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基于人工智能利用足部正位X线片诊断踇趾中间关节外翻

Artificial intelligence-based diagnosis of hallux valgus interphalangeus using anteroposterior foot radiographs.

作者信息

Kwolek Konrad, Gądek Artur, Kwolek Kamil, Lechowska-Liszka Agnieszka, Malczak Michał, Liszka Henryk

机构信息

Department of Orthopedics and Traumatology, University Hospital, Kraków 30-688, Małopolska, Poland.

Department of Orthopedics and Physiotherapy, Jagiellonian University Collegium Medicum, Kraków 30-688, Małopolska, Poland.

出版信息

World J Orthop. 2025 Jun 18;16(6):103832. doi: 10.5312/wjo.v16.i6.103832.

DOI:10.5312/wjo.v16.i6.103832
PMID:40547248
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC12179893/
Abstract

BACKGROUND

A recently developed method enables automated measurement of the hallux valgus angle (HVA) and the first intermetatarsal angle (IMA) from weight-bearing foot radiographs. This approach employs bone segmentation to identify anatomical landmarks and provides standardized angle measurements based on established guidelines. While effective for HVA and IMA, preoperative radiograph analysis remains complex and requires additional measurements, such as the hallux interphalangeal angle (IPA), which has received limited research attention.

AIM

To expand the previous method, which measured HVA and IMA, by incorporating the automatic measurement of IPA, evaluating its accuracy and clinical relevance.

METHODS

A preexisting database of manually labeled foot radiographs was used to train a U-Net neural network for segmenting bones and identifying landmarks necessary for IPA measurement. Of the 265 radiographs in the dataset, 161 were selected for training and 20 for validation. The U-Net neural network achieves a high mean Sørensen-Dice index (> 0.97). The remaining 84 radiographs were used to assess the reliability of automated IPA measurements against those taken manually by two orthopedic surgeons (O and O) using computer-based tools. Each measurement was repeated to assess intraobserver (O and O) and interobserver (O and O) reliability. Agreement between automated and manual methods was evaluated using the Intraclass Correlation Coefficient (ICC), and Bland-Altman analysis identified systematic differences. Standard error of measurement (SEM) and Pearson correlation coefficients quantified precision and linearity, and measurement times were recorded to evaluate efficiency.

RESULTS

The artificial intelligence (AI)-based system demonstrated excellent reliability, with ICC3.1 values of 0.92 (AI O) and 0.88 (AI O), both statistically significant ( < 0.001). For manual measurements, ICC values were 0.95 (O O) and 0.95 (O O), supporting both intraobserver and interobserver reliability. Bland-Altman analysis revealed minimal biases of: (1) 1.61° (AI O); and (2) 2.54° (AI O), with clinically acceptable limits of agreement. The AI system also showed high precision, as evidenced by low SEM values: (1) 1.22° (O O); (2) 1.77° (AI O); and (3) 2.09° (AI O). Furthermore, Pearson correlation coefficients confirmed strong linear relationships between automated and manual measurements, with = 0.85 (AI O) and = 0.90 (AI O). The AI method significantly improved efficiency, completing all 84 measurements 8 times faster than manual methods, reducing the time required from an average 36 minutes to just 4.5 minutes.

CONCLUSION

The proposed AI-assisted IPA measurement method shows strong clinical potential, effectively corresponding with manual measurements. Integrating IPA with HVA and IMA assessments provides a comprehensive tool for automated forefoot deformity analysis, supporting hallux valgus severity classification and preoperative planning, while offering substantial time savings in high-volume clinical settings.

摘要

背景

最近开发的一种方法能够从负重足部X光片中自动测量拇外翻角(HVA)和第一跖骨间角(IMA)。该方法采用骨分割来识别解剖标志,并根据既定指南提供标准化的角度测量。虽然对HVA和IMA有效,但术前X光片分析仍然复杂,需要进行额外测量,如拇趾间关节角(IPA),而这方面的研究关注有限。

目的

通过纳入IPA的自动测量、评估其准确性和临床相关性,扩展之前测量HVA和IMA的方法。

方法

使用一个预先存在的手动标注足部X光片数据库来训练一个U-Net神经网络,用于分割骨骼并识别IPA测量所需的标志。数据集中的265张X光片中,161张用于训练,20张用于验证。U-Net神经网络实现了较高的平均索伦森-戴斯指数(>0.97)。其余84张X光片用于评估自动IPA测量相对于两名骨科医生(O1和O2)使用基于计算机的工具手动测量的可靠性。每次测量都重复进行,以评估观察者内(O1和O2)和观察者间(O1和O2)的可靠性。使用组内相关系数(ICC)评估自动和手动方法之间的一致性,Bland-Altman分析确定系统差异。测量标准误差(SEM)和皮尔逊相关系数量化精度和线性,并记录测量时间以评估效率。

结果

基于人工智能(AI)的系统显示出出色的可靠性,ICC3,1值分别为0.92(AI与O1)和0.88(AI与O2),均具有统计学意义(P<0.001)。对于手动测量,ICC值分别为0.95(O1与O2)和0.95(O1与O2),支持观察者内和观察者间的可靠性。Bland-Altman分析显示偏差极小:(1)1.61°(AI与O1);(2)2.54°(AI与O2),一致性界限在临床可接受范围内。AI系统还显示出高精度,低SEM值证明了这一点:(1)1.22°(O1与O2);(2)1.77°(AI与O1);(3)2.09°(AI与O2)。此外,皮尔逊相关系数证实了自动和手动测量之间的强线性关系,r值分别为0.85(AI与O1)和0.90(AI与O2)。AI方法显著提高了效率,完成所有84次测量的速度比手动方法快8倍,将所需时间从平均36分钟减少到仅4.5分钟。

结论

所提出的AI辅助IPA测量方法显示出强大的临床潜力,与手动测量有效对应。将IPA与HVA和IMA评估相结合,为自动前足畸形分析提供了一个全面的工具,支持拇外翻严重程度分类和术前规划,同时在高容量临床环境中节省大量时间。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/8c5d1f5c6349/wjo-16-6-103832-g007.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/e44baf81fa34/wjo-16-6-103832-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/bd2bbd0e7f61/wjo-16-6-103832-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/e033a104718d/wjo-16-6-103832-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/21905539fa86/wjo-16-6-103832-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/a138aa88ff0c/wjo-16-6-103832-g005.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/8c5d1f5c6349/wjo-16-6-103832-g007.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/e44baf81fa34/wjo-16-6-103832-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/bd2bbd0e7f61/wjo-16-6-103832-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/e033a104718d/wjo-16-6-103832-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/21905539fa86/wjo-16-6-103832-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/a138aa88ff0c/wjo-16-6-103832-g005.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f896/12179893/8c5d1f5c6349/wjo-16-6-103832-g007.jpg

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