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The PhysioNet/Computing in Cardiology Challenge 2015: Reducing False Arrhythmia Alarms in the ICU

机译:2015年心脏病学中的PhysioNet /计算:减少ICU中的错误心律失常警报

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摘要

High false alarm rates in the ICU decrease quality of care by slowing staff response times while increasing patient delirium through noise pollution. The 2015 Physio-Net/Computing in Cardiology Challenge provides a set of 1,250 multi-parameter ICU data segments associated with critical arrhythmia alarms, and challenges the general research community to address the issue of false alarm suppression using all available signals. Each data segment was 5 minutes long (for real time analysis), ending at the time of the alarm. For retrospective analysis, we provided a further 30 seconds of data after the alarm was triggered.A collection of 750 data segments was made available for training and a set of 500 was held back for testing. Each alarm was reviewed by expert annotators, at least two of whom agreed that the alarm was either true or false. Challenge participants were invited to submit a complete, working algorithm to distinguish true from false alarms, and received a score based on their program’s performance on the hidden test set. This score was based on the percentage of alarms correct, but with a penalty that weights the suppression of true alarms five times more heavily than acceptance of false alarms.We provided three example entries based on well-known, open source signal processing algorithms, to serve as a basis for comparison and as a starting point for participants to develop their own code. A total of 38 teams submitted a total of 215 entries in this year’s Challenge.
机译:重症监护病房中较高的误报率会降低工作人员的响应时间,同时会因噪音污染而增加患者的del妄,从而降低护理质量。 2015 Physio-Net / Computing in Cardiology Challenge提供了与严重心律失常警报相关的一组1,250个多参数ICU数据段,并向普通研究界发起了使用所有可用信号来解决虚假警报抑制问题的挑战。每个数据段长5分钟(用于实时分析),在警报发生时结束。为了进行回顾性分析,我们在触发警报后又提供了30秒的数据。收集了750个数据段以进行培训,并保留了500个数据段进行测试。每个警报都经过专家注释者的审查,其中至少有两个同意警报是真还是假。邀请挑战者提交完整的,有效的算法,以区分真假警报,并根据其程序在隐藏测试集中的表现获得评分。该分数基于正确警报的百分比,但要付出的代价是对真实警报的抑制比对接受虚假警报的权重高五倍。我们提供了三个基于众所周知的开源信号处理算法的示例条目,作为比较的基础,也是参与者开发自己的代码的起点。共有38个团队在今年的挑战赛中总共提交了215个参赛作品。

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