Multimodal data classification using signal quality indices and empirical similarity-based reasoning

Man Xu, Jiang Shen, Haiyan Yu
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引用次数: 2

Abstract

All bedside monitors are prone to heterogeneity and mis-labeled data, yet each multimodal sample data contains different sets of multi-dimensional attributes. To reduce the incidence of false alarms in the Intensive Care Unit (ICU), a new interactive classifier was proposed. In the algorithm, case was represented with signal quality Indices(SQIs) and RR interval features. With the function wabp, the annotations were obtained from the target signal after preprocessing. Five features were used as the inputs to a case-based reasoning classifier, retrieving the cases with empirical similarity. With the posted 750 records of the PhysioNet/CinC 2015 Challenge, the classifier was trained for answering the alarm types of the query segments. Compared with conventional threshold-based alarm algorithms, the performance of our proposed algthom reduces the maximum number of false alarms while avoiding the suppression of true alarms. Evaluated with the hidden test dataset, both real-time and retrospective, the results show that the overall TPR is 83% and 82% respectively; and TNR 44% and 43% respectively. This algorithm offers a new way of thinking about retrieving heterogeneity patients with multimodal data and classifying the alarm types in the context of mis-labeled cases.
基于信号质量指标和经验相似度推理的多模态数据分类
所有床边监视器都容易出现数据的异质性和错误标记,然而每个多模态样本数据包含不同的多维属性集。为了降低重症监护病房(ICU)误报的发生率,提出了一种新的交互式分类器。在算法中,用信号质量指标(SQIs)和RR区间特征来表示case。利用wabp函数,对目标信号进行预处理后得到注释。五个特征被用作基于案例的推理分类器的输入,检索具有经验相似性的案例。利用发布的750条PhysioNet/CinC 2015挑战赛记录,训练分类器回答查询片段的报警类型。与传统的基于阈值的报警算法相比,我们提出的算法的性能降低了假报警的最大数量,同时避免了真报警的抑制。使用隐藏测试数据集进行实时和回顾性评估,结果表明,总体TPR分别为83%和82%;TNR分别为44%和43%。该算法为检索具有多模态数据的异质性患者以及在误标病例背景下对报警类型进行分类提供了一种新的思路。
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