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Hyperparameter Tuning of the Shunt-murmur Discrimination Algorithm Using Bayesian optimization

机译:使用贝叶斯优化分流杂音鉴别算法的封锁率调整

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Patients undergoing hemodialysis generally have shunts implanted in their bodies; a number of other problems, such as vascular stenosis, can be encountered. Patients undergoing hemodialysis can inspect the effective functioning of their shunts by listening to the shunt murmur. However, this manual inspection is difficult and requires experience. In this paper, we propose a method of exploring the hyperparameters of the shunt-murmur discrimination algorithm using Bayesian optimization. The resistance index(RI) obtained from the ultrasound system is used as a class label. The normalized crosscorrelation coefficients, Mel frequency cepstrum coefficients, and frequency power percentage were the features to be trained by a random forest (RF). Bayesian optimization was used to explore the hyperparameters of the RF, achieving a significant accuracy improvement.
机译:接受血液透析的患者通常在其身体中分流;可以遇到许多其他问题,例如血管狭窄。经过血液透析的患者可以通过听他们的杂音来检查他们分流的有效运作。但是,本手动检查很困难,需要经验。在本文中,我们提出了一种利用贝叶斯优化探索分流杂音鉴别算法的普遍开心的方法。从超声系统获得的电阻指数(RI)用作类标签。归一化的跨相关系数,MEL频率谱系数和频率功率百分比是随机森林(RF)训练的特征。贝叶斯优化用于探索RF的近似数目,实现了显着的准确性改进。

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