Development and external validation of a risk prediction model for depression in patients with coronary heart disease

IF 4.9 2区 医学 Q1 CLINICAL NEUROLOGY
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引用次数: 0

Abstract

Background

Depression is an independent risk factor for adverse outcomes of coronary heart disease (CHD). This study aimed to develop a depression risk prediction model for CHD patients.

Methods

This study utilized data from the National Health and Nutrition Examination Survey (NHANES). In the training set, reference literature, logistic regression, LASSO regression, optimal subset algorithm, and machine learning random forest algorithm were employed to screen prediction variables, respectively. The optimal prediction model was selected based on the C-index, Net Reclassification Improvement (NRI), and Integrated Discrimination Improvement (IDI). A nomogram for the optimal prediction model was constructed. 3 external validations were performed.

Results

The training set comprised 1375 participants, with a depressive symptoms prevalence of 15.2 %. The optimal prediction model was constructed using predictors obtained from optimal subsets algorithm (C-index = 0.774, sensitivity = 0.751, specificity = 0.685). The model includes age, gender, education, marriage, diabetes, tobacco use, antihypertensive drugs, high-density lipoprotein cholesterol (HDLC), and aspartate aminotransferase (AST). The model demonstrated consistent discrimination ability, accuracy, and clinical utility across the 3 external validations.

Limitations

The applicable population of the model is CHD patients. And the clinical benefits of interventions based on the prediction results are still unknown.

Conclusion

We developed a depression risk prediction model for CHD patients, which was presented in the form of a nomogram for clinical application.

冠心病患者抑郁风险预测模型的开发和外部验证。
背景:抑郁症是冠心病(CHD)不良后果的独立风险因素。本研究旨在为冠心病患者建立抑郁风险预测模型:本研究利用了美国国家健康与营养调查(NHANES)的数据。在训练集中,分别采用了参考文献、逻辑回归、LASSO 回归、最优子集算法和机器学习随机森林算法来筛选预测变量。根据 C 指数、净重分类改进(NRI)和综合歧视改进(IDI)选出最佳预测模型。构建了最佳预测模型的提名图。进行了 3 次外部验证:训练集由 1375 名参与者组成,抑郁症状发生率为 15.2%。利用最优子集算法获得的预测因子构建了最优预测模型(C 指数 = 0.774,灵敏度 = 0.751,特异性 = 0.685)。该模型包括年龄、性别、教育程度、婚姻、糖尿病、吸烟、服用降压药、高密度脂蛋白胆固醇(HDLC)和天冬氨酸氨基转移酶(AST)。该模型在 3 次外部验证中表现出一致的辨别能力、准确性和临床实用性:局限性:该模型的适用人群是冠心病患者。局限性:该模型的适用人群为心脏病患者,根据预测结果进行干预的临床益处尚不清楚:我们为冠心病患者建立了抑郁风险预测模型,并以提名图的形式呈现,供临床应用。
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
Journal of affective disorders
Journal of affective disorders 医学-精神病学
CiteScore
10.90
自引率
6.10%
发文量
1319
审稿时长
9.3 weeks
期刊介绍: The Journal of Affective Disorders publishes papers concerned with affective disorders in the widest sense: depression, mania, mood spectrum, emotions and personality, anxiety and stress. It is interdisciplinary and aims to bring together different approaches for a diverse readership. Top quality papers will be accepted dealing with any aspect of affective disorders, including neuroimaging, cognitive neurosciences, genetics, molecular biology, experimental and clinical neurosciences, pharmacology, neuroimmunoendocrinology, intervention and treatment trials.
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