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Wear Scar Similarities between Retrieved and Simulator-Tested Polyethylene TKR Components: An Artificial Neural Network Approach

机译:回收和模拟器测试的聚乙烯TKR组件之间的磨损痕迹相似:一种人工神经网络方法

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摘要

The aim of this study was to determine how representative wear scars of simulator-tested polyethylene (PE) inserts compare with retrieved PE inserts from total knee replacement (TKR). By means of a nonparametric self-organizing feature map (SOFM), wear scar images of 21 postmortem- and 54 revision-retrieved components were compared with six simulator-tested components that were tested either in displacement or in load control according to ISO protocols. The SOFM network was then trained with the wear scar images of postmortem-retrieved components since those are considered well-functioning at the time of retrieval. Based on this training process, eleven clusters were established, suggesting considerable variability among wear scars despite an uncomplicated loading history inside their hosts. The remaining components (revision-retrieved and simulator-tested) were then assigned to these established clusters. Six out of five simulator components were clustered together, suggesting that the network was able to identify similarities in loading history. However, the simulator-tested components ended up in a cluster at the fringe of the map containing only 10.8% of retrieved components. This may suggest that current ISO testing protocols were not fully representative of this TKR population, and protocols that better resemble patients' gait after TKR containing activities other than walking may be warranted.
机译:这项研究的目的是确定经过模拟器测试的聚乙烯(PE)插入物与从全膝关节置换(TKR)检索到的PE插入物相比具有代表性的磨损痕迹。通过非参数自组织特征图(SOFM),将21个验尸和54个修订版本修复的组件的磨损痕迹图像与六个模拟器测试的组件进行了比较,这些组件根据ISO协议进行了位移或负载控制测试。然后对SOFM网络进行了事后回收的部件的磨损痕迹图像训练,因为这些部件在检索时被认为功能良好。根据该训练过程,建立了11个簇,这表明尽管磨损痕迹的寄主内部并不复杂,但磨损痕迹之间的差异却很大。然后将其余组件(经过修订的版本和经过模拟器测试的)分配给这些已建立的集群。五个模拟器组件中有六个被聚在一起,这表明该网络能够识别加载历史记录中的相似之处。但是,经过模拟器测试的组件最终位于地图边缘的群集中,仅包含10.8%的检索到的组件。这可能表明当前的ISO测试规程不能完全代表该TKR人群,并且可能需要保证在TKR包含除行走以外的活动后更能模仿患者步态的规程。

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