确定初级保健中资源分配和使用的患者表型

Stephen P Ford, Rehan Merchant, Avinaash Pavuloori, Ryan Williams, C. Dreisbach, A. Saunders, Christian Wernz, Jonathan Michel
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引用次数: 0

摘要

在一个复杂的医疗系统中,资源分配,包括关于临床和行政人员配置、语言翻译需求和计费程序的决策,是具有挑战性的。在资源有限和患者需求高的情况下,需要识别需要大量医疗、护理和临床服务的患者,以获得最佳护理。本文的目的是确定预测患者表型的因素,个体的一组可观察特征,反映了他们的初级保健资源使用情况。本研究中使用的数据是2019年1月至2021年12月期间未识别的患者水平数据(n=34,957)。我们使用k均值聚类来确定基于初级保健和急诊就诊频率的患者表型。使用多项回归,我们确定了保险类型、合并症评分、年龄、种族、语言、性别、高血压、慢性阿片类药物、肥胖、前驱糖尿病、吸烟、充血性心力衰竭和慢性阻塞性肺疾病作为初级保健使用表型的重要预测因子。对患者资源表型有一个更完整、更全面的了解可以帮助领导者做出关于优化医院资源分配的重要决策。使用我们的方法的未来工作可用于前瞻性地识别高需求资源表型的患者,与平均年使用量的个体相比。
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Patient Phenotypes to Identify Resource Allocation and Usage in Primary Care
Resource allocation, including decisions about clinical and administrative staffing, language interpreter requirements, and billing procedures, is challenging in a complex medical system. In the setting of limited resources and high patient need, identification of patients who require a high amount of medical, nursing, and clinical services need to be identified for optimal care. The purpose of this paper is to identify the factors that predict patient phenotypes, a set of observable characteristics of an individual, that reflect their primary care resource usage. The data used in this study are de-identified, patient level data (n=34,957) between January 2019 to December 2021. We used k-means clustering to identify patient phenotypes based on the frequency of primary care and emergency department visits. Using multinomial regression, we then identified insurance type, comorbidity score, age, race, language, gender, hypertension, chronic opioid, obesity, prediabetes, tobacco usage, congestive heart failure, and chronic obstructive pulmonary disease as significant predictors for the primary care usage phenotypes. Having a more complete, holistic understanding of patient resource phenotypes can help leaders to make important decisions regarding optimal hospital resource allocations. Future work using our methods could be used to prospectively identify patients in high-need resource phenotypes compared to individuals with average annual usage.
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