Trenaman Logan, Guh Daphne, Bryan Stirling, McGrail Kimberlyn, Karim Mohammad Ehsanul, Sawatzky Rick, Yu Maggie, Parker Marilyn, Wheeler Kathleen, Harrison Mark
Department of Health Systems and Population Health, School of Public Health, University of Washington, 3980 15th Ave NE, Fourth Floor, Box 351621, Seattle, WA, 98195, USA.
Centre for Advancing Health Outcomes, St. Paul's Hospital, Vancouver, BC, Canada.
Qual Life Res. 2025 Jul 9. doi: 10.1007/s11136-025-04008-8.
Improving the outcomes for high-need, high-cost (HNHC) patients requires accurately predicting who will become an HNHC patient. The objectives of this study are to: (1) develop models to predict individuals at risk of becoming future HNHC patients, and (2) compare the performance of predictive models with and without patient-reported data.
We used data from two patient-reported surveys datasets from British Columbia, Canada (inpatient and emergency department (ED) surveys) and linked administrative data. Our outcome was being an HNHC patient in the year following survey completion (i.e., incurring costs in the top 5% of the population). We compared two predictor sets, including a standard set (demographic, clinical, and resource use/cost) and an enhanced set (which included patient-reported data), across five model types. We assessed performance using measures of discrimination (c-statistic, and cost capture) calibration (calibration curve), and clinical usefulness (decision curve analysis).
Our final sample size was 11,964 for the inpatient survey and 11,144 for the ED survey. Models exhibited good discrimination and calibration. The addition of patient-reported data improved discrimination as measured by the c-statistic (from 0.83, 95% CI: 0.77-0.86 to 0.85, 95% CI: 0.80-0.88 for the logistic regression model from the ED survey), and cost capture (from 0.52, 95% CI: 0.40-0.67 to 0.62, 95% CI: 0.48-0.76). The decision curve analysis demonstrated that the enhanced models provided the highest net benefit across a range of thresholds.
Patient-reported data improved the discriminative performance of models to predict HNHC patients, particularly for those with the highest health care costs.
改善高需求、高成本(HNHC)患者的治疗效果需要准确预测谁会成为HNHC患者。本研究的目的是:(1)开发模型以预测未来有成为HNHC患者风险的个体,以及(2)比较有无患者报告数据的预测模型的性能。
我们使用了来自加拿大不列颠哥伦比亚省的两个患者报告调查数据集(住院患者和急诊科(ED)调查)以及相关行政数据。我们的结局是在调查完成后的一年内成为HNHC患者(即费用处于人群前5%)。我们在五种模型类型中比较了两个预测变量集,包括一个标准集(人口统计学、临床和资源使用/成本)和一个增强集(包括患者报告数据)。我们使用区分度指标(c统计量和成本捕获)、校准(校准曲线)和临床实用性(决策曲线分析)来评估性能。
住院患者调查的最终样本量为11964例,急诊科调查的为11144例。模型表现出良好的区分度和校准。添加患者报告数据改善了区分度,如通过c统计量衡量(急诊科调查的逻辑回归模型从0.83,95%CI:0.77 - 0.86提高到0.85,95%CI:0.80 - 0.88)以及成本捕获(从0.52,95%CI:0.40 - 0.67提高到0.62,95%CI:0.48 - 0.76)。决策曲线分析表明,增强模型在一系列阈值范围内提供了最高的净效益。
患者报告数据改善了预测HNHC患者模型的区分性能,特别是对于那些医疗费用最高的患者。