Department of Orthopedics, Huaqiao University Affiliated Strait Hospital, Quanzhou, Fujian 362000, China.
Department of Medical Examination Center, Huaqiao University Affiliated Strait Hospital, Quanzhou, Fujian 362000, China.
Comput Math Methods Med. 2022 Jun 6;2022:3796202. doi: 10.1155/2022/3796202. eCollection 2022.
In order to reduce the subjectivity of preoperative diagnosis and achieve accurate and rapid classification of idiopathic scoliosis and thereby improving the standardization and automation of spinal surgery diagnosis, we implement the Faster R-CNN and ResNet to classify patient spine images. In this paper, the images are based on spine X-ray imaging obtained by our radiology department. We compared the results with the orthopedic surgeon's measurement results for verification and analysis and finally presented the grading results for performance evaluation. The final experimental results can meet the clinical needs, and a fast and robust deep learning-based scoliosis diagnosis algorithm for scoliosis can be achieved without manual intervention using the X-ray scans. This can give rise to a computerized-assisted scoliosis diagnosis based on X-ray imaging, which has strong potential in clinical utility applied to the field of orthopedics.
为了减少术前诊断的主观性,实现特发性脊柱侧凸的准确快速分类,从而提高脊柱手术诊断的标准化和自动化程度,我们使用 Faster R-CNN 和 ResNet 对患者脊柱图像进行分类。在本文中,图像基于我们放射科获得的脊柱 X 射线成像。我们将结果与骨科医生的测量结果进行比较,进行验证和分析,最终给出分级结果以进行性能评估。最终的实验结果可以满足临床需求,无需人工干预即可使用 X 射线扫描实现快速、稳健的基于深度学习的脊柱侧凸诊断算法。这可以为基于 X 射线成像的计算机辅助脊柱侧凸诊断提供依据,在骨科领域具有很强的临床应用潜力。