Construction and validation of a predictive model for suicidal ideation in non-psychiatric elderly inpatients.

IF 3.4 2区 医学 Q2 GERIATRICS & GERONTOLOGY
Shuyun Xiong, Dongxu Si, Meizhu Ding, Cuiying Tang, Jinling Zhu, Danni Li, Ying Lei, Lexian Huang, Xiaohua Chen, Jicai Chen
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引用次数: 0

Abstract

Background: Suicide poses a substantial public health challenge globally, with the elderly population being particularly vulnerable. Research into suicide risk factors among elderly inpatients with non-psychiatric disorders remains limited. This investigation focused on crafting a machine learning-based prediction model for suicidal ideation (SI) in this population to aid suicide prevention efforts in general hospitals.

Methods: A total of 807 non-psychiatric elderly inpatients aged over 60 were assessed using demographic and clinical data, and SI was measured using the Patient Health Questionnaire-9 (PHQ-9). Data were processed utilizing machine learning algorithms, and predictive models were developed using multiple logistic regression, Nomogram, and Random Forest models.

Results: Key predictors included PHQ-8, Athens Insomnia Scale, hospitalization frequency, Perceived Social Support from Family scale, comorbidities, income, and employment status. Both models demonstrated excellent predictive performance, with AUC values exceeding 0.9 for both training and test sets. Notably, the Random Forest model outperformed others, achieving an AUC of 0.958, with high accuracy (0.952), precision (0.962), sensitivity (0.987), and an F1 score of 0.974.

Conclusion: These models offer valuable tools for suicide risk prediction in elderly non-psychiatric inpatients, supporting clinical prevention strategies.

非精神科住院老年患者自杀意念预测模型的构建与验证。
背景:自杀对全球公共卫生构成重大挑战,老年人尤其脆弱。对非精神疾病老年住院患者自杀风险因素的研究仍然有限。本研究的重点是在这一人群中建立一个基于机器学习的自杀意念(SI)预测模型,以帮助综合医院预防自杀。方法:采用人口学和临床资料对807例60岁以上非精神科老年住院患者进行评估,并采用患者健康问卷-9 (PHQ-9)测量SI。使用机器学习算法处理数据,并使用多元逻辑回归、Nomogram和Random Forest模型建立预测模型。结果:主要预测因素包括PHQ-8、雅典失眠症量表、住院频率、家庭社会支持量表、合并症、收入和就业状况。两种模型都表现出出色的预测性能,训练集和测试集的AUC值都超过0.9。值得注意的是,随机森林模型优于其他模型,AUC为0.958,准确度(0.952),精度(0.962),灵敏度(0.987),F1得分为0.974。结论:这些模型为老年非精神病住院患者的自杀风险预测提供了有价值的工具,为临床预防策略提供了支持。
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来源期刊
BMC Geriatrics
BMC Geriatrics GERIATRICS & GERONTOLOGY-
CiteScore
5.70
自引率
7.30%
发文量
873
审稿时长
20 weeks
期刊介绍: BMC Geriatrics is an open access journal publishing original peer-reviewed research articles in all aspects of the health and healthcare of older people, including the effects of healthcare systems and policies. The journal also welcomes research focused on the aging process, including cellular, genetic, and physiological processes and cognitive modifications.
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