机器学习比外科医生更擅长评估单室膝关节置换术的x光片

IF 1.6 4区 医学 Q3 ORTHOPEDICS
Knee Pub Date : 2024-11-30 DOI:10.1016/j.knee.2024.11.007
S Jack Tu , Sara Kendrick , Karthik Saravanan , Christopher Dodd , David W Murray , Stephen J Mellon
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引用次数: 0

摘要

背景:单室膝关节置换术(UKR)后偶尔会出现不良结果。即使是经验丰富的外科医生,也很难从x光片中确定患者预后不良的原因。目的是比较经验丰富的外科医生和机器学习的能力,以预测患者的x光片结果是差还是好。方法:使用924张一年的ukr后前后位x线片,基于他们一年的牛津膝关节评分分类,使用迁移学习方法训练机器学习模型(ResNet50v2)。两名经验丰富的外科医生和模型对70张x线片进行了评估和分类(14张评分差;(56)优秀成绩)不用于培训,根据他们的预期结果。结果:ResNet50v2模型正确识别了71% (n = 10)评分差的患者和46(82%)评分优的患者。相比之下,一名外科医生无法识别评分较差的患者(0%),另一名外科医生识别出评分较差的患者(7%)。两家公司都错认了成绩优异的3名学生。模型可视化方法表明,根据植入物周围的图像特征进行估计分类。结论:结果提示存在与预后不良相关的影像学特征,而这些特征是外科医生所不知道的。那些模型没有识别的患者可能有关节外的原因导致他们的不良结果。进一步分析以确定与不良结果相关的特征,可能会提出改进指征或技术的方法,以减少不良结果的发生率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning is better than surgeons at assessing unicompartmental knee replacement radiographs

Background:

Poor results occasionally occur after unicompartmental knee replacement (UKR). It is often difficult, even for experienced surgeons, to determine why patients have poor outcomes from radiographs. The aim was to compare the ability of experienced surgeons and machine learning to predict whether patients had poor or excellent outcomes from radiographs.

Methods:

924 one-year anterior-posterior radiographs post-UKR were used to train a machine learning model (ResNet50v2) with a transfer learning approach based on their one-year Oxford Knee Score categories. Two experienced surgeons and the model assessed and categorised 70 radiographs (14 Poor scores; 56 Excellent scores) not used for training according to their expected outcome.

Results:

The ResNet50v2 model correctly identified 71% (n = 10) of the patients with a poor score and 46 (82%) of those with an excellent score. In contrast, one surgeon could not identify patients with Poor scores (0%) and the other identified one (7%). Both misidentified 3 of those with Excellent scores. The model visualisation method suggested that estimated classifications were made from image features around the implants.

Conclusion:

The results suggest that there are radiographical features that relate to poor outcomes, which the surgeons are unaware of. Those the model did not identify may have an extra-articular cause for their poor outcome. Further analysis to identify the features associated with poor outcomes could potentially suggest ways that indications or techniques could be improved so as to decrease the incidence of poor results.
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来源期刊
Knee
Knee 医学-外科
CiteScore
3.80
自引率
5.30%
发文量
171
审稿时长
6 months
期刊介绍: The Knee is an international journal publishing studies on the clinical treatment and fundamental biomechanical characteristics of this joint. The aim of the journal is to provide a vehicle relevant to surgeons, biomedical engineers, imaging specialists, materials scientists, rehabilitation personnel and all those with an interest in the knee. The topics covered include, but are not limited to: • Anatomy, physiology, morphology and biochemistry; • Biomechanical studies; • Advances in the development of prosthetic, orthotic and augmentation devices; • Imaging and diagnostic techniques; • Pathology; • Trauma; • Surgery; • Rehabilitation.
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