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Fracture prediction of cardiac lead medical devices using Bayesian networks

机译:使用贝叶斯网络的心导医疗器械的骨折预测

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摘要

A novel Bayesian network methodology has been developed to enable the prediction of fatigue fracture of cardiac lead medical devices. The methodology integrates in-vivo device loading measurements, patient demographics, patient activity level, in-vitro fatigue strength measurements, and cumulative damage modeling techniques. Many plausible combinations of these variables can be simulated within a Bayesian network framework to generate a family of fatigue fracture survival curves, enabling sensitivity analyses and the construction of confidence bounds on reliability predictions. The method was applied to the prediction of conductor fatigue fracture near the shoulder for two market-released cardiac defibrillation leads which had different product performance histories. The case study used recently published data describing the in-vivo curvature conditions and the in-vitro fatigue strength. The prediction results from the methodology aligned well with the observed qualitative ranking of field performance, as well as the quantitative field survival from fracture. This initial success suggests that study of further extension of this method to other medical device applications is warranted.
机译:已经开发了一种新颖的贝叶斯网络方法,以能够预测心脏导联医疗设备的疲劳断裂。该方法集成了体内设备负载测量,患者人口统计,患者活动水平,体外疲劳强度测量和累积损伤建模技术。可以在贝叶斯网络框架内模拟这些变量的许多合理组合,以生成一系列疲劳断裂生存曲线,从而可以进行敏感性分析并建立可靠性预测的置信界。该方法被用于预测两种具有不同产品性能历史的市场发布的心脏除颤导线在肩部附近的导体疲劳断裂。该案例研究使用了最近发表的描述体内曲率条件和体外疲劳强度的数据。该方法的预测结果与观察到的现场性能的定性排名以及裂缝产生的定量现场存活情况非常吻合。最初的成功表明,有必要进一步研究将该方法扩展到其他医疗设备应用。

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