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Identifying patients at highest-risk: the best timing to apply a readmission predictive model

机译:识别高危患者:应用再入院预测模型的最佳时机

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Introduction : Most of readmission prediction models are implemented at the time of patient discharge. [1] However, interventions which include an early in-hospital component are critical for reducing readmissions and improving patient outcomes. [2] Thus, at-discharge high-risk identification may be too late for effective intervention. Nonetheless, the tradeoff between early versus at-discharge prediction and the optimal timing of the risk prediction model application remains to be determined. We examined a high-risk patient selection with readmission prediction models using data available at two time points: at admission and at the time of hospital discharge. Methods : A retrospective cohort study of adults (≥65 years) discharged alive from internal medicine units in Clalit’s (the largest integrated payer-provider health fund in Israel) general hospitals in 2015.The outcome was all-cause 30-day emergency readmissions to any internal medicine ward at any hospital. We used the previously validated Preadmission Readmission Detection Model (PREADM) [3] and developed a new model incorporating PREADM with hospital data (PREADM?H). We compared the percentage of overlap between the models and calculated the positive predictive value (PPV) for the subgroups identified by each model separately and by both models. Results : The final cohort included 35,156 index hospital admissions. The PREADM-H model included 17 variables with a C?statistic of 0.68 (95% CI: 0.67–0.70) and PPV of 43.0% in the highest-risk categories. Of patients categorized by the PREADM?H in the highest-risk decile, 78% were classified similarly by the PREADM. The 22% classified by the PREADM?H at the highest decile, but not by the PREADM, had a PPV of 37%. Applying both the PREADM and PREADM-H allowed accurate detection of additional subsequently readmitted patients at the 10% highest-risk group. Discussions : Our results show that the timing of readmission risk prediction both at admission and discharge should be considered when making the decision regarding which population should be identified for inclusion in readmission prevention programs. Use of the PREADM model allowed early identification of high-risk patients, yet missed a portion whose readmission risk was almost as high. Alternatively, the PREADM?H enabled accounting for risk factors that accrued during the hospital stay, though missed some patients who had an a priori high-risk according to the PREADM and whose actual readmission rate was much higher than the general population. Conclusions : Readmission prediction models should be implemented twice, to allow for early intervention at-admission and to capture new at-risk patients at-discharge. Lessons learned : The timing of readmission risk prediction makes a difference in terms of the population identified at each prediction time point. Limitations : Our results may not be generalizable to other settings where clinic and hospital data are not linked. However, with the growing use of EHRs,[4] the data included in the final PREADM?H may be increasingly available to many healthcare organizations. Suggestions for future research : Our results provide an example of the potential complementary implementation of the predictive models to maximize their power in identifying various groups of high-risk patients for inclusion in within as well as post-discharge interventions. Further studies are needed to strengthen our findings.
机译:简介:大多数再入院预测模型是在患者出院时实施的。 [1]但是,包括早期住院治疗在内的干预措施对于减少再入院率和改善患者预后至关重要。 [2]因此,放电时高风险识别对于有效干预可能为时已晚。尽管如此,早期与放电预测之间的权衡与风险预测模型应用的最佳时机仍有待确定。我们使用入院时和出院时两个时间点的可用数据,通过再入院预测模型检查了高危患者选择。方法:回顾性队列研究于2015年对Clalit(以色列最大的综合支付提供者健康基金)综合医院内科单元活产的65岁以上成年人进行了回顾性研究,结果是因全日制30天急诊入院任何医院的内科病房。我们使用了先前验证过的Preadmission再入院检测模型(PREADM)[3],并开发了一种将PREADM与医院数据(PREADM?H)结合起来的新模型。我们比较了模型之间的重叠百分比,并分别计算了每个模型和两个模型确定的亚组的阳性预测值(PPV)。结果:最终队列包括35156例入院索引患者。在最高风险类别中,PREADM-H模型包括17个变量,C统计学为0.68(95%CI:0.67–0.70),PPV为43.0%。在PREADM?H分类的高危患者中,有78%的患者被PREADM分类。由PREADM?H分类的22%的人的最高分位数最高,但不是PREADM的,则PPV为37%。同时使用PREADM和PREADM-H可以在10%最高风险组中准确检测出其他随后再次入院的患者。讨论:我们的结果表明,在决定应识别哪些人群纳入预防再入院计划时,应考虑入院和出院时再入院风险预测的时间。使用PREADM模型可以及早识别高危患者,但错过了其再次入院风险几乎一样高的部分。另外,尽管PREADM?H遗漏了一些根据PREADM具有先验高风险且实际再入院率远高于普通人群的患者,但可以考虑住院期间产生的风险因素。结论:再入院预测模型应实施两次,以允许在入院时尽早干预并在出院时捕获新的高危患者。经验教训:再次入院风险预测的时机对每个预测时间点确定的人群有所不同。限制:我们的结果可能无法推广到未链接诊所和医院数据的其他设置。但是,随着EHR的使用不断增长,[4]最终PREADM?H中包含的数据可能会越来越多地提供给许多医疗机构。未来研究的建议:我们的结果提供了一个示例性示例,说明预测模型的潜在补充实施方式,以最大程度地发挥其识别各种高危患者的能力,以纳入治疗以及出院后干预措施中。需要进一步研究以加强我们的发现。

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