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首页> 外文期刊>IEEE sensors journal >Towards Automatic and Fast Annotation of Seismocardiogram Signals Using Machine Learning
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Towards Automatic and Fast Annotation of Seismocardiogram Signals Using Machine Learning

机译:使用机器学习的自动和快速注释地震动脉造影信号

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The automatic annotation of Seismocardiogram (SCG) potentially aid to estimate various cardiac health parameters continuously. However, the inter-subject variability of SCG poses great difficulties to automate its accurate annotation. The objective of the research is to design SCG peak retrieval methods on the top of the ensemble features extracted from the SCG morphology for the automatic annotation of SCG signals. The annotation scheme is formulated as a binary classification problem. Three binary classifiers such as Naive Bayes (NB), Support Vector Machine (SVM), and Logistic Regression (LR) are employed for the annotation and the results are compared with the recent state-of-the-art schemes. The performance evaluation is carried out using 9000 SCG signals of 20 presumably healthy volunteers with no known serious cardiac abnormalities. The SCG signals are acquired from the Physionet public repository "cebsdb". The models are rigorously validated using metrics "Precision", "Recall", and "F-measure" followed by 5-fold cross-validation. The experimental validation with recent state-of-the-art solutions establishes the robustness of the proposed NB, SVM and LRwith average annotation accuracy of 0.86, 0.925 and 0.935, respectively. The mean response time of proposed models is in the fraction of 1/10 sec, which establishes its application for the real-time annotation.
机译:地震动脉造影(SCG)的自动注释可能有助于连续估计各种心脏健康参数。然而,SCG的主题间变异性造成巨大困难以自动化其准确的注释。该研究的目的是设计从SCG形态提取的集合功能顶部的SCG峰值检索方法,以便自动注释SCG信号。注释方案被制定为二进制分类问题。用于注释的三个二进制分类器如天真凸鲈(NB),支持向量机(SVM)和逻辑回归(LR),并将结果与​​最近的最先进的方案进行比较。使用9000个SCG信号进行的绩效评估,可能是一个可能的健康志愿者,没有已知的严重心脏异常。 SCG信号从PhysoioNet Public Repository“CEBSDB”中获取。使用度量“精度”,“召回”和“F-Measure”,然后使用5倍交叉验证,严格验证该模型。最近最先进的解决方案的实验验证建立了拟议的NB,SVM和LRWITH的稳健性,平均注释精度分别为0.86,0.925和0.935。所提出的模型的平均响应时间是1/10秒的分数,这建立了其应用于实时注释。

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