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与手动技术相比,基于深度学习的胫骨后倾斜率测量具有更高的可靠性和时间效率。

Enhanced reliability and time efficiency of deep learning-based posterior tibial slope measurement over manual techniques.

作者信息

Yao Shang-Yu, Zhang Xue-Zhi, Podder Soumyajit, Wu Chen-Te, Chan Yi-Shen, Berco Dan, Yang Cheng-Pang

机构信息

Department of Orthopedic Surgery, Linkou Chang Gung Memorial Hospital, Taoyuan City, Taiwan.

Engineering Product Development, Singapore University of Technology and Design, Tampines, Singapore.

出版信息

Knee Surg Sports Traumatol Arthrosc. 2025 Jan;33(1):59-69. doi: 10.1002/ksa.12241. Epub 2024 May 26.

Abstract

PURPOSE

Multifaceted factors contribute to inferior outcomes following anterior cruciate ligament (ACL) reconstruction surgery. A particular focus is placed on the posterior tibial slope (PTS). This study introduces the integration of machine learning and artificial intelligence (AI) for efficient measurements of tibial slopes on magnetic resonance imaging images as a promising solution. This advancement aims to enhance risk stratification, diagnostic insights, intervention prognosis and surgical planning for ACL injuries.

METHODS

Images and demographic information from 120 patients who underwent ACL reconstruction surgery were used for this study. An AI-driven model was developed to measure the posterior lateral tibial slope using the YOLOv8 algorithm. The accuracy of the lateral tibial slope, medial tibial slope and tibial longitudinal axis measurements was assessed, and the results reached high levels of reliability. This study employed machine learning and AI techniques to provide objective, consistent and efficient measurements of tibial slopes on MR images.

RESULTS

Three distinct models were developed to derive AI-based measurements. The study results revealed a substantial correlation between the measurements obtained from the AI models and those obtained by the orthopaedic surgeon across three parameters: lateral tibial slope, medial tibial slope and tibial longitudinal axis. Specifically, the Pearson correlation coefficients were 0.673, 0.850 and 0.839, respectively. The Spearman rank correlation coefficients were 0.736, 0.861 and 0.738, respectively. Additionally, the interclass correlation coefficients were 0.63, 0.84 and 0.84, respectively.

CONCLUSION

This study establishes that the deep learning-based method for measuring posterior tibial slopes strongly correlates with the evaluations of expert orthopaedic surgeons. The time efficiency and consistency of this technique suggest its utility in clinical practice, promising to enhance workflow, risk assessment and the customization of patient treatment plans.

LEVEL OF EVIDENCE

Level III, cross-sectional diagnostic study.

摘要

目的

多方面因素导致前交叉韧带(ACL)重建手术后结果不佳。其中特别关注的是胫骨后倾(PTS)。本研究引入机器学习和人工智能(AI)技术,以便在磁共振成像(MRI)图像上高效测量胫骨倾斜度,这是一种很有前景的解决方案。这一进展旨在改善ACL损伤的风险分层、诊断见解、干预预后和手术规划。

方法

本研究使用了120例行ACL重建手术患者的图像和人口统计学信息。开发了一种由AI驱动的模型,使用YOLOv8算法测量胫骨后外侧倾斜度。评估了胫骨外侧倾斜度、内侧倾斜度和胫骨纵轴测量的准确性,结果达到了较高的可靠性水平。本研究采用机器学习和AI技术,以在MRI图像上提供客观、一致且高效的胫骨倾斜度测量。

结果

开发了三种不同的模型来进行基于AI的测量。研究结果显示,AI模型获得的测量值与骨科医生获得的测量值在三个参数上存在显著相关性:胫骨外侧倾斜度、内侧倾斜度和胫骨纵轴。具体而言,皮尔逊相关系数分别为0.673、0.850和0.839。斯皮尔曼等级相关系数分别为0.736、0.861和0.738。此外,组内相关系数分别为0.63、0.84和0.84。

结论

本研究证实,基于深度学习的测量胫骨后倾的方法与骨科专家的评估密切相关。该技术的时间效率和一致性表明其在临床实践中的实用性,有望改善工作流程、风险评估以及患者治疗方案的定制。

证据水平

III级,横断面诊断研究。

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