Department of Informatics for Genomic Medicine, Group of Integrated Database Systems, Tohoku Medical Megabank Organization, Tohoku University, 2-1, Seiryo-Machi, Aoba-Ku, Sendai, Miyagi, 980-8575, Japan.
Department of Statistical Genetics and Genomics, Group of Disease Risk Prediction, Tohoku Medical Megabank Organization, Tohoku University, Miyagi, Japan.
BMC Pregnancy Childbirth. 2023 Aug 31;23(1):628. doi: 10.1186/s12884-023-05919-5.
Low birth weight (LBW) is a leading cause of neonatal morbidity and mortality, and increases various disease risks across life stages. Prediction models of LBW have been developed before, but have limitations including small sample sizes, absence of genetic factors and no stratification of neonate into preterm and term birth groups. In this study, we challenged the development of early prediction models of LBW based on environmental and genetic factors in preterm and term birth groups, and clarified influential variables for LBW prediction.
We selected 22,711 neonates, their 21,581 mothers and 8,593 fathers from the Tohoku Medical Megabank Project Birth and Three-Generation cohort study. To establish early prediction models of LBW for preterm birth and term birth groups, we trained AI-based models using genetic and environmental factors of lifestyles. We then clarified influential environmental and genetic factors for predicting LBW in the term and preterm groups.
We identified 2,327 (10.22%) LBW neonates consisting of 1,077 preterm births and 1,248 term births. Our early prediction models archived the area under curve 0.96 and 0.95 for term LBW and preterm LBW models, respectively. We revealed that environmental factors regarding eating habits and genetic features related to fetal growth were influential for predicting LBW in the term LBW model. On the other hand, we identified that genomic features related to toll-like receptor regulations and infection reactions are influential genetic factors for prediction in the preterm LBW model.
We developed precise early prediction models of LBW based on lifestyle factors in the term birth group and genetic factors in the preterm birth group. Because of its accuracy and generalisability, our prediction model could contribute to risk assessment of LBW in the early stage of pregnancy and control LBW risk in the term birth group. Our prediction model could also contribute to precise prediction of LBW based on genetic factors in the preterm birth group. We then identified parental genetic and maternal environmental factors during pregnancy influencing LBW prediction, which are major targets for understanding the LBW to address serious burdens on newborns' health throughout life.
低出生体重(LBW)是新生儿发病率和死亡率的主要原因,并增加了各个生命阶段的各种疾病风险。已经开发出了 LBW 的预测模型,但存在局限性,包括样本量小、缺乏遗传因素以及未将新生儿分为早产和足月出生组。在这项研究中,我们挑战了基于早产和足月出生组的环境和遗传因素的 LBW 早期预测模型的发展,并阐明了 LBW 预测的影响变量。
我们从东北医科大学 Megabank 项目出生和三代队列研究中选择了 22711 名新生儿、他们的 21581 名母亲和 8593 名父亲。为了为早产和足月出生组建立 LBW 的早期预测模型,我们使用基于生活方式的遗传和环境因素训练了人工智能模型。然后,我们阐明了预测足月和早产组 LBW 的有影响力的环境和遗传因素。
我们确定了 2327 名(10.22%)LBW 新生儿,其中包括 1077 名早产儿和 1248 名足月儿。我们的早期预测模型在足月 LBW 和早产 LBW 模型中的曲线下面积分别为 0.96 和 0.95。我们揭示了与饮食习惯有关的环境因素和与胎儿生长有关的遗传特征是预测足月 LBW 模型中 LBW 的有影响因素。另一方面,我们确定了与 Toll 样受体调节和感染反应有关的遗传特征是预测早产 LBW 模型中 LBW 的有影响遗传因素。
我们基于足月出生组的生活方式因素和早产出生组的遗传因素开发了精确的 LBW 早期预测模型。由于其准确性和通用性,我们的预测模型可以为妊娠早期的 LBW 风险评估做出贡献,并控制足月出生组的 LBW 风险。我们的预测模型还可以基于早产出生组的遗传因素为 LBW 的精确预测做出贡献。然后,我们确定了影响 LBW 预测的父母遗传和母亲环境因素,这是了解 LBW 以解决新生儿健康的严重负担的主要目标,贯穿整个生命。