Centre for Health Services and Policy Research, The University of British Columbia (UBC), 201-2206 East Mall, Vancouver, BC, V6T 1Z3, Canada.
School of Nursing, UBC, Vancouver, Canada.
BMC Fam Pract. 2020 May 31;21(1):98. doi: 10.1186/s12875-020-01141-w.
Primary care serves all age groups and individuals with health states ranging from those with no chronic conditions to those who are medically complex, or frail and approaching the end of life. For information to be actionable and guide planning, there must be some population disaggregation based on differences in expected needs for care. Promising approaches to segmentation in primary care reflect both the breadth and severity of health states, the types and amounts of health care utilization that are expected, and the roles of the primary care provider. The purpose of this study was to assess population segmentation as a tool to create distinct patient groups for use in primary care performance reporting.
This cross-sectional study used administrative data (patient characteristics, physician and hospital billings, prescription medicines data, emergency department visits) to classify the population of British Columbia (BC), Canada into one of four population segments: low need, multiple morbidities, medically complex, and frail. Each segment was further classified using socioeconomic status (SES) as a proxy for patient vulnerability. Regression analyses were used to examine predictors of health care use, costs and selected measures of primary care attributes (access, continuity, coordination) by segment.
Average annual health care costs increased from the low need ($ 1460) to frail segment ($10,798). Differences in primary care cost by segment only emerged when attributes of primary care were included in regression models: accessing primary care outside business hours and discontinuous primary care (≥5 different GP's in a given year) were associated with higher health care costs across all segments and higher continuity of care was associated with lower costs in the frail segment (cost ratio = 0.61). Additionally, low SES was associated with higher costs across all segments, but the difference was largest in the medically complex group (cost ratio = 1.11).
Population segments based on expected need for care can support primary care measurement and reporting by identifying nuances which may be lost when all patients are grouped together. Our findings demonstrate that variables such as SES and use of regression analyses can further enhance the usefulness of segments for performance measurement and reporting.
初级保健服务面向所有年龄段和健康状况的人群,从没有慢性疾病到病情复杂、体弱多病、接近生命终点的人群。为了使信息具有可操作性并指导规划,必须根据预期护理需求的差异对人群进行一定程度的细分。初级保健中具有前景的细分方法既反映了健康状况的广度和严重程度,也反映了预期的医疗保健利用类型和数量,以及初级保健提供者的角色。本研究旨在评估人群细分作为一种工具,用于创建不同的患者群体,以用于初级保健绩效报告。
本横断面研究使用行政数据(患者特征、医生和医院计费、处方药物数据、急诊就诊)将加拿大不列颠哥伦比亚省(BC)的人群分为四个人群细分:低需求、多种合并症、病情复杂和体弱多病。每个细分群体还使用社会经济地位(SES)作为患者脆弱性的替代指标进一步分类。回归分析用于检查每个细分群体的医疗保健使用、成本和初级保健特征(可及性、连续性、协调性)的选定指标的预测因素。
低需求人群的年平均医疗保健费用为 1460 加元,而体弱多病人群的费用则增加到 10798 加元。只有当将初级保健特征纳入回归模型时,细分群体之间的初级保健成本差异才会出现:在所有细分群体中,夜间和不连续的初级保健(在给定年份中与 5 个以上不同的全科医生就诊)与更高的医疗保健成本相关,而在体弱多病的细分群体中,更高的连续性护理与更低的成本相关(成本比=0.61)。此外,低 SES 与所有细分群体的成本增加相关,但在病情复杂的群体中差异最大(成本比=1.11)。
基于预期护理需求的人群细分可以支持初级保健的测量和报告,通过识别当所有患者都归为一组时可能会丢失的细微差别。我们的研究结果表明,SES 等变量和回归分析的使用可以进一步增强细分群体在绩效测量和报告方面的有用性。