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了解多基因风险评分对预测英国巴基斯坦和孟加拉群体女性妊娠糖尿病和2型糖尿病的潜在贡献:基因与健康队列研究

Understanding the potential contribution of polygenic risk scores to the prediction of gestational and type 2 diabetes in women from British Pakistani and Bangladeshi groups: a cohort study in Genes and Health.

作者信息

Zöllner Julia, Orazumbekova Binur, Hodgson Sam, van Heel David A, Iliodromiti Stamatina, Siddiqui Moneeza, Mathur Rohini, Finer Sarah, Jardine Jennifer

机构信息

Institute for Women's Health, Population Health Sciences, University College London, London, UK (Zöllner).

Wolfson Institute of Population Health, Barts and the London School of Medicine and Dentistry, Queen Mary University of London, London, UK (Zöllner, Orazumbekova, Hodgson, Iliodromiti, Siddiqui, Mathur, Finer, and Jardine).

出版信息

AJOG Glob Rep. 2025 Feb 21;5(2):100457. doi: 10.1016/j.xagr.2025.100457. eCollection 2025 May.

Abstract

BACKGROUND

British Pakistani and Bangladeshi (BPB) women have disproportionately high rates of gestational diabetes mellitus (GDM), with prevalence estimates up to three times higher than in the general population. They are also at increased risk of progressing to type 2 diabetes, leading to significant health complications. Despite this, predictive models tailored to this high-risk, yet understudied group are lacking.

OBJECTIVE

To investigate whether combining genetic and traditional clinical data improves risk prediction of GDM and progression to type 2 diabetes among BPB women. We hypothesized that incorporating polygenic risk scores (PRS) would enhance the predictive accuracy of existing models.

STUDY DESIGN

An observational cohort study utilizing the Genes & Health dataset, which includes comprehensive electronic health records. Women who gave birth between 2000 and 2023, both with and without a history of GDM, were included. Controls were defined as women without a GDM diagnosis during this period but who had a birth record. A total of 117 type 2 diabetes or GDM PRS were tested to determine the optimal PRS based on predictive performance metrics. The best-performing PRS was integrated with clinical variables for statistical analyses, including descriptive statistics, chi-square tests, logistic regression, and receiver operating characteristic curve analysis.

RESULTS

Of 13,489 women with birth records, 10,931 were included in the analysis, with 29.3% developing GDM. Women with GDM were older (mean age 31.7 years, <.001) and had a higher BMI (mean 28.4 kg/m, <.001) compared to controls. The optimal PRS demonstrated a strong association with GDM risk; women in the highest PRS decile had significantly increased odds of developing GDM (OR 5.66, 95% CI [4.59, 7.01], =3.62×10). Furthermore, the risk of converting from GDM to type 2 diabetes was 30% in the highest PRS decile, compared to 19% among all GDM cases and 11% in the lowest decile. Incorporating genetic risk factors with clinical data improved the C-statistic for predicting type 2 diabetes following GDM from 0.62 to 0.67 (=4.58×10), indicating better model discrimination.

CONCLUSION

The integration of genetic assessment with traditional clinical factors significantly enhances risk prediction for BPB women at high risk of developing type 2 diabetes after GDM. These findings support the implementation of targeted interventions and personalized monitoring strategies in this high-risk population. Future research should focus on validating these predictive models in external cohorts and exploring their integration into clinical practice to improve health outcomes.

摘要

背景

英国的巴基斯坦裔和孟加拉裔(BPB)女性患妊娠期糖尿病(GDM)的比例极高,患病率估计比普通人群高出三倍。她们发展为2型糖尿病的风险也增加,会导致严重的健康并发症。尽管如此,针对这一高风险但研究不足的群体的预测模型仍然缺乏。

目的

研究将基因数据与传统临床数据相结合是否能改善对BPB女性患GDM及进展为2型糖尿病的风险预测。我们假设纳入多基因风险评分(PRS)将提高现有模型的预测准确性。

研究设计

一项观察性队列研究,使用基因与健康数据集,其中包括全面的电子健康记录。纳入2000年至2023年间分娩的女性,包括有和没有GDM病史的。对照组定义为在此期间未被诊断为GDM但有分娩记录的女性。共测试了117种2型糖尿病或GDM的PRS,以根据预测性能指标确定最佳PRS。将表现最佳的PRS与临床变量进行整合以进行统计分析,包括描述性统计、卡方检验、逻辑回归和受试者工作特征曲线分析。

结果

在13489名有分娩记录的女性中,10931名被纳入分析,其中29.3%患GDM。与对照组相比,患GDM的女性年龄更大(平均年龄31.7岁,P<.001)且BMI更高(平均28.4kg/m²,P<.001)。最佳PRS与GDM风险显示出强烈关联;处于最高PRS十分位数的女性患GDM的几率显著增加(OR 5.66,95%CI[4.59,7.01],P=3.62×10⁻⁵⁴)。此外,在最高PRS十分位数中,从GDM转变为2型糖尿病的风险为30%,而在所有GDM病例中为19%,在最低十分位数中为11%。将遗传风险因素与临床数据相结合,将预测GDM后2型糖尿病的C统计量从0.62提高到0.67(P=4.58×10⁻⁵),表明模型的区分能力更好。

结论

将基因评估与传统临床因素相结合可显著提高对GDM后有发展为2型糖尿病高风险的BPB女性的风险预测。这些发现支持在这一高风险人群中实施有针对性的干预措施和个性化监测策略。未来的研究应侧重于在外部队列中验证这些预测模型,并探索将其整合到临床实践中以改善健康结果。

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