Department of Orthopaedic Surgery, Chiba University Graduate School of Medicine, 1-8-1 Inohana, Chuou-Ku, Chiba, 260-8670, Japan.
Center for Frontier Medical Engineering, Chiba University, Chiba, Japan.
Sci Rep. 2022 Oct 3;12(1):16549. doi: 10.1038/s41598-022-20996-w.
The emergency department is an environment with a potential risk for diagnostic errors during trauma care, particularly for fractures. Convolutional neural network (CNN) deep learning methods are now widely used in medicine because they improve diagnostic accuracy, decrease misinterpretation, and improve efficiency. In this study, we investigated whether automatic localization and classification using CNN could be applied to pelvic, rib, and spine fractures. We also examined whether this fracture detection algorithm could help physicians in fracture diagnosis. A total of 7664 whole-body CT axial slices (chest, abdomen, pelvis) from 200 patients were used. Sensitivity, precision, and F1-score were calculated to evaluate the performance of the CNN model. For the grouped mean values for pelvic, spine, or rib fractures, the sensitivity was 0.786, precision was 0.648, and F1-score was 0.711. Moreover, with CNN model assistance, surgeons showed improved sensitivity for detecting fractures and the time of reading and interpreting CT scans was reduced, especially for less experienced orthopedic surgeons. Application of the CNN model may lead to reductions in missed fractures from whole-body CT images and to faster workflows and improved patient care through efficient diagnosis in polytrauma patients.
急诊科是一个存在潜在诊断错误风险的环境,尤其是在创伤护理中。卷积神经网络(CNN)深度学习方法现在在医学中得到了广泛应用,因为它们可以提高诊断准确性、减少误解并提高效率。在这项研究中,我们研究了是否可以将使用 CNN 的自动定位和分类应用于骨盆、肋骨和脊柱骨折。我们还检查了这种骨折检测算法是否可以帮助医生进行骨折诊断。共使用了 200 名患者的 7664 张全身 CT 轴位切片(胸部、腹部、骨盆)。计算了敏感性、精度和 F1 分数,以评估 CNN 模型的性能。对于骨盆、脊柱或肋骨骨折的分组平均值,敏感性为 0.786,精度为 0.648,F1 分数为 0.711。此外,在 CNN 模型的辅助下,外科医生在检测骨折方面的敏感性得到了提高,并且阅读和解释 CT 扫描的时间也减少了,尤其是对于经验较少的骨科医生。应用 CNN 模型可能会减少全身 CT 图像中漏诊的骨折,并通过对多发伤患者进行有效的诊断来加快工作流程并改善患者护理。