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An exploratory data quality analysis of time series physiologic signals using a large-scale intensive care unit database

机译:使用大型重症监护室数据库的时间序列生理信号的探索性数据质量分析

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摘要

Physiological data, such as heart rate and blood pressure, are critical to clinical decision-making in the intensive care unit (ICU). Vital signs data, which are available from electronic health records, can be used to diagnose and predict important clinical outcomes; While there have been some reports on the data quality of nurse-verified vital sign data, little has been reported on the data quality of higher frequency time-series vital signs acquired in ICUs, that would enable such predictive modeling. In this study, we assessed the data quality issues, defined as the completeness, accuracy, and timeliness, of minute-by-minute time series vital signs data within the MIMIC-III data set, captured from 16009 patient-ICU stays and corresponding to 9410 unique adult patients. We measured data quality of four time-series vital signs data streams in the MIMIC-III data set: heart rate (HR), respiratory rate (RR), blood oxygen saturation (SpO2), and arterial blood pressure (ABP). Approximately, 30% of patient-ICU stays did not have at least 1 min of data during the time-frame of the ICU stay for HR, RR, and SpO2. The percentage of patient-ICU stays that did not have at least 1 min of ABP data was ∼56%. We observed ∼80% coverage of the total duration of the ICU stay for HR, RR, and SpO2. Finally, only 12.5%%, 9.9%, 7.5%, and 4.4% of ICU lengths of stay had ≥ 99% data available for HR, RR, SpO2, and ABP, respectively, that would meet the three data quality requirements we looked into in this study. Our findings on data completeness, accuracy, and timeliness have important implications for data scientists and informatics researchers who use time series vital signs data to develop predictive models of ICU outcomes.
机译:诸如心率和血压的生理数据对重症监护室(ICU)的临床决策至关重要。可从电子健康记录提供的重要符号数据可用于诊断和预测重要的临床结果;虽然有一些关于护士验证的生命标志数据的数据质量的报告,但尚未报告ICU中获得的高频时间序列生命标志的数据质量很少,这将实现这种预测建模。在本研究中,我们评估了数据质量问题,定义为完整性,准确性和及时性,在MIMIC-III数据集中的分钟时间序列生命标志数据,从16009年的患者ICU捕获并相应9410个独特的成年患者。我们测量了四个时间序列生命标志数据流的数据质量在MIMIC-III数据集中:心率(HR),呼吸速率(RR),血氧饱和度(SPO2)和动脉血压(ABP)。大约,30%的患者 - ICU住宿在ICU的时间框架中没有至少1分钟的数据,因为HR,RR和SPO2。没有至少1分钟的ABP数据的患者ICU保持百分比为56%。我们观察了~80%的ICU持续时间的覆盖率为HR,RR和SPO2。最后,只有12.5 %%,9.9%,7.5%和4.4%的ICU住院时间≥99%,分别为人力资源,RR,SPO2和ABP提供,这将达到我们研究的三种数据质量要求在这个研究中。我们对数据完整,准确性和及时性的研究结果对使用时间序列生命标志数据的数据科学家和信息学研究人员来说,对ICU结果的预测模型产生重要影响。

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