YOLOX-SwinT algorithm improves the accuracy of AO/OTA classification of intertrochanteric fractures by orthopedic trauma surgeons

IF 1.9 4区 医学 Q2 ORTHOPEDICS Chinese Journal of Traumatology Pub Date : 2025-01-01 DOI:10.1016/j.cjtee.2024.04.002
Xue-Si Liu , Rui Nie , Ao-Wen Duan , Li Yang , Xiang Li , Le-Tian Zhang , Guang-Kuo Guo , Qing-Shan Guo , Dong-Chu Zhao , Yang Li , He-Hua Zhang
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Abstract

Purpose

Intertrochanteric fracture (ITF) classification is crucial for surgical decision-making. However, orthopedic trauma surgeons have shown lower accuracy in ITF classification than expected. The objective of this study was to utilize an artificial intelligence (AI) method to improve the accuracy of ITF classification.

Methods

We trained a network called YOLOX-SwinT, which is based on the You Only Look Once X (YOLOX) object detection network with Swin Transformer (SwinT) as the backbone architecture, using 762 radiographic ITF examinations as the training set. Subsequently, we recruited 5 senior orthopedic trauma surgeons (SOTS) and 5 junior orthopedic trauma surgeons (JOTS) to classify the 85 original images in the test set, as well as the images with the prediction results of the network model in sequence. Statistical analysis was performed using the SPSS 20.0 (IBM Corp., Armonk, NY, USA) to compare the differences among the SOTS, JOTS, SOTS + AI, JOTS + AI, SOTS + JOTS, and SOTS + JOTS + AI groups. All images were classified according to the AO/OTA 2018 classification system by 2 experienced trauma surgeons and verified by another expert in this field. Based on the actual clinical needs, after discussion, we integrated 8 subgroups into 5 new subgroups, and the dataset was divided into training, validation, and test sets by the ratio of 8:1:1.

Results

The mean average precision at the intersection over union (IoU) of 0.5 (mAP50) for subgroup detection reached 90.29%. The classification accuracy values of SOTS, JOTS, SOTS + AI, and JOTS + AI groups were 56.24% ± 4.02%, 35.29% ± 18.07%, 79.53% ± 7.14%, and 71.53% ± 5.22%, respectively. The paired t-test results showed that the difference between the SOTS and SOTS + AI groups was statistically significant, as well as the difference between the JOTS and JOTS + AI groups, and the SOTS + JOTS and SOTS + JOTS + AI groups. Moreover, the difference between the SOTS + JOTS and SOTS + JOTS + AI groups in each subgroup was statistically significant, with all p < 0.05. The independent samples t-test results showed that the difference between the SOTS and JOTS groups was statistically significant, while the difference between the SOTS + AI and JOTS + AI groups was not statistically significant. With the assistance of AI, the subgroup classification accuracy of both SOTS and JOTS was significantly improved, and JOTS achieved the same level as SOTS.

Conclusion

In conclusion, the YOLOX-SwinT network algorithm enhances the accuracy of AO/OTA subgroups classification of ITF by orthopedic trauma surgeons.
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YOLOX-SwinT 算法提高了创伤骨科医生对转子间骨折进行 AO/OTA 分类的准确性
目的转子间骨折(ITF)的分型对手术决策具有重要意义。然而,骨科创伤外科医生对ITF分类的准确性低于预期。本研究的目的是利用人工智能(AI)方法提高ITF分类的准确性。方法基于You Only Look Once X (YOLOX)目标检测网络,以Swin Transformer (SwinT)为骨干架构,以762张放射成像ITF检查作为训练集,训练了一个名为YOLOX-SwinT的网络。随后,我们招募了5名高级骨科创伤外科医生(SOTS)和5名初级骨科创伤外科医生(JOTS),对测试集中的85张原始图像进行分类,并对网络模型预测结果的图像进行排序。采用SPSS 20.0 (IBM Corp., Armonk, NY, USA)对SOTS、JOTS、SOTS + AI、JOTS + AI、SOTS + JOTS、SOTS + JOTS、SOTS + JOTS、SOTS + JOTS + AI组进行统计学分析。所有图像由2名经验丰富的创伤外科医生根据AO/OTA 2018分类系统进行分类,并由该领域的另一位专家进行验证。根据临床实际需要,经过讨论,我们将8个亚组整合为5个新的亚组,并将数据集按8:1:1的比例划分为训练集、验证集和测试集。结果亚组检测的平均IoU (mAP50)为0.5,平均精度为90.29%。SOTS组、JOTS组、SOTS + AI组和JOTS + AI组的分类准确率分别为56.24%±4.02%、35.29%±18.07%、79.53%±7.14%和71.53%±5.22%。配对t检验结果显示,SOTS组与SOTS + AI组、JOTS组与JOTS + AI组、SOTS + JOTS组与SOTS + JOTS + AI组差异均有统计学意义。SOTS + JOTS组与SOTS + JOTS + AI组各亚组间差异均有统计学意义,p <;0.05. 独立样本t检验结果显示,SOTS组与JOTS组之间差异有统计学意义,而SOTS + AI组与JOTS + AI组之间差异无统计学意义。在人工智能的辅助下,SOTS和JOTS的子组分类精度都得到了显著提高,JOTS达到了与SOTS相同的水平。结论YOLOX-SwinT网络算法提高了骨科创伤外科医师对ITF进行AO/OTA亚群分类的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.80
自引率
4.80%
发文量
1707
审稿时长
28 weeks
期刊介绍: Chinese Journal of Traumatology (CJT, ISSN 1008-1275) was launched in 1998 and is a peer-reviewed English journal authorized by Chinese Association of Trauma, Chinese Medical Association. It is multidisciplinary and designed to provide the most current and relevant information for both the clinical and basic research in the field of traumatic medicine. CJT primarily publishes expert forums, original papers, case reports and so on. Topics cover trauma system and management, surgical procedures, acute care, rehabilitation, post-traumatic complications, translational medicine, traffic medicine and other related areas. The journal especially emphasizes clinical application, technique, surgical video, guideline, recommendations for more effective surgical approaches.
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