Manukyan Narine, Eppstein Margaret J, Horbar Jeffrey D
Department of Computer Science, University of Vermont, Burlington, VT 05401, USA.
Department of Pediatrics, University of Vermont, Burlington, VT 05405, USA, and Vermont Oxford Network, Burlington, VT 05401, USA.
IEEE Access. 2013 Aug 28;1:545-557. doi: 10.1109/ACCESS.2013.2280086.
In organized healthcare quality improvement collaboratives (QICs), teams of practitioners from different hospitals exchange information on clinical practices with the aim of improving health outcomes at their own institutions. However, what works in one hospital may not work in others with different local contexts because of nonlinear interactions among various demographics, treatments, and practices. In previous studies of collaborations where the goal is a collective problem solving, teams of diverse individuals have been shown to outperform teams of similar individuals. However, when the purpose of collaboration is knowledge diffusion in complex environments, it is not clear whether team diversity will help or hinder effective learning. In this paper, we first use an agent-based model of QICs to show that teams comprising similar individuals outperform those with more diverse individuals under nearly all conditions, and that this advantage increases with the complexity of the landscape and level of noise in assessing performance. Examination of data from a network of real hospitals provides encouraging evidence of a high degree of similarity in clinical practices, especially within teams of hospitals engaging in QIC teams. However, our model also suggests that groups of similar hospitals could benefit from larger teams and more open sharing of details on clinical outcomes than is currently the norm. To facilitate this, we propose a secure virtual collaboration system that would allow hospitals to efficiently identify potentially better practices in use at other institutions similar to theirs without any institutions having to sacrifice the privacy of their own data. Our results may also have implications for other types of data-driven diffusive learning such as in personalized medicine and evolutionary search in noisy, complex combinatorial optimization problems.
在有组织的医疗质量改进协作组织(QICs)中,来自不同医院的从业者团队就临床实践交流信息,目的是改善各自机构的健康状况。然而,由于不同人口统计学特征、治疗方法和实践之间存在非线性相互作用,在一家医院行之有效的方法在其他具有不同当地情况的医院可能并不适用。在以往旨在共同解决问题的协作研究中,由不同个体组成的团队表现优于由相似个体组成的团队。然而,当协作目的是在复杂环境中进行知识传播时,团队多样性是否会有助于或阻碍有效学习尚不清楚。在本文中,我们首先使用基于代理的QIC模型表明,在几乎所有情况下,由相似个体组成的团队比个体差异更大的团队表现更好,并且这种优势会随着环境复杂性和绩效评估中的噪声水平而增加。对一个真实医院网络的数据检查提供了令人鼓舞的证据,表明临床实践存在高度相似性,尤其是在参与QIC团队的医院团队内部。然而,我们的模型还表明,相似医院组成的群体可以从更大的团队以及比目前惯例更开放地分享临床结果细节中受益。为了促进这一点,我们提出了一个安全的虚拟协作系统,该系统将允许医院高效地识别在与其类似的其他机构中可能正在使用的更好实践,而无需任何机构牺牲自身数据的隐私性。我们的结果可能也对其他类型的数据驱动扩散学习有影响,比如个性化医疗以及在嘈杂、复杂的组合优化问题中的进化搜索。