Ran Xin, Meara Ellen, Morden Nancy E, Moen Erika L, Rockmore Daniel N, O'Malley A James
Department of Biomedical Data Science, Geisel School of Medicine at Dartmouth, Lebanon, 03756, NH, USA.
The Dartmouth Institute for Health Policy and Clinical Practice, Geisel School of Medicine at Dartmouth, Lebanon, 03756, NH, USA.
Res Sq. 2024 Mar 26:rs.3.rs-4139630. doi: 10.21203/rs.3.rs-4139630/v1.
Social network analysis and shared-patient physician networks have become effective ways of studying physician collaborations. Assortative mixing or "homophily" is the network phenomenon whereby the propensity for similar individuals to form ties is greater than for dissimilar individuals. Motivated by the public health concern of risky-prescribing among older patients in the United States, we develop network models and tests involving novel network measures to study whether there is evidence of geographic homophily in prescribing and deprescribing in the specific shared-patient network of physicians linked to the US state of Ohio in 2014. Evidence of homophily in risky-prescribing would imply that prescribing behaviors help shape physician networks and could inform interventions to reduce risky-prescribing (e.g., should interventions target groups of physicians or select physicians at random). Furthermore, if such effects varied depending on the structural features of a physician's position in the network (e.g., by whether or not they are involved in cliques - groups of actors that are fully connected to each other - such as closed triangles in the case of three actors), this would further strengthen the case for targeting of select physicians for interventions. Using accompanying Medicare Part D data, we converted patient longitudinal prescription receipts into novel measures of the intensity of each physician's risky-prescribing. Exponential random graph models were used to simultaneously estimate the importance of homophily in prescribing and deprescribing in the network beyond the characteristics of physician specialty (or other metadata) and network-derived features. In addition, novel network measures were introduced to allow homophily to be characterized in relation to specific triadic (three-actor) structural configurations in the network with associated non-parametric randomization tests to evaluate their statistical significance in the network against the null hypothesis of no such phenomena. We found physician homophily in prescribing and deprescribing in both the state-wide and multiple HRR sub-networks, and that the level of homophily varied across HRRs. We also found that physicians exhibited within-triad homophily in risky-prescribing, with the prevalence of homophilic triads significantly higher than expected by chance absent homophily. These results may explain why communities of prescribers emerge and evolve, helping to justify group-level prescriber interventions. The methodology could be applied to arbitrary shared-patient networks and even more generally to other kinds of network data that underlies other kinds of social phenomena.
社交网络分析和共享患者医生网络已成为研究医生合作的有效方式。同类相聚或“同质性”是一种网络现象,即相似个体形成联系的倾向大于不相似个体。出于对美国老年患者高风险处方这一公共卫生问题的关注,我们开发了网络模型和测试,涉及新颖的网络测量方法,以研究在2014年与美国俄亥俄州相关联的医生特定共享患者网络中,在处方和减药方面是否存在地理同质性证据。高风险处方中同质性的证据意味着处方行为有助于塑造医生网络,并可为减少高风险处方的干预措施提供信息(例如,干预措施应针对医生群体还是随机选择医生)。此外,如果这种影响因医生在网络中的位置结构特征而异(例如,他们是否参与小团体——彼此完全相连的行动者群体——如三个行动者情况下的封闭三角形),这将进一步加强针对特定医生进行干预的理由。利用随附的医疗保险D部分数据,我们将患者纵向处方收据转换为每位医生高风险处方强度的新颖测量方法。指数随机图模型用于同时估计在网络中处方和减药方面同质性的重要性,超越医生专业(或其他元数据)特征和网络衍生特征。此外,引入了新颖的网络测量方法,以便根据网络中特定的三元(三个行动者)结构配置来表征同质性,并进行相关的非参数随机化测试,以评估它们在网络中相对于不存在此类现象的零假设的统计显著性。我们在全州范围和多个卫生资源区域(HRR)子网络中都发现了医生在处方和减药方面的同质性,并且同质性水平在不同的HRR之间有所不同。我们还发现医生在高风险处方中表现出三元组内同质性,同质性三元组的患病率显著高于不存在同质性时随机预期的患病率。这些结果可能解释了开药者群体为何出现和演变,有助于证明针对开药者群体的干预措施的合理性。该方法可应用于任意共享患者网络,甚至更广泛地应用于构成其他社会现象基础的其他类型网络数据。