1Department of Neurosurgery, Baylor College of Medicine, Houston.
2Medical Scientist Training Program, Baylor College of Medicine, Houston, Texas; and.
J Neurosurg Spine. 2022 Dec 27;38(4):417-424. doi: 10.3171/2022.11.SPINE221009. Print 2023 Apr 1.
Knowledge of the manufacturer of the previously implanted pedicle screw systems prior to revision spinal surgery may facilitate faster and safer surgery. Often, this information is unavailable because patients are referred by other centers or because of missing information in the patients' records. Recently, machine learning and computer vision have gained wider use in clinical applications. The authors propose a computer vision approach to classify posterior thoracolumbar instrumentation systems.
Lateral and anteroposterior (AP) radiographs obtained in patients undergoing posterior thoracolumbar pedicle screw implantation for any indication at the authors' institution (2015-2021) were obtained. DICOM images were cropped to include both the pedicle screws and rods. Images were labeled with the manufacturer according to the operative record. Multiple feature detection methods were tested (SURF, MESR, and Minimum Eigenvalues); however, the bag-of-visual-words technique with KAZE feature detection was ultimately used to construct a computer vision support vector machine (SVM) classifier for lateral, AP, and fused lateral and AP images. Accuracy was tested using an 80%/20% training/testing pseudorandom split over 100 iterations. Using a reader study, the authors compared the model performance with the current practice of surgeons and manufacturer representatives identifying spinal hardware by visual inspection.
Among the three image types, 355 lateral, 379 AP, and 338 fused radiographs were obtained. The five pedicle screw implants included in this study were the Globus Medical Creo, Medtronic Solera, NuVasive Reline, Stryker Xia, and DePuy Expedium. When the two most common manufacturers used at the authors' institution were binarily classified (Globus Medical and Medtronic), the accuracy rates for lateral, AP, and fused images were 93.15% ± 4.06%, 88.98% ± 4.08%, and 91.08% ± 5.30%, respectively. Classification accuracy decreased by approximately 10% with each additional manufacturer added. The multilevel five-way classification accuracy rates for lateral, AP, and fused images were 64.27% ± 5.13%, 60.95% ± 5.52%, and 65.90% ± 5.14%, respectively. In the reader study, the model performed five-way classification on 100 test images with 79% accuracy in 14 seconds, compared with an average of 44% accuracy in 20 minutes for two surgeons and three manufacturer representatives.
The authors developed a KAZE feature detector with an SVM classifier that successfully identified posterior thoracolumbar hardware at five-level classification. The model performed more accurately and efficiently than the method currently used in clinical practice. The relative computational simplicity of this model, from input to output, may facilitate future prospective studies in the clinical setting.
在进行翻修脊柱手术之前,了解先前植入的椎弓根螺钉系统的制造商,可能有助于手术更快、更安全。通常,由于患者是由其他中心转介的,或者由于患者病历中缺少信息,因此无法获得这些信息。最近,机器学习和计算机视觉在临床应用中得到了更广泛的应用。作者提出了一种计算机视觉方法来对胸腰椎后路内固定系统进行分类。
获取了作者机构(2015-2021 年)对任何适应证进行后路胸腰椎椎弓根螺钉植入术的患者的侧位和前后位(AP)X 线片。DICOM 图像被裁剪以包含椎弓根螺钉和棒。根据手术记录对图像进行制造商标记。测试了多种特征检测方法(SURF、MESR 和最小特征值);然而,最终使用 KAZE 特征检测的视觉词袋技术来构建用于侧位、AP 和融合侧位和 AP 图像的计算机视觉支持向量机(SVM)分类器。使用 100 次迭代的 80%/20%训练/测试伪随机分割来测试准确性。通过读者研究,作者将模型性能与外科医生和制造商代表通过视觉检查识别脊柱硬件的当前实践进行了比较。
在这三种图像类型中,获得了 355 张侧位、379 张 AP 和 338 张融合 X 光片。本研究包括的五种椎弓根螺钉植入物为:Globus Medical Creo、Medtronic Solera、NuVasive Reline、Stryker Xia 和 DePuy Expedium。当作者机构最常使用的两种制造商(Globus Medical 和 Medtronic)进行二进制分类时,侧位、AP 和融合图像的准确率分别为 93.15%±4.06%、88.98%±4.08%和 91.08%±5.30%。随着添加的制造商数量增加,分类准确率降低了约 10%。侧位、AP 和融合图像的五级分类准确率分别为 64.27%±5.13%、60.95%±5.52%和 65.90%±5.14%。在读者研究中,该模型在 100 张测试图像上进行了五级分类,准确率为 79%,用时 14 秒,而两名外科医生和三名制造商代表的平均准确率为 44%,用时 20 分钟。
作者开发了一种 KAZE 特征检测器和 SVM 分类器,成功地对五水平分类的胸腰椎后路硬件进行了识别。该模型的准确性和效率均高于临床实践中目前使用的方法。与输入到输出的相对计算简单性,可能有助于未来在临床环境中进行前瞻性研究。