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识别可能从急性肾损伤电子警报中获益的患者。

Identification of Patients Expected to Benefit from Electronic Alerts for Acute Kidney Injury.

机构信息

Program of Applied Translational Research, Yale University School of Medicine, New Haven, Connecticut.

Clinical Epidemiology Research Center, Veterans Affairs Connecticut Healthcare System, West Haven, Connecticut.

出版信息

Clin J Am Soc Nephrol. 2018 Jun 7;13(6):842-849. doi: 10.2215/CJN.13351217. Epub 2018 Mar 29.

Abstract

BACKGROUND AND OBJECTIVES

Electronic alerts for heterogenous conditions such as AKI may not provide benefit for all eligible patients and can lead to alert fatigue, suggesting that personalized alert targeting may be useful. Uplift-based alert targeting may be superior to purely prognostic-targeting of interventions because uplift models assess marginal treatment effect rather than likelihood of outcome.

DESIGN, SETTING, PARTICIPANTS, & MEASUREMENTS: This is a secondary analysis of a clinical trial of 2278 adult patients with AKI randomized to an automated, electronic alert system versus usual care. We used three uplift algorithms and one purely prognostic algorithm, trained in 70% of the data, and evaluated the effect of targeting alerts to patients with higher scores in the held-out 30% of the data. The performance of the targeting strategy was assessed as the interaction between the model prediction of likelihood to benefit from alerts and randomization status. The outcome of interest was maximum relative change in creatinine from the time of randomization to 3 days after randomization.

RESULTS

The three uplift score algorithms all gave rise to a significant interaction term, suggesting that a strategy of targeting individuals with higher uplift scores would lead to a beneficial effect of AKI alerting, in contrast to the null effect seen in the overall study. The prognostic model did not successfully stratify patients with regards to benefit of the intervention. Among individuals in the high uplift group, alerting was associated with a median reduction in change in creatinine of -5.3% (=0.03). In the low uplift group, alerting was associated with a median increase in change in creatinine of +5.3% (=0.005). Older individuals, women, and those with a lower randomization creatinine were more likely to receive high uplift scores, suggesting that alerts may benefit those with more slowly developing AKI.

CONCLUSIONS

Uplift modeling, which accounts for treatment effect, can successfully target electronic alerts for AKI to those most likely to benefit, whereas purely prognostic targeting cannot.

摘要

背景与目的

针对急性肾损伤(AKI)等异质性情况的电子警报可能对所有符合条件的患者都没有益处,并且可能导致警报疲劳,这表明个性化警报定位可能是有用的。基于提升的警报定位可能优于对干预措施的纯预后定位,因为提升模型评估的是边际治疗效果,而不是结果的可能性。

设计、设置、参与者和测量:这是对 2278 名 AKI 成年患者进行的临床试验的二次分析,这些患者被随机分配到自动电子警报系统与常规护理组。我们使用了三种提升算法和一种纯预后算法,在 70%的数据中进行了训练,并在 30%保留数据中评估了将警报定位到得分较高的患者的效果。该定位策略的性能是通过模型对从随机化到随机化后 3 天的肌酐最大相对变化的受益可能性的预测与随机化状态之间的相互作用来评估的。

结果

三种提升评分算法均产生了显著的相互作用项,表明针对提升评分较高的个体的策略将导致 AKI 警报产生有益效果,与总体研究中观察到的无效效果形成对比。预后模型未能根据干预措施的受益情况对患者进行分层。在高提升组的个体中,警报与肌酐变化中位数降低 5.3%(=0.03)相关。在低提升组中,警报与肌酐变化中位数增加 5.3%(=0.005)相关。年龄较大、女性和随机化肌酐较低的个体更有可能获得较高的提升评分,这表明警报可能对 AKI 发展较慢的患者有益。

结论

考虑治疗效果的提升模型可以成功地将 AKI 的电子警报定位到最有可能受益的患者,而纯预后定位则不能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7c03/5989673/37af134b42e0/CJN.13351217absf1.jpg

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