Predicting the Risk of Preterm Birth Throughout Pregnancy Based on a Novel Transcriptomic Signature

IF 1.2 4区 医学 Q3 OBSTETRICS & GYNECOLOGY
Yuxin Ran, Dongni Huang, Nanlin Yin, Yanqing Wen, Yan Jiang, Yamin Liu, Hongbo Qi
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Abstract

Abstract Objective This study focused on the prediction of preterm birth (PTB). It aimed to identify the transcriptomic signature essential for the occurrence of PTB and evaluate its predictive value in early, mid, and late pregnancy and in women with threatened preterm labor (TPTL). Methods Blood transcriptome data of pregnant women were obtained from the Gene Expression Omnibus database. The activity of biological signatures was assessed using gene set enrichment analysis and single-sample gene set enrichment analysis. The correlation among molecules in the interleukin 6 (IL6) signature and between IL6 signaling activity and the gestational week of delivery and latent period were evaluated by Pearson correlation analysis. The effects of molecules associated with the IL6 signature were fitted using logistic regression analysis; the predictive value of both the IL6 signature and IL6 alone were evaluated using receiver operating characteristic curves and pregnancy maintenance probability was assessed using Kaplan-Meier analysis. Differential analysis was performed using the DEseq2 and limma algorithms. Results Circulatory IL6 signaling activity increased significantly in cases with preterm labor than in those with term pregnancies (normalized enrichment score (NES) = 1.857, P = 0.001). The IL6 signature (on which IL6 signaling is based) was subsequently considered as the candidate biomarker for PTB. The area under the curve (AUC) values for PTB prediction (using the IL6 signature) in early, mid, and late pregnancy were 0.810, 0.695, and 0.779, respectively; these values were considerably higher than those for IL6 alone. In addition, the pregnancy curves of women with abnormal IL6 signature differed significantly from those with normal signature. In pregnant women who eventually had preterm deliveries, circulatory IL6 signaling activity was lower in early pregnancy (NES = −1.420, P = 0.031) and higher than normal in mid (NES = 1.671, P = 0.002) and late pregnancy (NES = 2.350, P < 0.001). In women with TPTL, the AUC values for PTB prediction (or PTB within 7 days and 48 hours) using the IL6 signature were 0.761, 0.829, and 0.836, respectively; the up-regulation of IL6 signaling activity and its correlation with the gestational week of delivery ( r = −0.260, P = 0.001) and latency period ( r = −0.203, P = 0.012) were more significant than in other women. Conclusion Our findings suggest that the IL6 signature may predict PTB, even in early pregnancy (although the predictive power is relatively weak in mid pregnancy) and is particularly effective in symptomatic women. These findings may contribute to the development of an effective predictive and monitoring system for PTB, thereby reducing maternal and fetal risk.
基于一种新的转录组特征预测妊娠期早产的风险
摘要目的探讨早产(PTB)的预测方法。该研究旨在确定PTB发生的转录组特征,并评估其在妊娠早期、中期和晚期以及先兆早产(TPTL)妇女中的预测价值。方法从基因表达综合数据库中获取孕妇血液转录组数据。利用基因集富集分析和单样品基因集富集分析评估生物标记的活性。应用Pearson相关分析分析白细胞介素6 (il - 6)信号分子间的相关性以及il - 6信号活性与分娩周数和潜伏期的相关性。利用logistic回归分析拟合与IL6特征相关分子的影响;采用受试者工作特征曲线评估il - 6信号和单独il - 6的预测价值,采用Kaplan-Meier分析评估妊娠维持概率。采用DEseq2和limma算法进行差异分析。结果与足月妊娠组相比,早产组血液中il - 6信号活性明显升高(标准化富集评分(normalized enrichment score, NES) = 1.857, P = 0.001)。IL6信号(IL6信号的基础)随后被认为是PTB的候选生物标志物。妊娠早期、中期、晚期预测PTB的曲线下面积(AUC)分别为0.810、0.695、0.779;这些值明显高于单独使用IL6的值。此外,il - 6信号异常的妊娠曲线与正常的妊娠曲线有显著差异。在最终发生早产的孕妇中,循环il - 6信号活性在妊娠早期较低(NES = - 1.420, P = 0.031),而在妊娠中期(NES = 1.671, P = 0.002)和妊娠晚期(NES = 2.350, P <0.001)。在TPTL女性中,使用il - 6信号预测PTB(或7天和48小时内PTB)的AUC值分别为0.761、0.829和0.836;il - 6信号活性上调及其与分娩周数(r = - 0.260, P = 0.001)和潜伏期(r = - 0.203, P = 0.012)的相关性显著高于其他孕妇。结论:我们的研究结果表明,即使在妊娠早期(尽管在妊娠中期的预测能力相对较弱),il - 6特征也可以预测PTB,并且在有症状的女性中特别有效。这些发现可能有助于开发有效的PTB预测和监测系统,从而降低孕产妇和胎儿的风险。
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来源期刊
Maternal-Fetal Medicine
Maternal-Fetal Medicine OBSTETRICS & GYNECOLOGY-
CiteScore
1.50
自引率
10.00%
发文量
119
审稿时长
10 weeks
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