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Improving evidence-based grouping of transitional care strategies in hospital implementation using statistical tools and expert review

机译:使用统计工具和专家审查改进医院实施中的过渡性护理策略的基于证据分组

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As health systems transition to value-based care, improving transitional care (TC) remains a priority. Hospitals implementing evidence-based TC models often adapt them to local contexts. However, limited research has evaluated which groups of TC strategies, or transitional care activities, commonly implemented by hospitals correspond with improved patient outcomes. In order to identify TC strategy groups for evaluation, we applied a data-driven approach informed by literature review and expert opinion. Based on a review of evidence-based TC models and the literature, focus groups with patients and family caregivers identifying what matters most to them during care transitions, and expert review, the Project ACHIEVE team identified 22 TC strategies to evaluate. Patient exposure to TC strategies was measured through a hospital survey (N?=?42) and prospective survey of patients discharged from those hospitals (N?=?8080). To define groups of TC strategies for evaluation, we performed a multistep process including: using ACHIEVE’S prior retrospective analysis; performing exploratory factor analysis, latent class analysis, and finite mixture model analysis on hospital and patient survey data; and confirming results through expert review. Machine learning (e.g., random forest) was performed using patient claims data to explore the predictive influence of individual strategies, strategy groups, and key covariates on 30-day hospital readmissions. The methodological approach identified five groups of TC strategies that were commonly delivered as a bundle by hospitals: 1) Patient Communication and Care Management, 2) Hospital-Based Trust, Plain Language, and Coordination, 3) Home-Based Trust, Plain language, and Coordination, 4) Patient/Family Caregiver Assessment and Information Exchange Among Providers, and 5) Assessment and Teach Back. Each TC strategy group comprises three to six, non-mutually exclusive TC strategies (i.e., some strategies are in multiple TC strategy groups). Results from random forest analyses revealed that TC strategies patients reported receiving were more important in predicting readmissions than TC strategies that hospitals reported delivering, and that other key co-variates, such as patient comorbidities, were the most important variables. Sophisticated statistical tools can help identify underlying patterns of hospitals’ TC efforts. Using such tools, this study identified five groups of TC strategies that have potential to improve patient outcomes.
机译:随着卫生系统转型到基于价值的护理,改善过渡护理(TC)仍然是优先事项。实施基于证据的TC模型的医院通常将它们调整为本地背景。然而,有限的研究评估了医院常见的群体策略或过渡性护理活动的哪些群体或过渡性护理活动对应于改善的患者结果。为了识别用于评估的TC策略群体,我们应用了文献审查和专家意见的数据驱动方法。基于对基于证据的TC模型和文献的审查,对患者和家庭护理人员的重点小组识别在护理过渡期间对他们最重要的是什么,并专家审查,该项目实现了22项TC策略来评估。患者通过医院调查(N?= 42)测量TC策略的暴露,并对从这些医院排出的患者进行预期调查(N?= 8080)。要定义评估的TC策略组,我们执行了多步骤过程,包括:使用实现的先前回顾性分析;对医院和患者调查数据进行探索性因子分析,潜在的分析和有限混合模型分析;并通过专家审查确认结果。使用患者声称数据进行机器学习(例如,随机森林),以探讨个别策略,战略群体和关键协变量对30天医院入伍的预测影响。方法论方法确定了五组TC策略,通常被医院捆绑:1)患者沟通和护理管理,2)基于医院的信任,简单语言和协调,3)基于家庭的信任,简单的语言,和协调,4)患者/家庭护理人员评估和供应商之间的信息交换,以及5)评估和教学。每个TC策略组包括三到六个非相互排斥的TC策略(即,一些战略在多个TC战略组中)。随机森林分析结果显示,TC策略患者报告的患者在预测医院报告的TC策略方面的预测方案中的接受更为重要,并且其他关键的共变异,例如患者可患者,是最重要的变量。复杂的统计工具可以帮助确定医院的TC努力的基础模式。使用此类工具,本研究确定了五组TC策略,具有改善患者结果。

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