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Towards development of alert thresholds for clinical deterioration using continuous predictive analytics monitoring

机译:利用连续预测分析监测发展临床恶化的警报阈值的发展

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Patients who deteriorate while on the acute care ward and are emergently transferred to the Intensive Care Unit (ICU) experience high rates of mortality. To date, risk scores for clinical deterioration applied to the acute care wards rely on static or intermittent inputs of vital sign and assessment parameters. We propose the use of continuous predictive analytics monitoring, or data that relies on real-time physiologic monitoring data captured from ECG, documented vital signs, laboratory results, and other clinical assessments to predict clinical deterioration. A necessary step in translation to practice is understanding how an alert threshold would perform if applied to a continuous predictive analytic that was trained to detect clinical deterioration. The purpose of this study was to evaluate the positive predictive value of 'risk spikes', or large abrupt increases in the output of a statistical model of risk predicting clinical deterioration. We studied 8111 consecutive patient admissions to a cardiovascular medicine and surgery ward with continuous ECG data. We first trained a multivariable logistic regression model for emergent ICU transfer in a test set and tested the characteristics of the model in a validation set of 4059 patient admissions. Then, in a nested analysis we identified large, abrupt spikes in risk (increase by three units over the prior 6 h; a unit is the fold-increase in risk of ICU transfer in the next 24 h) and reviewed hospital records of 91 patients for clinical events such as emergent ICU transfer. We compared results to 59 control patients at times when they were matched for baseline risk including the National Warning Score (NEWS). There was a 3.4-fold higher event rate for patients with risk spikes (positive predictive value 24% compared to 7%,p = 0.006). If we were to use risk spikes as an alert, they would fire about once per day on a 73-bed acute care ward. Risk spikes that were primarily driven by respiratory changes (ECG-derived respiration (EDR) or charted respiratory rate) had highest PPV (30-35%) while risk spikes driven by heart rate had the lowest (7%). Alert thresholds derived from continuous predictive analytics monitoring are able to be operationalized as a degree of change from the person's own baseline rather than arbitrary threshold cut-points, which can likely better account for the individual's own inherent acuity levels. Point of care clinicians in the acute care ward settings need tailored alert strategies that promote a balance in recognition of clinical deterioration and assessment of the utility of the alert approach.
机译:在急性护理病房上劣化的患者,并急切地转移到重症监护室(ICU)经历高度的死亡率。迄今为止,适用于急性护理病房的临床恶化的风险评分依赖于生命标志和评估参数的静态或间歇性投入。我们建议使用连续的预测分析监测,或依赖于ECG捕获的实时生理监测数据的数据,记录了生命体征,实验室结果和其他临床评估,以预测临床恶化。在练习中,在练习中的平衡方面是如何了解警报阈值,如果应用于培训以检测临床劣化的连续预测分析。本研究的目的是评估“风险尖峰”的阳性预测值,或者风险统计模型的突然突然增加预测临床恶化。我们研究了8111名连续患者入学,并具有连续的心电图数据。我们首先训练了一个多变量的逻辑回归模型,用于在测试集中进行ICU转移,并在4059名患者入学的验证组中测试了模型的特征。然后,在嵌套的分析中,我们确定了大量的风险突然尖峰(在先前的6小时增加三个单位;一个单位是未来24小时ICU转移风险的折叠增加,并审查了91名患者的医院记录对于新的ICU转移等临床活动。我们将结果与59名控制患者进行比较,因为它们与基线风险相匹配,包括国家警告分数(新闻)。风险尖峰患者的活动率为3.4倍,阳性预测值24%,而7%,P = 0.006)。如果我们要使用风险尖峰作为警报,他们会在73床急性护理病房上每天发射一次。主要受呼吸变化(ECG衍生的呼吸(EDR)或图表呼吸速率)的风险尖峰具有最高的PPV(30-35%),而心率驱动的风险尖峰具有最低(7%)。从连续预测分析监测导出的警报阈值能够作为从人自己的基线的变化程度来运行,而不是任意阈值切割点,这可能更好地占个人自己的固有敏锐度水平。急性护理病房中的护理点临床医生需要定制的警报策略,以促进临床恶化和对警报方法效用的临床恶化和评估的平衡。

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