Drivers of telemedicine in primary care clinics at a large academic medical centre.

IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Journal of Telemedicine and Telecare Pub Date : 2025-07-01 Epub Date: 2023-12-21 DOI:10.1177/1357633X231219311
Vijaya Parameswaran, Harrison Koos, Neil Kalwani, Lubna Qureshi, Leah Rosengaus, Rajesh Dash, David Scheinker, Fatima Rodriguez, Cati-Brown Johnson, Kurt Stange, David Aron, Kalle Lyytinen, Christopher Sharp
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Abstract

BackgroundCOVID-19 disrupted healthcare routines and prompted rapid telemedicine implementation. We investigated the drivers of visit modality selection (telemedicine versus in-person) in primary care clinics at an academic medical centre.MethodsWe used electronic medical record data from March 2020 to May 2022 from 13 primary care clinics (N = 21,031 new, N = 207,292 return visits), with 55% overall telemedicine use. Hierarchical logistic regression and cross-validation methods were used to estimate the variation in visit modality explained by the patient, clinician and visit factors as measured by the mean-test area under the curve (AUC).ResultsThere was significant variation in telemedicine use across clinicians (ranging from 0-100%) for the same visit diagnosis. The strongest predictors of telemedicine were the clinician seen for new visits (mean AUC of 0.79) and the primary visit diagnosis for return visits (0.77). Models based on all patient characteristics combined accounted for relatively little variation in modality selection, 0.54 for new and 0.58 for return visits, respectively. Amongst patient characteristics, males, patients over 65 years, Asians and patient's with non-English language preferences used less telemedicine; however, those using interpreter services used significantly more telemedicine.ConclusionClinician seen and primary visit diagnoses were the best predictors of visit modality. The distinction between new and return visits and the minimal impact of patient characteristics on visit modality highlights the complexity of clinical care and warrants research approaches that go beyond linear models to uncover the emergent causal effects of specific technology features mediated by tasks, people and organisations.

大型学术医疗中心初级保健诊所远程医疗的驱动力。
背景:COVID-19 颠覆了医疗常规,促使远程医疗的快速实施。我们对一家学术医疗中心的初级保健诊所选择就诊方式(远程医疗与面对面就诊)的驱动因素进行了调查:我们使用了 13 家初级保健诊所 2020 年 3 月至 2022 年 5 月期间的电子病历数据(N = 21,031 次新就诊,N = 207,292 次回访),远程医疗的总体使用率为 55%。使用层次逻辑回归和交叉验证方法估算了患者、临床医生和就诊因素所解释的就诊方式的变化,以平均测试曲线下面积(AUC)来衡量:结果:在同一就诊诊断中,不同临床医生使用远程医疗的比例差异很大(从 0% 到 100%)。远程医疗的最强预测因素是新就诊的临床医生(平均 AUC 为 0.79)和回访的主要就诊诊断(0.77)。基于所有患者特征的综合模型对方式选择的影响相对较小,对新就诊和回访的影响分别为 0.54 和 0.58。在患者特征中,男性、65 岁以上患者、亚洲人和使用非英语语言的患者使用远程医疗的比例较低;但使用口译服务的患者使用远程医疗的比例明显较高:结论:就诊医生和主要就诊诊断是预测就诊方式的最佳指标。新就诊和回访之间的区别以及患者特征对就诊方式的影响微乎其微,凸显了临床护理的复杂性,因此有必要采用超越线性模型的研究方法,揭示以任务、人员和组织为中介的特定技术特征的新兴因果效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
14.10
自引率
10.60%
发文量
174
审稿时长
6-12 weeks
期刊介绍: Journal of Telemedicine and Telecare provides excellent peer reviewed coverage of developments in telemedicine and e-health and is now widely recognised as the leading journal in its field. Contributions from around the world provide a unique perspective on how different countries and health systems are using new technology in health care. Sections within the journal include technology updates, editorials, original articles, research tutorials, educational material, review articles and reports from various telemedicine organisations. A subscription to this journal will help you to stay up-to-date in this fast moving and growing area of medicine.
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