Primary Care and Health Systems, ICES, Toronto, Canada.
Department of Family and Community Medicine and the Institute of Health Policy, Management and Evaluation, University of Toronto, Toronto, Canada.
J Health Organ Manag. 2021 Jul 26;ahead-of-print(ahead-of-print):733-43. doi: 10.1108/JHOM-05-2020-0171.
The authors developed and validated an algorithm using health administrative data to identify patients who are attached or uncertainly attached to a primary care provider (PCP) using patient responses to a survey conducted in Ontario, Canada.
DESIGN/METHODOLOGY/APPROACH: The authors conducted a validation study using as a reference standard respondents to a community-based survey who indicated they did or did not have a PCP. The authors developed and tested health administrative algorithms against this reference standard. The authors calculated the sensitivity, specificity positive predictive value (PPV) and negative predictive value (NPV) on the final patient attachment algorithm. The authors then applied the attachment algorithm to the 2017 Ontario population.
The patient attachment algorithm had an excellent sensitivity (90.5%) and PPV (96.8%), though modest specificity (46.1%) and a low NPV (21.3%). This means that the algorithm assigned survey respondents as being attached to a PCP and when in fact they said they had a PCP, yet a significant proportion of those found to be uncertainly attached had indicated they did have a PCP. In 2017, most people in Ontario, Canada (85.4%) were attached to a PCP but 14.6% were uncertainly attached.
RESEARCH LIMITATIONS/IMPLICATIONS: Administrative data for nurse practitioner's encounters and other interprofessional care providers are not currently available. The authors also cannot separately identify primary care visits conducted in walk in clinics using our health administrative data. Finally, the definition of hospital-based healthcare use did not include outpatient specialty care.
Uncertain attachment to a primary health care provider is a recurrent problem that results in inequitable access in health services delivery. Providing annual reports on uncertainly attached patients can help evaluate primary care system changes developed to improve access. This algorithm can be used by health care planners and policy makers to examine the geographic variability and time trends of the uncertainly attached population to inform the development of programs to improve primary care access.
As primary care is an essential component of a person's medical home, identifying regions or high need populations that have higher levels of uncertainly attached patients will help target programs to support their primary care access and needs. Furthermore, this approach will be useful in future research to determine the health impacts of uncertain attachment to primary care, especially in view of a growing body of the literature highlighting the importance of primary care continuity.
ORIGINALITY/VALUE: This patient attachment algorithm is the first to use existing health administrative data validated with responses from a patient survey. Using patient surveys alone to assess attachment levels is expensive and time consuming to complete. They can also be subject to poor response rates and recall bias. Utilizing existing health administrative data provides more accurate, timely estimates of patient attachment for everyone in the population.
作者开发并验证了一种算法,该算法使用健康管理数据来识别加拿大安大略省调查中对调查做出回应的患者是否与初级保健提供者(PCP)建立联系或不确定联系。
设计/方法/方法:作者使用社区为基础的调查中的受访者作为参考标准进行了验证研究,这些受访者表示他们是否有 PCP。作者针对该参考标准开发并测试了健康管理算法。作者在最终的患者附件算法上计算了灵敏度、特异性、阳性预测值(PPV)和阴性预测值(NPV)。然后,作者将附件算法应用于 2017 年的安大略省人群。
患者附件算法具有出色的灵敏度(90.5%)和 PPV(96.8%),尽管特异性适中(46.1%),NPV 较低(21.3%)。这意味着该算法将调查受访者分配为与 PCP 建立联系,而实际上他们表示他们有 PCP,但相当一部分不确定联系的患者表示他们确实有 PCP。2017 年,加拿大安大略省大多数人(85.4%)与 PCP 建立了联系,但 14.6%的人不确定联系。
研究限制/影响:目前无法获得护士从业者就诊和其他多专业护理提供者的管理数据。作者也无法使用我们的健康管理数据分别识别在步行诊所进行的初级保健就诊。最后,医院为基础的医疗保健使用的定义不包括门诊专科护理。
不确定与初级保健提供者的联系是导致医疗服务提供不公平的反复出现的问题。提供关于不确定联系患者的年度报告有助于评估为改善获得机会而制定的初级保健系统的变化。该算法可由医疗保健规划者和政策制定者使用,以检查不确定联系人群的地理变异性和时间趋势,为改善初级保健机会的方案提供信息。
由于初级保健是个人医疗之家的重要组成部分,因此确定具有更高不确定联系患者水平的地区或高需求人群将有助于针对这些人群的项目,以支持他们获得初级保健的机会和需求。此外,鉴于越来越多的文献强调初级保健连续性的重要性,这种方法在未来的研究中对于确定不确定与初级保健联系的健康影响将非常有用。
原创性/价值:该患者附件算法是第一个使用与患者调查回应相结合的现有健康管理数据进行验证的算法。仅使用患者调查来评估联系水平既昂贵又费时。它们也可能受到较差的回应率和回忆偏差的影响。利用现有的健康管理数据为人群中的每个人提供更准确、及时的患者联系估计。