Area Deprivation and Patient Complexity Predict Low-Value Health Care Utilization in Persons With Heart Failure.

IF 2.2 4区 医学 Q1 NURSING Nursing Research Pub Date : 2024-11-15 DOI:10.1097/NNR.0000000000000794
Kathryn M Ledwin, Sabrina Casucci, Suzanne S Sullivan, Sharon Hewner
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Abstract

Background: Heart failure is a debilitating condition affecting over 6.7 million adults in the United States. Social risks and complexity, or personal, social, and clinical aspects of persons' experiences, have been found to influence health care utilization and hospitalizations in persons with HF. Low-value utilization, or irregular outpatient visits with frequent emergency room use, or hospitalization is common among persons with complex conditions and social risk and requires further investigation in the heart failure population.

Objective: The purpose of this research was to assess the influence of complexity and social risk on low-value utilization in persons with heart failure using machine learning approaches.

Methods: Supervised machine learning, tree-based predictive modeling was conducted on an existing data set of adults with heart failure in the eight-county region of Western New York for the year 2022. Decision tree and random forest models were validated using a 70/30 training/testing data set and k-fold cross-validation. The models were compared for accuracy and interpretability using the area under the curve, Matthew's correlation coefficient, sensitivity, specificity, precision, and negative predictive value.

Results: Area deprivation index, a proxy for social risk, number of chronic conditions, age, and substance use disorders were predictors of low-value utilization in both the decision tree and random forest models. The decision tree model performed moderately, while the random forest model performed excellently and added hardship as an additional important variable.

Discussion: This is the first known study to look at the outcome of low-value utilization, targeting individuals who are underutilizing outpatient services. The random forest model performed better than the decision tree; however, features were similar in both models, with area deprivation index as the key variable in predicting low-value utilization. The decision tree was able to produce specific cutoff points, making it more interpretable and useful for clinical application. Both models can be used to create clinical tools for identifying and targeting individuals for intervention and follow-up.

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区域剥夺和患者复杂性预测心力衰竭患者的低价值医疗保健利用。
背景:心力衰竭是一种使人衰弱的疾病,影响着美国670多万成年人。社会风险和复杂性,或个人、社会和临床方面的个人经历,已被发现影响心衰患者的医疗保健利用和住院治疗。低价值使用,或不定期门诊就诊,频繁使用急诊室,或住院在复杂情况和社会风险人群中很常见,需要在心力衰竭人群中进一步调查。目的:本研究的目的是利用机器学习方法评估复杂性和社会风险对心力衰竭患者低价值利用的影响。方法:对2022年纽约西部八县地区成人心力衰竭的现有数据集进行监督机器学习,基于树的预测建模。决策树和随机森林模型使用70/30的训练/测试数据集和k-fold交叉验证进行验证。使用曲线下面积、马修相关系数、敏感性、特异性、精度和负预测值对模型的准确性和可解释性进行比较。结果:在决策树和随机森林模型中,区域剥夺指数、慢性病数量、年龄和物质使用障碍都是低价值利用的预测因子。决策树模型表现一般,而随机森林模型表现优异,并将困难作为一个额外的重要变量。讨论:这是第一个已知的研究,着眼于低价值利用的结果,目标是利用门诊服务不足的个人。随机森林模型优于决策树模型;然而,两种模型的特征相似,面积剥夺指数是预测低值利用的关键变量。决策树能够产生特定的截止点,使其更易于解释,对临床应用更有用。这两种模型都可以用来创建临床工具,用于识别和针对个体进行干预和随访。
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来源期刊
Nursing Research
Nursing Research 医学-护理
CiteScore
3.60
自引率
4.00%
发文量
102
审稿时长
6-12 weeks
期刊介绍: Nursing Research is a peer-reviewed journal celebrating over 60 years as the most sought-after nursing resource; it offers more depth, more detail, and more of what today''s nurses demand. Nursing Research covers key issues, including health promotion, human responses to illness, acute care nursing research, symptom management, cost-effectiveness, vulnerable populations, health services, and community-based nursing studies. Each issue highlights the latest research techniques, quantitative and qualitative studies, and new state-of-the-art methodological strategies, including information not yet found in textbooks. Expert commentaries and briefs are also included. In addition to 6 issues per year, Nursing Research from time to time publishes supplemental content not found anywhere else.
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