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FRACTURE PREDICTION OF CARDIAC LEAD MEDICAL DEVICES USING BAYESIAN NETWORKS

机译:贝叶斯网络的心脏铅医疗器械断裂预测

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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 measurements of device loading, patient demographics, patient activity level, in-vitro measurements of fatigue strength, 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 survival.
机译:已经开发出一种新颖的贝叶斯网络方法,以实现心脏铅医疗装置的疲劳骨折预测。该方法集成了器件加载,患者人口统计学,患者活动水平,体外测量的疲劳强度和累积损伤模拟技术的体内测量。这些变量的许多合理的组合可以在贝叶斯网络框架内模拟,以产生一系列疲劳骨折生存曲线,从而实现敏感性分析和存活率上的信心范围的构建。

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