Author
Listed:
- Qingyi Zhou
- Qili Shen
- Xiaohua Chen
- Lichun Yang
- Qiang Ma
- Liang Chu
Abstract
Background: Previous retrospective studies have shown a correlation between depression and increased risk of infections, including a moderate rise in sepsis likelihood associated with severe depression and anxiety. To investigate the potential causal links between depression, sepsis, and mortality risks, while considering confounding factors, we employed a Mendelian randomization (MR) approach. Methods: In this two-sample Mendelian randomization study, we analyzed data from a large-scale genome-wide association study on depression, involving 807,553 European individuals (246,363 cases, 561,190 controls). We extracted SNP associations with sepsis and 28-day mortality from UK Biobank GWAS outcomes. The correlation analysis primarily employed the inverse-variance weighted method, supplemented by sensitivity analyses for heterogeneity and pleiotropy assessment. Results: Our analysis revealed a potential causal link between depression and an increased risk of sepsis (OR = 1.246, 95% CI: 1.076–1.442, P = 0.003), but no causal association was found with sepsis-induced mortality risk (OR = 1.274, 95% CI: 0.891–1.823, P = 0.184). Sensitivity analyses confirmed the robustness of these findings. Conclusions: We identified a potential causal association between depression and heightened sepsis risk, while no link was found with sepsis-induced mortality. These findings suggest that effective management of depression could be important in preventing sepsis.
Suggested Citation
Qingyi Zhou & Qili Shen & Xiaohua Chen & Lichun Yang & Qiang Ma & Liang Chu, 2024.
"Identifying depression’s genetic role as a precursor to sepsis and increased mortality risk: Comprehensive insights from mendelian randomization analysis,"
PLOS ONE, Public Library of Science, vol. 19(5), pages 1-11, May.
Handle:
RePEc:plo:pone00:0300275
DOI: 10.1371/journal.pone.0300275
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