A Predefined Rule-Based Multi-Factor Risk Stratification Is Associated With Improved Outcomes at a Rural Primary Care Practice.

IF 1.5 4区 医学 Q3 FAMILY STUDIES Family & Community Health Pub Date : 2024-07-01 Epub Date: 2024-05-10 DOI:10.1097/FCH.0000000000000405
Laith Abu Lekham, Ellen Hey, Jose Canario, Yissette Rivas, Amanda Felice, Tiffani Mantegna, Yong Wang, Mohammad T Khasawneh
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Abstract

This study built a predefined rule-based risk stratification paradigm using 19 factors in a primary care setting that works with rural communities. The factors include medical and nonmedical variables. The nonmedical variables represent 3 demographic attributes and one other factor represents transportation availability. Medical variables represent major clinical variables such as blood pressure and BMI. Many risk stratification models are found in the literature but few integrate medical and nonmedical variables, and to our knowledge, no such model is designed specifically for rural communities. The data used in this study contain the associated variables of all medical visits in 2021. Data from 2022 were used to evaluate the model. After our risk stratification model and several interventions were adopted in 2022, the percentage of patients with high or medium risk of deteriorating health outcomes dropped from 34.9% to 24.4%, which is a reduction of 30%. The medium-complex patient population size, which had been 29% of all patients, decreased by about 4% to 5.7%. According to the analysis, the total risk score showed a strong correlation with 3 risk factors: dual diagnoses, the number of seen providers, and PHQ9 (0.63, 0.54, and 0.45 correlation coefficients, respectively).

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基于预定义规则的多因素风险分层与改善农村初级保健实践的结果有关。
这项研究在为农村社区提供初级医疗服务的环境中,利用 19 个因素建立了一个预定义的基于规则的风险分层范例。这些因素包括医疗和非医疗变量。非医疗变量代表 3 个人口统计学属性,另一个因素代表交通可用性。医疗变量代表血压和体重指数等主要临床变量。文献中发现了许多风险分层模型,但很少有将医疗和非医疗变量整合在一起的,而且据我们所知,还没有专门针对农村社区设计的此类模型。本研究使用的数据包含 2021 年所有医疗就诊的相关变量。2022 年的数据用于评估模型。在 2022 年采用我们的风险分层模型和多项干预措施后,健康状况恶化的高风险或中度风险患者的比例从 34.9% 降至 24.4%,降幅达 30%。中度复杂患者人数占所有患者的 29%,下降了约 4%,降至 5.7%。分析结果显示,风险总分与 3 个风险因素有很强的相关性:双重诊断、就诊医疗机构数量和 PHQ9(相关系数分别为 0.63、0.54 和 0.45)。
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来源期刊
CiteScore
2.70
自引率
4.30%
发文量
69
期刊介绍: Family & Community Health is a practical quarterly which presents creative, multidisciplinary perspectives and approaches for effective public and community health programs. Each issue focuses on a single timely topic and addresses issues of concern to a wide variety of population groups with diverse ethnic backgrounds, including children and the elderly, men and women, and rural and urban communities.
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