Song Kunpeng, Ma Julei, Wang Bing
Department of Hand and Foot Surgery, Beilun District People's Hospital, Ningbo, Zhejiang, China.
Int J Rheum Dis. 2024 Dec;27(12):e15447. doi: 10.1111/1756-185X.15447.
Presently, research examining the impact of plasma metabolites on rheumatoid arthritis (RA) is scarce. We utilized a bidirectional two-sample Mendelian randomization (MR) analysis to explore the potential causal link between 1400 plasma metabolites and RA.
We performed a two-sample MR analysis to assess the causal association between 1400 plasma metabolites and RA. The primary method of two-sample MR Analysis was the Inverse Variance Weighted (IVW) model, and the secondary methods were the Weighted Median (WM) and MR Egger methods. We conducted sensitivity analyses using Cochran's Q test, MR-Egger intercept test, MR-PRESSO, and Leave-One-Out analyses. Steiger test was used for validation of the metabolites. The main results were validated in the UK Biobank.
In the discovery dataset, 60 metabolites were identified as significantly associated with the onset of RA. A notable finding was the strong correlation between Valve levels and RA risk, showing the highest positive correlation (OR [95% CI]: 1.361 (1.112, 1.667), p = 0.0028). Subsequent analysis of the validation dataset revealed 46 metabolites linked to RA, with X-22771 levels displaying the strongest positive association (OR [95% CI]: 1.002 (1.00, 1.004), p = 0.037). Notably, Glycohydrocolate levels exhibited a protective effect on RA in both datasets. Specifically, the effect size in the initial dataset was (OR [95% CI]:0.867 (0.753, 1.000), p = 0.050), whereas in the validation dataset, the effect was weaker (OR [95% CI]: 0.999 (0.997, 1.000), p = 0.048). These findings were further validated through a series of sensitivity analyses, affirming their robustness and reliability.
This study highlights a strong correlation between elevated Valine levels and an increased risk of RA, as well as potential protective effects of Glycohydrohorate in independent datasets.
目前,关于血浆代谢物对类风湿性关节炎(RA)影响的研究较少。我们采用双向两样本孟德尔随机化(MR)分析来探索1400种血浆代谢物与RA之间的潜在因果关系。
我们进行了两样本MR分析,以评估1400种血浆代谢物与RA之间的因果关联。两样本MR分析的主要方法是逆方差加权(IVW)模型,次要方法是加权中位数(WM)和MR Egger方法。我们使用Cochran's Q检验、MR-Egger截距检验、MR-PRESSO和留一法分析进行敏感性分析。使用Steiger检验对代谢物进行验证。主要结果在英国生物银行中得到验证。
在发现数据集中,60种代谢物被确定与RA的发病显著相关。一个显著的发现是缬氨酸水平与RA风险之间存在强相关性,显示出最高的正相关性(OR [95% CI]:1.361(1.112,1.667),p = 0.0028)。随后对验证数据集的分析揭示了46种与RA相关的代谢物,其中X-22771水平显示出最强的正相关(OR [95% CI]:1.002(1.00,1.004),p = 0.037)。值得注意的是,在两个数据集中,糖氢胆酸盐水平对RA均表现出保护作用。具体而言,在初始数据集中的效应大小为(OR [95% CI]:0.867(0.753,1.000),p = 0.050),而在验证数据集中,该效应较弱(OR [95% CI]:0.999(0.997,1.000),p = 0.048)。这些发现通过一系列敏感性分析得到进一步验证,证实了它们的稳健性和可靠性。
本研究强调了缬氨酸水平升高与RA风险增加之间的强相关性,以及在独立数据集中糖氢胆酸盐的潜在保护作用。