Identifying High-Need Primary Care Patients Using Nursing Knowledge and Machine Learning Methods

被引:6
作者
Hewner, Sharon [1 ,2 ]
Smith, Erica [1 ]
Sullivan, Suzanne S. [1 ]
机构
[1] Univ Buffalo, State Univ New York, Sch Nursing, Dept Family Community & Hlth Syst Sci, Buffalo, NY USA
[2] Univ Buffalo, Sch Nursing, 3435 Main St,311 Wende Hall, Buffalo, NY 14214 USA
来源
APPLIED CLINICAL INFORMATICS | 2023年 / 14卷 / 03期
基金
美国医疗保健研究与质量局;
关键词
social determinants of health; phenotypes; primary care; nursing; machine learning; care coordination; HEALTH; BIAS;
D O I
10.1055/a-2048-7343
中图分类号
R-058 [];
学科分类号
摘要
Background Patient cohorts generated by machine learning can be enhanced with clinical knowledge to increase translational value and provide a practical approach to patient segmentation based on a mix of medical, behavioral, and social factors.Objectives This study aimed to generate a pragmatic example of how machine learning could be used to quickly and meaningfully cohort patients using unsupervised classification methods. Additionally, to demonstrate increased translational value of machine learning models through the integration of nursing knowledge.Methods A primary care practice dataset ( N = 3,438) of high-need patients defined by practice criteria was parsed to a subset population of patients with diabetes ( n = 1233). Three expert nurses selected variables for k-means cluster analysis using knowledge of critical factors for care coordination. Nursing knowledge was again applied to describe the psychosocial phenotypes in four prominent clusters, aligned with social and medical care plans.Results Four distinct clusters interpreted and mapped to psychosocial need profiles, allowing for immediate translation to clinical practice through the creation of actionable social and medical care plans. (1) A large cluster of racially diverse female, non-English speakers with low medical complexity, and history of childhood illness; (2) a large cluster of English speakers with significant comorbidities (obesity and respiratory disease); (3) a small cluster of males with substance use disorder and significant comorbidities (mental health, liver and cardiovascular disease) who frequently visit the hospital; and (4) a moderate cluster of older, racially diverse patients with renal failure.Conclusion This manuscript provides a practical method for analysis of primary care practice data using machine learning in tandem with expert clinical knowledge.
引用
收藏
页码:408 / 417
页数:10
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