Networks and clusters of immunometabolic biomarkers and depression-associated features in middle-aged and older community-dwelling US adults with and without depression

IF 3.5 Q2 IMMUNOLOGY
Asma Hallab , The Health and Aging Brain Study (HABS-HD) Study Team
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Abstract

Introduction

Therapy-resistant depression is associated with higher levels of systemic inflammation and increased odds of metabolic disorders. It is, therefore, crucial to identify the biomarkers of high-risk individuals and understand the key features of depression-immunometabolic networks.

Methods

The multiethnic ≥50-year-old study population is a subset of the Health and Aging Brain Study: Health Disparities (HABS-HD) study. Spearman's rank correlation network analysis was performed between immunological, metabolic, and subscales of the Geriatric Depression Scale (GDS). Significant correlations were then evaluated using a multivariable linear regression analysis, including testing for non-linearity and clinical cutoffs.

Results

Two clusters were formed: the first included the immunometabolic biomarkers, and the second included the different subscales of GDS. The two clusters were significantly correlated at six edges. IL-6 and HbA1c were significantly correlated with anhedonic and melancholic features. Abdominal circumference and BMI were significantly correlated with anhedonic features. In the subgroup without current depression, IL-6 and Abdominal circumference maintained a significant edge with anhedonic features. TNF-alpha/melancholia and IL-6/cognitive concerns were additional relevant edges in older adults. The observed correlations remained statistically significant in the confounder-adjusted regression analysis and followed specific patterns.

Conclusions

Symptom clustering showed its superiority over relying on dichotomized depression diagnoses for identifying relevant immunometabolic biomarkers. This study is a first step toward understanding the particularities of immunometabolic depression for better risk stratification and to direct personalized preventive and therapeutic strategies in multiethnic aging populations.

Abstract Image

美国中老年社区居民中有或无抑郁症的免疫代谢生物标志物的网络和集群以及抑郁相关特征
治疗抵抗性抑郁症与更高水平的全身性炎症和代谢紊乱的几率增加有关。因此,确定高危个体的生物标志物和了解抑郁症免疫代谢网络的关键特征是至关重要的。方法多民族≥50岁的研究人群是健康与衰老脑研究:健康差异(HABS-HD)研究的一个子集。在老年抑郁量表(GDS)的免疫、代谢和亚量表之间进行Spearman等级相关网络分析。然后使用多变量线性回归分析评估显著相关性,包括非线性检验和临床截止点。结果形成两类:一类是免疫代谢生物标志物,一类是GDS各亚量表。两类聚类在6条边显著相关。IL-6、HbA1c与快乐缺乏症、忧郁症特征显著相关。腹围和BMI与快感缺乏特征显著相关。在没有当前抑郁的亚组中,IL-6和腹围保持明显的边缘,具有快感缺乏特征。在老年人中,tnf - α /忧郁症和IL-6/认知问题是额外的相关优势。在混杂校正回归分析中,观察到的相关性仍然具有统计学意义,并遵循特定的模式。结论症状聚类在识别相关免疫代谢生物标志物方面优于依赖抑郁症二分类诊断。这项研究是了解免疫代谢抑郁症的特殊性的第一步,可以更好地进行风险分层,并指导多民族老龄化人群的个性化预防和治疗策略。
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
Brain, behavior, & immunity - health
Brain, behavior, & immunity - health Biological Psychiatry, Behavioral Neuroscience
CiteScore
8.50
自引率
0.00%
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0
审稿时长
97 days
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