期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
人工全膝关节置换后股骨假体角度的CT影像学评估:股骨外上髁线参照与间隙平衡技术的对比研究(英文) 被引量:2
1
作者 Shrinand V Vaidya Aditya V Maheshwari +3 位作者 Rajesh M Gadhiya vaibhav bagaria Amar S Ranawat Chitranjan S Ranawat 《中国矫形外科杂志》 CAS CSCD 北大核心 2008年第12期908-912,共5页
[目的]虽然人工全膝关节置换术中假体旋转定位的重要性已得到公认,但术中以哪条轴线为参照能够更加精确的保证股骨假体的旋转定位,目前尚存争议。研究表明股骨外上髁线(TEA)与膝关节屈曲轴线平行,但这一轴线术中难以精确确定。本文采用... [目的]虽然人工全膝关节置换术中假体旋转定位的重要性已得到公认,但术中以哪条轴线为参照能够更加精确的保证股骨假体的旋转定位,目前尚存争议。研究表明股骨外上髁线(TEA)与膝关节屈曲轴线平行,但这一轴线术中难以精确确定。本文采用间隙平衡技术(BG),对比TEA技术在股骨假体实际旋转角度测量的差异。[方法]30例人工全膝关节置换分为2组(每组15膝),分别采用TEA和BG技术,术后行CT扫描测量股骨假体旋转角度并行膝关节学会评分(KSS)。[结果]BG组中股骨假体平均外旋角度为2.7°±1.1°,TEA组为5.6°±1.6°(P=0.001)。术后KSS功能评分改善BG组高于TEA组(P=0.002),但两组的KSS膝评分无显著性差异(P=0.39)。[结论]研究表明,与BG技术相比,术中应用TEA参照确定股骨假体的旋转定位可导致股骨假体的过度外旋,其术后KSS功能评分亦较差。 展开更多
关键词 全膝关节置换 股骨假体旋转 外上髁线 间隙平衡技术 屈膝间隙技术 间隙张力技术 韧带平衡 软组织平衡
下载PDF
Evaluation of artificial intelligence models for osteoarthritis of the knee using deep learning algorithms for orthopedic radiographs
2
作者 Anjali Tiwari Murali Poduval vaibhav bagaria 《World Journal of Orthopedics》 2022年第6期603-614,共12页
BACKGROUND Deep learning,a form of artificial intelligence,has shown promising results for interpreting radiographs.In order to develop this niche machine learning(ML)program of interpreting orthopedic radiographs wit... BACKGROUND Deep learning,a form of artificial intelligence,has shown promising results for interpreting radiographs.In order to develop this niche machine learning(ML)program of interpreting orthopedic radiographs with accuracy,a project named deep learning algorithm for orthopedic radiographs was conceived.In the first phase,the diagnosis of knee osteoarthritis(KOA)as per the standard Kellgren-Lawrence(KL)scale in medical images was conducted using the deep learning algorithm for orthopedic radiographs.AIM To compare efficacy and accuracy of eight different transfer learning deep learning models for detecting the grade of KOA from a radiograph and identify the most appropriate ML-based model for the detecting grade of KOA.METHODS The study was performed on 2068 radiograph exams conducted at the Department of Orthopedic Surgery,Sir HN Reliance Hospital and Research Centre(Mumbai,India)during 2019-2021.Three orthopedic surgeons reviewed these independently,graded them for the severity of KOA as per the KL scale and settled disagreement through a consensus session.Eight models,namely ResNet50,VGG-16,InceptionV3,MobilnetV2,EfficientnetB7,DenseNet201,Xception and NasNetMobile,were used to evaluate the efficacy of ML in accurately classifying radiographs for KOA as per the KL scale.Out of the 2068 images,70%were used initially to train the model,10%were used subsequently to test the model,and 20%were used finally to determine the accuracy of and validate each model.The idea behind transfer learning for KOA grade image classification is that if the existing models are already trained on a large and general dataset,these models will effectively serve as generic models to fulfill the study’s objectives.Finally,in order to benchmark the efficacy,the results of the models were also compared to a first-year orthopedic trainee who independently classified these models according to the KL scale.RESULTS Our network yielded an overall high accuracy for detecting KOA,ranging from 54%to 93%.The most successful of these was the DenseNet model,with accuracy up to 93%;interestingly,it even outperformed the human first-year trainee who had an accuracy of 74%.CONCLUSION The study paves the way for extrapolating the learning using ML to develop an automated KOA classification tool and enable healthcare professionals with better decision-making. 展开更多
关键词 OSTEOARTHRITIS Artificial intelligence KNEE Computer vision Machine leaning Deep learning
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部