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 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 would suggest strategies for interventions seeking to reduce risky-prescribing (e.g., strategies to directly reduce risky prescribing might be most effective if applied as group interventions to risky prescribing physicians connected through the network and the connections between these physicians could be targeted by tie dissolution interventions as an indirect way of reducing risky prescribing). 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 groups of physicians involved in risky prescribing and the network connections between them 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. 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 may be applied, adapted or generalized to study homophily and its generalizations on other network and attribute combinations involving analogous shared-patient networks and more generally using other kinds of network data underlying other kinds of social phenomena.
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http://dx.doi.org/10.1007/s41109-024-00670-y | DOI Listing |
Sci Rep
October 2024
School of Industrial Management and Engineering, Korea University, Seoul, 02841, Korea.
Parkinson's Disease (PD) is a chronic condition, with extensive research on initial medication selection for treatment, but limited guidance on long-term medication management. This study aims to identify optimal medication adjustment strategies based on patient clusters, focusing on either maximizing time spent in favorable health states or minimizing time spent in unfavorable ones while avoiding adverse effects. To guide treatment, we developed decision models using prescription dosages converted into standardized units for various medications.
View Article and Find Full Text PDFAppl Netw Sci
October 2024
Department of Biomedical Data Science, Geisel School of Medicine at Dartmouth, Lebanon, NH 03756 USA.
Drug Alcohol Rev
September 2024
Centre for Reproductive Research & Communication, British Pregnancy Advisory Service, London, UK.
Introduction: Online forums provide an environment for peer discussions to anonymously share experiences about sensitive topics. In this article we explore discussions about alcohol use during pregnancy, including representations of 'appropriate' behaviour and risks, in relation to alcohol use.
Methods: We sampled Mumsnet posts from 2016 to 2021 and analysed these using a two-staged approach: describing the content of original posts and employing discourse analysis on the entire thread which focused on unpacking the significance, activity and identity within the discourse.
J Assoc Physicians India
September 2024
Professor and Head, Department of General Medicine, Deben Mahata Government Medical College and Hospital, Hatuara, Purulia, West Bengal, India, Corresponding Author.
Polypharmacy is the concurrent use of five or more drugs per day. It is common in old age because of multimorbidity. The prevalence of polypharmacy is increasing as the number of old people is increasing worldwide.
View Article and Find Full Text PDFEye Contact Lens
November 2024
Case Western Reserve University (CWRU) (L.B.S.-F., S.R., S.K.I.), Department of Ophthalmology & Visual Sciences and University Hospitals of Cleveland Eye Institute, Cleveland, OH; Department of Ophthalmology (K.S.), Indiana University, Cleveland, OH; CWRU School of Medicine (S.S.), Cleveland, OH; CWRU Department of Population and Quantitative Health Sciences (L.B.S.-F., S.K.I.), Cleveland, OH; and Department of Public Health Sciences (F.B.), University of Miami, Cleveland, OH.
Purpose: To assess risk factors for contact lens (CL)-related bacterial keratitis, cases and high-risk controls were enrolled. Using high-risk controls can help elucidate whether certain CL types or modalities are attributable to disease burden if risky wear patterns are similar between the cases and controls. This analysis identified whether such CL factors were associated with the occurrence of bacterial keratitis.
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