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在随机森林学习方法中使用不同概率和分类分配方法减少错误心律失常警报

Reducing False Arrhythmia Alarms Using Different Methods of Probability and Class Assignment in Random Forest Learning Methods.

作者信息

Gajowniczek Krzysztof, Grzegorczyk Iga, Ząbkowski Tomasz

机构信息

Department of Informatics, Faculty of Applied Informatics and Mathematics, Warsaw University of Life Sciences SGGW, 02-776 Warsaw, Poland.

Department of Physics of Complex Systems, Faculty of Physics, Warsaw University of Technology, 00-662 Warsaw, Poland.

出版信息

Sensors (Basel). 2019 Apr 2;19(7):1588. doi: 10.3390/s19071588.

Abstract

The literature indicates that 90% of clinical alarms in intensive care units might be false. This high percentage negatively impacts both patients and clinical staff. In patients, false alarms significantly increase stress levels, which is especially dangerous for cardiac patients. In clinical staff, alarm overload might lead to desensitization and could result in true alarms being ignored. In this work, we applied the random forest method to reduce false arrhythmia alarms and specifically explored different methods of probability and class assignment, as these affect the classification accuracy of the ensemble classifiers. Due to the complex nature of the problem, i.e., five types of arrhythmia and several methods to determine probability and the alarm class, a synthetic measure based on the ranks was proposed. The novelty of this contribution is the design of a synthetic measure that helps to leverage classification results in an ensemble model that indicates a decision path leading to the best result in terms of the area under the curve (AUC) measure or the global accuracy (score). The results of the research are promising. The best performance in terms of the AUC was 100% accuracy for extreme tachycardia, whereas the poorest results were for ventricular tachycardia at 87%. Similarly, in terms of the accuracy, the best results were observed for extreme tachycardia (91%), whereas ventricular tachycardia alarms were the most difficult to detect, with an accuracy of only 51%.

摘要

文献表明,重症监护病房中90%的临床警报可能是误报。如此高的比例对患者和临床工作人员均产生了负面影响。对患者而言,误报会显著增加压力水平,这对心脏病患者尤为危险。对临床工作人员来说,警报过载可能导致脱敏,进而可能导致真正的警报被忽视。在这项工作中,我们应用随机森林方法来减少心律失常误报,并特别探索了概率和类别分配的不同方法,因为这些会影响集成分类器的分类准确性。由于问题的复杂性,即五种心律失常类型以及几种确定概率和警报类别的方法,我们提出了一种基于排名的综合度量。这项贡献的新颖之处在于设计了一种综合度量,有助于在集成模型中利用分类结果,该模型能根据曲线下面积(AUC)度量或全局准确性(分数)指出通向最佳结果的决策路径。研究结果很有前景。就AUC而言,极端心动过速的最佳性能准确率为100%,而最差的结果是室性心动过速,为87%。同样,就准确性而言,极端心动过速的结果最佳(91%),而室性心动过速警报最难检测,准确率仅为51%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fd95/6479538/c56ad760c434/sensors-19-01588-g0A1.jpg

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