Predictive modeling for identification of older adults with high utilization of health and social services.

IF 1.9 3区 医学 Q3 HEALTH CARE SCIENCES & SERVICES
Heba Sourkatti, Juha Pajula, Teemu Keski-Kuha, Juha Koivisto, Mika Hilvo, Jaakko Lähteenmäki
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引用次数: 0

Abstract

Aim: Machine learning techniques have demonstrated success in predictive modeling across various clinical cases. However, few studies have considered predicting the use of multisectoral health and social services among older adults. This research aims to utilize machine learning models to detect high-risk groups of excessive health and social services utilization at early stage, facilitating the implementation of preventive interventions.

Methods: We used pseudonymized data covering a four-year period and including information on a total of 33,374 senior citizens from Southern Finland. The endpoint was defined based on the occurrence of unplanned healthcare visits and the total number of different services used. Input features included individual's basic demographics, health status and past usage of healthcare resources. Logistic regression and eXtreme Gradient Boosting (XGBoost) methods were used for binary classification, with the dataset split into 70% training and 30% testing sets.

Results: Subgroup-based results mirrored trends observed in the full cohort, with age and certain health issues, e.g. mental health, emerging as positive predictors for high service utilization. Conversely, hospital stay and urban residence were associated with decreased risk. The models achieved a classification performance (AUC) of 0.61 for the full cohort and varying in the range of 0.55-0.62 for the subgroups.

Conclusions: Predictive models offer potential for predicting future high service utilization in the older adult population. Achieving high classification performance remains challenging due to diverse contributing factors. We anticipate that classification performance could be increased by including features based on additional data categories such as socio-economic data.

建立预测模型,以识别大量使用医疗和社会服务的老年人。
目的:机器学习技术在各种临床病例的预测建模方面取得了成功。然而,很少有研究考虑预测老年人使用多部门医疗和社会服务的情况。本研究旨在利用机器学习模型及早发现过度使用医疗和社会服务的高危人群,从而促进预防性干预措施的实施:我们使用的是假名化数据,涵盖四年时间,包括芬兰南部 33374 名老年人的信息。终点是根据计划外就医的发生率和所使用的各种服务的总数来定义的。输入特征包括个人的基本人口统计学特征、健康状况和过去使用医疗资源的情况。二元分类采用逻辑回归和梯度提升(XGBoost)方法,数据集分为 70% 的训练集和 30% 的测试集:基于分组的结果反映了在整个群体中观察到的趋势,年龄和某些健康问题(如精神健康)成为高服务利用率的积极预测因素。相反,住院和居住在城市则会降低风险。整个队列的模型分类性能(AUC)为 0.61,分组的分类性能(AUC)在 0.55-0.62 之间:预测模型为预测老年人群未来的高服务利用率提供了可能。由于各种因素的影响,实现高分类性能仍具有挑战性。我们预计,通过加入基于其他数据类别(如社会经济数据)的特征,可以提高分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.20
自引率
19.00%
发文量
47
审稿时长
>12 weeks
期刊介绍: Scandinavian Journal of Primary Health Care is an international online open access journal publishing articles with relevance to general practice and primary health care. Focusing on the continuous professional development in family medicine the journal addresses clinical, epidemiological and humanistic topics in relation to the daily clinical practice. Scandinavian Journal of Primary Health Care is owned by the members of the National Colleges of General Practice in the five Nordic countries through the Nordic Federation of General Practice (NFGP). The journal includes original research on topics related to general practice and family medicine, and publishes both quantitative and qualitative original research, editorials, discussion and analysis papers and reviews to facilitate continuing professional development in family medicine. The journal''s topics range broadly and include: • Clinical family medicine • Epidemiological research • Qualitative research • Health services research.
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