Trajectories of depressive symptoms, metabolic syndrome, inflammation, and cardiometabolic diseases: A longitudinal Bayesian network approach.

IF 7.6 2区 医学 Q1 IMMUNOLOGY
Arja O Rydin, Yuri Milaneschi, Femke Lamers, Rick Quax, Noah van de Bunt, Angela Koloi, Bennard Doornbos, Brenda W J H Penninx
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Abstract

Introduction: Both cardiometabolic diseases (CMD) and depression carry high burden of disease and have a striking bi-directional comorbidity. Understanding mechanisms of this comorbidity is key in improving health outcomes. Through Bayesian network analysis and quantitative centrality assessments we disentangled longitudinal associational pathways connecting depressive symptoms with immuno-metabolic dysregulations and CMD.

Methods: Data are from the Netherlands Study of Depression and Anxiety (NESDA), an ongoing longitudinal cohort study. Subjects (N = 1059, 68 % female, mean age 42.4 ± 12.5) had a lifetime depression diagnosis at baseline, and data at baseline, 2-, 6- and 9-year follow-up. Variables included depressive symptoms, metabolic syndrome components, inflammation, diabetes and atherosclerotic disease. Individual changes over time, determined using generalised mixed models, were fed into a Bayesian network model, resulting in a directed acyclic graph (DAG). For centrality evaluation, indegree and outdegree of variables (nodes) were assessed.

Results: The DAG showed a path starting with the depressive symptom low energy, leading to appetite/weight alterations and hypersomnia, ultimately leading to the nodes of diabetes and markers related to dyslipidaemia and inflammation. Waist circumference was the node with highest centrality. This result remained robust in sensitivity analyses.

Discussion: The findings traced a pathway linking specific energy-related depressive symptoms (e.g. low energy, appetite/weight oscillations and hypersomnia) to inflammation, dyslipidaemia and diabetes. Depressive symptoms and biological markers connected in this identified pathway may provide a valuable target to reduce cardiometabolic risk related to depression.

抑郁症状、代谢综合征、炎症和心脏代谢疾病的轨迹:纵向贝叶斯网络方法。
心代谢疾病(CMD)和抑郁症都是高负担的疾病,具有显著的双向合并症。了解这种合并症的机制是改善健康结果的关键。通过贝叶斯网络分析和定量中心性评估,我们解开了将抑郁症状与免疫代谢失调和CMD联系起来的纵向关联途径。方法:数据来自荷兰抑郁和焦虑研究(NESDA),这是一项正在进行的纵向队列研究。受试者(N = 1059,女性68% %,平均年龄42.4 ± 12.5)基线时诊断为终生抑郁,基线、2年、6年和9年随访数据。变量包括抑郁症状、代谢综合征成分、炎症、糖尿病和动脉粥样硬化疾病。使用广义混合模型确定的个体随时间的变化被输入贝叶斯网络模型,从而产生有向无环图(DAG)。对于中心性评价,评估了变量(节点)的度和度。结果:DAG表现出从抑郁症状低能开始,导致食欲/体重改变和嗜睡,最终导致糖尿病节点和血脂异常和炎症相关标志物的路径。腰围是中心性最高的节点。这一结果在敏感性分析中仍然是稳健的。讨论:研究结果追踪了与特定能量相关的抑郁症状(如低能量、食欲/体重波动和嗜睡)与炎症、血脂异常和糖尿病之间的联系途径。抑郁症状和与这一途径相关的生物标志物可能为降低与抑郁相关的心脏代谢风险提供有价值的靶点。
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来源期刊
CiteScore
29.60
自引率
2.00%
发文量
290
审稿时长
28 days
期刊介绍: Established in 1987, Brain, Behavior, and Immunity proudly serves as the official journal of the Psychoneuroimmunology Research Society (PNIRS). This pioneering journal is dedicated to publishing peer-reviewed basic, experimental, and clinical studies that explore the intricate interactions among behavioral, neural, endocrine, and immune systems in both humans and animals. As an international and interdisciplinary platform, Brain, Behavior, and Immunity focuses on original research spanning neuroscience, immunology, integrative physiology, behavioral biology, psychiatry, psychology, and clinical medicine. The journal is inclusive of research conducted at various levels, including molecular, cellular, social, and whole organism perspectives. With a commitment to efficiency, the journal facilitates online submission and review, ensuring timely publication of experimental results. Manuscripts typically undergo peer review and are returned to authors within 30 days of submission. It's worth noting that Brain, Behavior, and Immunity, published eight times a year, does not impose submission fees or page charges, fostering an open and accessible platform for scientific discourse.
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