利用电子健康记录大数据分析,衡量初级医疗团队组成对患者激活的影响。

IF 1.6 Q3 HEALTH CARE SCIENCES & SERVICES Journal of Patient-Centered Research and Reviews Pub Date : 2024-04-02 DOI:10.17294/2330-0698.2019
Kristen K. Will, Yue Liang, Chih-Lin Chi, Gerri Lamb, Michael Todd, Connie Delaney
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引用次数: 0

摘要

目的以团队为基础的医疗服务与 "四重目标"(Quadruple Aim)的关键结果相关联,是以患者为中心的高价值医疗服务的关键驱动力。本研究利用一个城市医疗系统的大型电子病历数据集(n=316,542)来探讨团队组成与患者激活(患者参与的关键驱动因素)之间的关系。根据文献中对团队合作的共识定义对团队进行了操作化。患者活跃度采用患者活跃度测量法(PAM)进行测量。多层次回归分析的结果与机器学习分析的结果进行了比较,机器学习分析使用多叉逻辑回归来计算团队组成对 PAM 分数影响的倾向分数。在机器学习方法中,使用带有广义重叠加权的因果推理模型来计算团队合作的平均治疗效果。结果在分析样本(n=12,448)的数据中观察到 17 种不同的团队类型。团队规模从 2 到 5 人不等。在控制了两项分析中的混杂变量后,观察到更多样化的多学科团队(团队规模为 4 人或以上)提高了患者激活评分。结论这是第一项利用电子病历和大数据分析探讨团队组成与患者激活之间关系的研究。利用电子病历数据和机器学习来研究团队和其他以患者为中心的护理的进一步研究意义重大,可用于推动团队科学的发展。
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Measuring the Impact of Primary Care Team Composition on Patient Activation Utilizing Electronic Health Record Big Data Analytics.
Purpose Team-based care has been linked to key outcomes associated with the Quadruple Aim and a key driver of high-value patient-centered care. Use of the electronic health record (EHR) and machine learning have significant potential to overcome previous barriers to studying the impact of teams, including delays in accessing data to improve teamwork and optimize patient outcomes. Methods This study utilized a large EHR dataset (n=316,542) from an urban health system to explore the relationship between team composition and patient activation, a key driver of patient engagement. Teams were operationalized using consensus definitions of teamwork from the literature. Patient activation was measured using the Patient Activation Measure (PAM). Results from multilevel regression analyses were compared to machine learning analyses using multinomial logistic regression to calculate propensity scores for the effect of team composition on PAM scores. Under the machine learning approach, a causal inference model with generalized overlap weighting was used to calculate the average treatment effect of teamwork. Results Seventeen different team types were observed in the data from the analyzed sample (n=12,448). Team sizes ranged from 2 to 5 members. After controlling for confounding variables in both analyses, more diverse, multidisciplinary teams (team size of 4 or more) were observed to have improved patient activation scores. Conclusions This is the first study to explore the relationship between team composition and patient activation using the EHR and big data analytics. Implications for further research using EHR data and machine learning to study teams and other patient-centered care are promising and could be used to advance team science.
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来源期刊
Journal of Patient-Centered Research and Reviews
Journal of Patient-Centered Research and Reviews HEALTH CARE SCIENCES & SERVICES-
自引率
5.90%
发文量
35
审稿时长
20 weeks
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