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Heart Disease and Stroke Statistics-2017 Update: A Report From the American Heart Association.《2017年心脏病和中风统计数据更新:美国心脏协会报告》
Circulation. 2017 Mar 7;135(10):e146-e603. doi: 10.1161/CIR.0000000000000485. Epub 2017 Jan 25.
2
Patients Commonly Believe Their Heart Failure Hospitalizations Are Preventable and Identify Worsening Heart Failure, Nonadherence, and a Knowledge Gap as Reasons for Admission.患者普遍认为他们的心衰住院是可以预防的,并将心衰恶化、不遵医嘱和知识差距确认为导致住院的原因。
J Card Fail. 2017 Mar;23(3):252-256. doi: 10.1016/j.cardfail.2016.09.024. Epub 2016 Oct 11.
3
Patient, Caregiver, and Physician Work in Heart Failure Disease Management: A Qualitative Study of Issues That Undermine Wellness.患者、护理人员和医生在心力衰竭疾病管理中的工作:对影响健康的问题的定性研究
Mayo Clin Proc. 2016 Aug;91(8):1056-65. doi: 10.1016/j.mayocp.2016.05.016.
4
Do Non-Clinical Factors Improve Prediction of Readmission Risk?: Results From the Tele-HF Study.非临床因素能否改善再入院风险预测?:远程心力衰竭(Tele-HF)研究的结果
JACC Heart Fail. 2016 Jan;4(1):12-20. doi: 10.1016/j.jchf.2015.07.017. Epub 2015 Dec 2.
5
Comparing Perspectives of Patients, Caregivers, and Clinicians on Heart Failure Management.比较患者、护理人员和临床医生对心力衰竭管理的看法。
J Card Fail. 2016 Mar;22(3):210-7. doi: 10.1016/j.cardfail.2015.10.011. Epub 2015 Oct 23.
6
Tailoring of self-management interventions in patients with heart failure.心力衰竭患者自我管理干预措施的个性化定制。
Curr Heart Fail Rep. 2015 Jun;12(3):223-35. doi: 10.1007/s11897-015-0259-3.
7
Health policy and cardiovascular medicine: rapid changes, immense opportunities.卫生政策与心血管医学:快速变革,巨大机遇。
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8
Utility of socioeconomic status in predicting 30-day outcomes after heart failure hospitalization.社会经济地位在预测心力衰竭住院后30天结局中的作用。
Circ Heart Fail. 2015 May;8(3):473-80. doi: 10.1161/CIRCHEARTFAILURE.114.001879. Epub 2015 Mar 6.
9
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将以患者为中心的因素纳入心力衰竭再入院风险预测中:一项混合方法研究。

Incorporating patient-centered factors into heart failure readmission risk prediction: A mixed-methods study.

机构信息

Northwestern University, Chicago, IL.

University of Pennsylvania, Philadelphia, PA.

出版信息

Am Heart J. 2018 Jun;200:75-82. doi: 10.1016/j.ahj.2018.03.002. Epub 2018 Mar 9.

DOI:10.1016/j.ahj.2018.03.002
PMID:29898852
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6004826/
Abstract

BACKGROUND

Capturing and incorporating patient-centered factors into 30-day readmission risk prediction after hospitalized heart failure (HF) could improve the modest performance of current models.

METHODS

Using a mixed-methods approach, we developed a patient-centered survey and evaluated the additional predictive utility of the survey compared to a traditional readmission risk model (the Krumholz et al. model). Area under the receiver operating characteristic curve (AUC) and the Hosmer-Lemeshow goodness-of-fit statistic quantified the performance of both models. We measured the amount of model improvement with the addition of patient-centered factors to the Krumholz et al. model with the integrated discrimination improvement (IDI). In an exploratory analysis, we used hierarchical clustering algorithms to identify groups with similar survey responses and tested for differences between clusters using standard descriptive statistics.

RESULTS

From 3/24/2014 to 3/12/2015, 183 patients hospitalized with HF were enrolled from an urban, academic health system and followed for 30days after discharge. The Krumholz et al. plus patient-centered factors model had similar-to-slightly lower performance (AUC [95%CI]:0.62 [0.52, 0.71]; goodness-of-fit P=.10) than the Krumholz et al. model (AUC [95%CI]:0.66 [0.57, 0.76]; goodness-of-fit P=.19). The IDI (95%CI) was 0.003 (-0.014,0.020). We identified three patient clusters based on patient-centered survey responses. The clusters differed with respect to gender, self-rated health, employment status, and prior hospitalization frequency (all P<.05).

CONCLUSIONS

The addition of patient-centered factors did not improve 30-day readmission model performance. Rather than designing interventions based on predicted readmission risk, tailoring interventions to all patients, based on their characteristics, could inform the design of targeted, readmission reduction strategies.

摘要

背景

在住院心力衰竭(HF)后 30 天再入院风险预测中纳入以患者为中心的因素,可以提高当前模型的适度性能。

方法

使用混合方法,我们开发了一个以患者为中心的调查,并评估了该调查与传统再入院风险模型(Krumholz 等人的模型)相比的额外预测效用。接收者操作特征曲线(ROC)下的面积(AUC)和 Hosmer-Lemeshow 拟合优度统计量量化了这两个模型的性能。我们使用综合判别改善(IDI)来衡量在 Krumholz 等人的模型中加入以患者为中心的因素对模型改善的程度。在探索性分析中,我们使用层次聚类算法来识别具有相似调查反应的组,并使用标准描述性统计检验簇之间的差异。

结果

2014 年 3 月 24 日至 2015 年 3 月 12 日,从一个城市的学术医疗系统中招募了 183 名因 HF 住院的患者,并在出院后 30 天进行随访。Krumholz 等人的模型加上以患者为中心的因素模型的性能与 Krumholz 等人的模型相似(AUC [95%CI]:0.62 [0.52, 0.71];拟合优度 P=.10),稍低(AUC [95%CI]:0.66 [0.57, 0.76];拟合优度 P=.19)。IDI(95%CI)为 0.003(-0.014,0.020)。我们根据以患者为中心的调查反应确定了三个患者组。这些组在性别、自我评估健康状况、就业状况和既往住院频率方面存在差异(均 P<.05)。

结论

纳入以患者为中心的因素并没有改善 30 天再入院模型的性能。与其根据预测的再入院风险设计干预措施,不如根据患者的特点为所有患者量身定制干预措施,为有针对性的、减少再入院的策略设计提供信息。