且有前景的方法。