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孕期母婴超重肥胖的代际传递风险预测。

The risk prediction of intergenerational transmission of overweight and obesity between mothers and infants during pregnancy.

机构信息

Institute of International Health Professions Education and Research, China Medical University, Shenyang, 110122, Liaoning Province, China.

Institute of Health Sciences, China Medical University, Shenyang, 110122, Liaoning Province, China.

出版信息

BMC Pregnancy Childbirth. 2024 Jan 23;24(1):74. doi: 10.1186/s12884-024-06268-7.

Abstract

BACKGROUND

Overweight and obesity in mothers before pregnancy lead to overweight and obesity in their offspring, which is the main form of intergenerational transmission of overweight and obesity in early life. Many factors, especially non-genetic factors, may influence intergenerational transmission, but little prediction research has been conducted. Therefore, we analyzed the status of intergenerational transmission in maternal and infant overweight and obesity. Second, we explored the factors during the pregnancy that might affect the the intergenerational transmission; According to the two application scenarios of pregnancy screen and self-management, risk prediction models for pregnant women were carried out.

METHODS

Based on a prospective birth cohort, a total of 908 mothers and offspring were followed up during early life. Follow-up visits were performed at the first trimester, second trimester, third trimester, delivery, 42 days after delivery, and 6 months and 12 months of age. The investigation methods included questionnaire survey, physical examination, biological sample collection and clinical data collection. In terms of risk prediction, univariate analysis was used to screen candidate predictors. Second, multivariable Cox proportional hazard regression models were used to determine the final selected predictors. Third, the corresponding histogram models were drawn, and then the 10-fold cross-validation methods were used for internal verification.

RESULTS

Regarding intergenerational transmission of overweight and obesity between mothers and infants during pregnancy, the risk prediction model for pregnancy screen was constructed. The model established: h(t|X) = h(t)exp.(- 0.95 × (Bachelor Degree or above) + 0.75 × (Fasting blood glucose in the second trimester) + 0.89 × (Blood pressure in the third trimester) + 0.80 × (Cholesterol in third trimester) + 0.55 × (Abdominal circumference in third trimester))., with good discrimination (AUC = 0.82) and calibration (Hosmer-Lemeshow = 4.17). The risk prediction model for self-management was constructed. The model established: h(t|X) = h(t)exp. (0.98 × (Sedentary >18METs) + 0.88 × (Sleep index≥8) + 0.81 × (Unhealthy eating patterns Q3/Q4) + 0.90 × (Unhealthy eating patterns Q4/Q4) + 0.85 × (Depression)), with good discrimination (AUC = 0.75) and calibration (Hosmer-Lemeshow = 3.81).

CONCLUSIONS

The risk predictions of intergenerational transmission of overweight and obesity between mothers and infants were performed for two populations and two application scenarios (pregnancy screening and home self-management). Further research needs to focus on infants and long-term risk prediction models.

摘要

背景

母亲孕前超重和肥胖会导致其后代超重和肥胖,这是生命早期超重和肥胖代际传递的主要形式。许多因素,尤其是非遗传因素,可能会影响代际传递,但很少有预测性研究。因此,我们分析了母婴超重和肥胖的代际传递状况。其次,我们探讨了孕期可能影响代际传递的因素;根据妊娠筛查和自我管理的两种应用场景,对孕妇进行了风险预测模型的构建。

方法

基于前瞻性出生队列,对 908 名母婴进行了早期随访。随访时间分别为孕早期、孕中期、孕晚期、分娩、产后 42 天、6 个月和 12 个月。调查方法包括问卷调查、体格检查、生物样本采集和临床数据收集。在风险预测方面,首先进行单因素分析筛选候选预测因素。然后,采用多变量 Cox 比例风险回归模型确定最终的选择预测因素。再次,绘制相应的直方图模型,然后采用 10 折交叉验证方法进行内部验证。

结果

针对孕期母婴超重和肥胖的代际传递问题,构建了妊娠筛查的风险预测模型。该模型为:h(t|X)=h(t)exp.(-0.95×(本科及以上学历)+0.75×(孕中期空腹血糖)+0.89×(孕晚期血压)+0.80×(孕晚期胆固醇)+0.55×(孕晚期腹围))。该模型具有良好的判别能力(AUC=0.82)和校准度(Hosmer-Lemeshow=4.17)。构建了自我管理的风险预测模型。该模型为:h(t|X)=h(t)exp.(0.98×(静坐超过 18METs)+0.88×(睡眠指数≥8)+0.81×(不健康的饮食模式 Q3/Q4)+0.90×(不健康的饮食模式 Q4/Q4)+0.85×(抑郁))。该模型具有良好的判别能力(AUC=0.75)和校准度(Hosmer-Lemeshow=3.81)。

结论

对母婴超重和肥胖的代际传递进行了两种人群和两种应用场景(妊娠筛查和家庭自我管理)的风险预测。进一步的研究需要关注婴儿和长期风险预测模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cecd/10804797/e49629a4a687/12884_2024_6268_Fig1_HTML.jpg

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