Evaluation of the Predictive Value of Routinely Collected Health-Related Social Needs Measures.

IF 1.8 4区 医学 Q3 HEALTH CARE SCIENCES & SERVICES Population Health Management Pub Date : 2024-02-01 Epub Date: 2023-10-30 DOI:10.1089/pop.2023.0129
Samuel T Savitz, Shealeigh Inselman, Mark A Nyman, Minji Lee
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Abstract

The objective was to assess the value of routinely collected patient-reported health-related social needs (HRSNs) measures for predicting utilization and health outcomes. The authors identified Mayo Clinic patients with cancer, diabetes, or heart failure. The HRSN measures were collected as part of patient-reported screenings from June to December 2019 and outcomes (hospitalization, 30-day readmission, and death) were ascertained in 2020. For each outcome and disease combination, 4 models were used: gradient boosting machine (GBM), random forest (RF), generalized linear model (GLM), and elastic net (EN). Other predictors included clinical factors, demographics, and area-based HRSN measures-area deprivation index (ADI) and rurality. Predictive performance for models was evaluated with and without the routinely collected HRSN measures as change in area under the curve (AUC). Variable importance was also assessed. The differences in AUC were mixed. Significant improvements existed in 3 models of death for cancer (GBM: 0.0421, RF: 0.0496, EN: 0.0428), 3 models of hospitalization (GBM: 0.0372, RF: 0.0640, EN: 0.0441), and 1 of death (RF: 0.0754) for diabetes, and 1 model of readmissions (GBM: 0.1817), and 3 models of death (GBM: 0.0333, RF: 0.0519, GLM: 0.0489) for heart failure. Age, ADI, and the Charlson comorbidity index were the top 3 in variable importance and were consistently more important than routinely collected HRSN measures. The addition of routinely collected HRSN measures resulted in mixed improvement in the predictive performance of the models. These findings suggest that existing factors and the ADI are more important for prediction in these contexts. More work is needed to identify predictors that consistently improve model performance.

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定期收集的健康相关社会需求测量的预测价值评估。
目的是评估常规收集的患者报告的健康相关社会需求(HRSN)测量对预测利用率和健康结果的价值。作者确定了梅奥诊所的癌症、糖尿病或心力衰竭患者。HRSN测量是作为2019年6月至12月患者报告筛查的一部分收集的,并在2020年确定了结果(住院、30天再次入院和死亡)。对于每种结果和疾病组合,使用了4个模型:梯度增强机(GBM)、随机森林(RF)、广义线性模型(GLM)和弹性网(EN)。其他预测因素包括临床因素、人口统计和基于地区的HRSN测量地区剥夺指数(ADI)和农村地区。使用和不使用常规收集的HRSN测量作为曲线下面积(AUC)的变化来评估模型的预测性能。还评估了变量重要性。AUC的差异是混合的。癌症的3种死亡模型(GBM:0.0421,RF:0.0496,EN:0.0428)、糖尿病的3种住院模型(GBM:0.0372,RF:0.0640,EN:0.00441)和1种死亡模型中(RF:0.0754)、1种再入院模型中(GBM:0.1817)和心力衰竭的3种死亡率模型(GBD:0.0333,RF:0.0519,GLM:0.0489)均存在显著改善。年龄、ADI和Charlson共病指数在变量重要性中排名前三,并且始终比常规收集的HRSN测量更重要。常规收集的HRSN测量的增加导致模型预测性能的混合改善。这些发现表明,在这些情况下,现有因素和ADI对预测更为重要。需要做更多的工作来确定能够持续提高模型性能的预测因素。
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来源期刊
Population Health Management
Population Health Management 医学-卫生保健
CiteScore
4.10
自引率
4.00%
发文量
81
审稿时长
6-12 weeks
期刊介绍: Population Health Management provides comprehensive, authoritative strategies for improving the systems and policies that affect health care quality, access, and outcomes, ultimately improving the health of an entire population. The Journal delivers essential research on a broad range of topics including the impact of social, cultural, economic, and environmental factors on health care systems and practices. Population Health Management coverage includes: Clinical case reports and studies on managing major public health conditions Compliance programs Health economics Outcomes assessment Provider incentives Health care reform Resource management Return on investment (ROI) Health care quality Care coordination.
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