Circulating inflammatory markers predict depressive symptomatology in COVID-19 survivors

IF 3.7 3区 医学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY Cytokine Pub Date : 2025-02-01 DOI:10.1016/j.cyto.2024.156839
Mariagrazia Palladini , Mario Gennaro Mazza , Rebecca De Lorenzo , Sara Spadini , Veronica Aggio , Margherita Bessi , Federico Calesella , Beatrice Bravi , Patrizia Rovere-Querini , Francesco Benedetti , COVID-19 BioB Outpatient Clinic Study group
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Abstract

Growing evidence suggests the neurobiological mechanism upholding post-COVID-19 depression mainly relates to immune response and subsequent unresolved low-grade inflammation. Herein we exploit a broad panel of cytokines serum levels measured in COVID-19 survivors at one- and three-month since infection to predict post-COVID-19 depression.
87 COVID survivors were screened for depressive symptomatology at one- and three-month after discharge through the Beck Depression Inventory (BDI-13) and the Zung Self-Rating Depression Scale (ZSDS) at San Raffaele Hospital. Blood samples were collected at both timepoints and analyzed through Luminex. We entered one-month 42 inflammatory compounds into two separate penalized logistic regression models to evaluate their reliability in identifying COVID-19 survivors suffering from clinical depression at the two timepoints, applied within a machine learning routine. Delta values of analytes lowering between timepoints were entered in a third model predicting presence long-term depression. 5000 bootstraps were computed to determine significance of predictors.
The cross-sectional model reached a balance accuracy (BA) of 76 % and a sensitivity of 70 %. Post-COVID-19 depression was predicted by high levels of CCL17, CCL22. On the other hand, CXCL10, CCL2, CCL3, CCL8, CXCL5, CCL15, CCL23, CXCL13, and GM-CSF showed protective effects. The longitudinal model obtained good performance as well (BA = 74 % and sensitivity = 68 %), revealing CXCL16 and CCL25 as additional drivers of clinical depression. Moreover, dynamic changes of analytes over time accurately predicted long-term depression (BA = 76 % and sensitivity = 75 %).
Our findings unveil a putative immune profile upholding post-COVID-19 depression, thus reinforcing the need to deepen molecular mechanisms to appropriately target depression.
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循环炎症标志物预测COVID-19幸存者的抑郁症状
越来越多的证据表明,支持covid -19后抑郁的神经生物学机制主要与免疫反应和随后未解决的低度炎症有关。在此,我们利用在感染后1个月和3个月在COVID-19幸存者中测量的广泛的细胞因子血清水平来预测COVID-19后抑郁。在圣拉斐尔医院,通过贝克抑郁量表(BDI-13)和Zung抑郁自评量表(ZSDS),对87名COVID - 19幸存者在出院后1个月和3个月进行抑郁症状筛查。在两个时间点采集血液样本并通过Luminex进行分析。我们将为期一个月的42种炎症化合物输入到两个单独的惩罚逻辑回归模型中,以评估它们在识别两个时间点患有临床抑郁症的COVID-19幸存者方面的可靠性,并在机器学习常规中应用。分析物在时间点之间降低的δ值被输入到第三个预测存在长期抑郁的模型中。计算5000个bootstrap来确定预测因子的显著性。横截面模型的平衡精度(BA)达到76%,灵敏度达到70%。高水平的CCL17、CCL22可预测covid -19后抑郁。另一方面,CXCL10、CCL2、CCL3、CCL8、CXCL5、CCL15、CCL23、CXCL13和GM-CSF均表现出保护作用。纵向模型也获得了良好的表现(BA = 74%, sensitivity = 68%),揭示了CXCL16和CCL25是临床抑郁的额外驱动因素。此外,分析物随时间的动态变化准确预测长期抑郁(BA = 76%,灵敏度= 75%)。我们的研究结果揭示了一种假定的支持covid -19后抑郁症的免疫特征,从而加强了深化分子机制以适当靶向抑郁症的必要性。
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
Cytokine
Cytokine 医学-免疫学
CiteScore
7.60
自引率
2.60%
发文量
262
审稿时长
48 days
期刊介绍: The journal Cytokine has an open access mirror journal Cytokine: X, sharing the same aims and scope, editorial team, submission system and rigorous peer review. * Devoted exclusively to the study of the molecular biology, genetics, biochemistry, immunology, genome-wide association studies, pathobiology, diagnostic and clinical applications of all known interleukins, hematopoietic factors, growth factors, cytotoxins, interferons, new cytokines, and chemokines, Cytokine provides comprehensive coverage of cytokines and their mechanisms of actions, 12 times a year by publishing original high quality refereed scientific papers from prominent investigators in both the academic and industrial sectors. We will publish 3 major types of manuscripts: 1) Original manuscripts describing research results. 2) Basic and clinical reviews describing cytokine actions and regulation. 3) Short commentaries/perspectives on recently published aspects of cytokines, pathogenesis and clinical results.
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