利用基层医疗中的地区贫困指数预测患者健康问卷-2 筛选阳性结果。

IF 1.7 4区 医学 Q2 NURSING
Clinical Nursing Research Pub Date : 2024-06-01 Epub Date: 2024-05-27 DOI:10.1177/10547738241252887
Martha Duarte, Mayra Salamanca, Juan M Gonzalez, Roberto Roman Laporte, Karina Gattamorta, Fernando Enrique Lopez Martinez, John Clochesy, Juan Carlos Rincon Acuna
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引用次数: 0

摘要

抑郁症是美国公认的重大公共卫生问题。美国全国药物使用和健康调查报告显示,2020 年有 2,100 万 18 岁或以上的成年人患有重度抑郁症,其中 1,480 万人经历过重度抑郁发作,并伴有严重损伤。该研究旨在通过分析一系列变量,包括社会经济状况、人口特征和健康行为,预测初级医疗机构中患者的患者健康问卷-2(PHQ-2)结果的阳性率,从而识别出抑郁症高危人群。该研究采用机器学习方法,利用南佛罗里达州 15 家初级保健诊所电子健康记录中的回顾性数据,探讨健康的社会决定因素(SDoH),包括贫困地区指数(ADI)和 PHQ-2 阳性之间的关系。这项研究涵盖了位于南佛罗里达州的 15 家初级保健诊所,在这些诊所接受治疗的病人群体多种多样。分析包括 94,572 次患者就诊;74,636 份记录被纳入研究。如果没有 zip+4 或 ADI 分数,则该就诊记录不纳入最终分析。筛查包括 PHQ-2,评估抑郁情绪和失乐症,分界线大于 2 表示筛查阳性。通过将患者的居住地邮政编码与 ADI 全国百分位数进行匹配,使用 ADI 评估 SDoH。研究还对人口统计学、性史、烟草使用、咖啡因摄入量和社区参与情况进行了评估。研究人员使用包括 Scikit-learn 和 Python 统计模型在内的软件工具,探索了 40 多种机器学习算法在预测 PHQ-2 结果方面的准确性。对变量进行标准化、评分,然后对其进行预测回归模型,其中随机森林模型表现突出。特征工程和相关性分析发现,ADI、年龄、教育程度、就诊类型、咖啡摄入量和婚姻状况是 PHQ-2 阳性的重要预测因素。不同诊所的曲线下面积和模型准确性各不相同,特定诊所的预测准确性高于其他诊所(P > .05)。研究得出结论,ADI 作为 SDoH 的替代指标,与其他个体因素一起,可以预测 PHQ-2 阳性率。医疗机构可以利用这一信息来预测健康需求和资源分配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Positive Patient Health Questionnaire-2 Screening Using Area Deprivation Index in Primary Care.

Depression is recognized as a significant public health issue in the United States. The National Survey on Drug Use and Health reports that 21.0 million adults aged 18 or older had major depressive disorder in 2020, including 14.8 million experiencing a major depressive episode with severe impairment. The aim is to predict the positivity of Patient Health Questionnaire-2 (PHQ-2) outcomes among patients in primary care settings by analyzing a range of variables, including socioeconomic status, demographic characteristics, and health behaviors, thereby identifying those at increased risk for depression. Employing a machine learning approach, the study utilizes retrospective data from electronic health records across 15 primary care clinics in South Florida to explore the relationship between social determinants of health (SDoH), including area of deprivation index (ADI) and PHQ-2 positivity. The study encompasses 15 primary care clinics located in South Florida, where a diverse patient population receives care. Analysis included 94,572 patient visits; 74,636 records were included in the study. If a zip+4 was not available or an ADI score did not exist, the visit was not included in the final analysis. Screening involved the PHQ-2, assessing depressed mood and anhedonia, with a cutoff >2 indicating positive screening. ADI was used to assess SDoH by matching patients' residential postal codes to ADI national percentiles. Demographics, sexual history, tobacco use, caffeine intake, and community involvement were also evaluated in the study. Over 40 machine learning algorithms were explored for their accuracy in predicting PHQ-2 outcomes, using software tools including Scikit-learn and stats models in Python. Variables were normalized, scored, and then subjected to predictive regression models, with Random Forest showing outstanding performance. Feature engineering and correlation analysis identified ADI, age, education, visit type, coffee intake, and marital status as significant predictors of PHQ-2 positivity. The area under the curve and model accuracies varied across clinics, with specific clinics showing higher predictive accuracy and others (p > .05). The study concludes that the ADI, as a proxy for SDoH, alongside other individual factors, can predict PHQ-2 positivity. Health organizations can use this information to anticipate health needs and resource allocation.

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来源期刊
CiteScore
3.40
自引率
5.90%
发文量
107
审稿时长
>12 weeks
期刊介绍: Clinical Nursing Research (CNR) is a peer-reviewed quarterly journal that addresses issues of clinical research that are meaningful to practicing nurses, providing an international forum to encourage discussion among clinical practitioners, enhance clinical practice by pinpointing potential clinical applications of the latest scholarly research, and disseminate research findings of particular interest to practicing nurses. This journal is a member of the Committee on Publication Ethics (COPE).
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