303 Social Network Analysis of Patient Sharing Among Providers: Implications for Analyzing Disparities in Cancer Screening

S. Bhavnani, Weibin Zhang, Yong-Fang Kuo, Brian Downer, Timothy Reistetter, Rodney Hunter
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Abstract

OBJECTIVES/GOALS: Many providers share patients resulting in networks where clinical information is exchanged, and which can impact the quality and efficiency of care. Here we analyzed the network properties of a primary care service area (PCSA) in Harris County TX, motivating our ongoing analysis of how they are associated with disparities in cancer screening. METHODS/STUDY POPULATION: Data.All providers (n=731, Medicare 2018) from the PCSA with the most providers in Harris County TX, with gender, specialty, and the number of shared patients. Method. Modeled the data as a network consisting of provider nodes, connected in pairs by edges if they shared >11 patients (an empirically-determined threshold). Analyzed the network structure using (1) modularity maximization and its significance to identify densely-connected communities; (2) degree centralization to measure whether a few providers shared many patients, and betweenness centralization to measure whether a few providers connected densely-connected communities; and (3) chi-squared to measure if pairs of connected providers tended to be of the same gender compared to disconnected provider pairs. RESULTS/ANTICIPATED RESULTS: The results (Fig. 1, http://www.skbhavnani.com/DIVA/Images/Fig-1-SNA-Network.jpg [http://www.skbhavnani.com/DIVA/Images/Fig-1-SNA-Network.jpg]) revealed a fragmented network with 120 small components (connected subnetworks, not part of any larger connected subnetwork), and 1 large component. The large component (n=244) had strong and significant modularity (Q=0.73, z=53.13, P<.001) with communities of providers that shared more patients than expected by chance; low degree centralization (dc=0.11) suggesting that no provider dominated patient sharing, in addition to high and significant betweenness centralization (bc=0.5, P<.01) suggesting that a few providers were responsible for connecting the densely-connected communities; and a significant gender bias (X2=10.05, df=1, P< .01) among those that shared patients, versus those that did not. DISCUSSION/SIGNIFICANCE: The analysis revealed a specific type of vulnerability (betweenness) for network fragmentation, and a gender bias in how patients were shared. These results motivated our ongoing analysis on how the network properties are associated with disparity in cancer screening within PCSAs across Texas.
303 医疗机构间患者共享的社会网络分析:分析癌症筛查差异的意义
目的/目标:许多医疗机构共享患者,从而形成了临床信息交流网络,这可能会影响医疗质量和效率。在此,我们分析了德克萨斯州哈里斯县一个初级医疗服务区(PCSA)的网络属性,从而促使我们持续分析这些网络属性与癌症筛查差异之间的关系。方法/研究对象:数据:德克萨斯州哈里斯县拥有最多医疗服务提供者的 PCSA 的所有医疗服务提供者(n=731,2018 年医疗保险),包括性别、专业和共享患者数量。方法。将数据建模为一个由医疗服务提供者节点组成的网络,如果他们共享的患者数大于 11 人(经验确定的阈值),则通过边连接成对。使用以下方法分析网络结构:(1) 模块化最大化及其重要性,以确定连接密集的社区;(2) 度集中化,以衡量少数医疗服务提供者是否共享许多患者,以及间度集中化,以衡量少数医疗服务提供者是否连接了连接密集的社区;(3) 齐次方,以衡量与断开连接的医疗服务提供者配对相比,连接的医疗服务提供者配对是否倾向于具有相同的性别。结果/预期结果:结果(图 1,http://www.skbhavnani.com/DIVA/Images/Fig-1-SNA-Network.jpg [http://www.skbhavnani.com/DIVA/Images/Fig-1-SNA-Network.jpg])显示,该网络很分散,有 120 个小部分(连接的子网络,不属于任何较大的连接子网络)和 1 个大部分。大分量(n=244)具有强大而显著的模块性(Q=0.73,z=53.13,P<.001),其提供者群体共享的病人比偶然情况下预期的多;低程度集中化(dc=0.11)表明没有提供者主导病人共享,此外还有高而显著的间度集中化(bc=0.5,P<.01)表明,少数医疗服务提供者负责连接连接密集的社区;在共享患者与不共享患者之间存在显著的性别偏差(X2=10.05,df=1,P<.01)。讨论/意义:分析揭示了网络分散的一种特殊脆弱性(间度),以及在如何共享患者方面存在的性别偏见。这些结果促使我们继续分析网络属性与德克萨斯州 PCSA 内癌症筛查差异的关系。
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