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通过构建遗传和临床信息的机器学习模型预测支气管肺发育不良

Bronchopulmonary Dysplasia Predicted by Developing a Machine Learning Model of Genetic and Clinical Information.

作者信息

Dai Dan, Chen Huiyao, Dong Xinran, Chen Jinglong, Mei Mei, Lu Yulan, Yang Lin, Wu Bingbing, Cao Yun, Wang Jin, Zhou Wenhao, Qian Liling

机构信息

Division of Pulmonary Medicine, Children's Hospital of Fudan University, Shanghai, China.

Molecular Medical Center, Children's Hospital of Fudan University, Shanghai, China.

出版信息

Front Genet. 2021 Jul 2;12:689071. doi: 10.3389/fgene.2021.689071. eCollection 2021.

Abstract

BACKGROUND

An early and accurate evaluation of the risk of bronchopulmonary dysplasia (BPD) in premature infants is pivotal in implementing preventive strategies. The risk prediction models nowadays for BPD risk that included only clinical factors but without genetic factors are either too complex without practicability or provide poor-to-moderate discrimination. We aim to identify the role of genetic factors in BPD risk prediction early and accurately.

METHODS

Exome sequencing was performed in a cohort of 245 premature infants (gestational age <32 weeks), with 131 BPD infants and 114 infants without BPD as controls. A gene burden test was performed to find risk genes with loss-of-function mutations or missense mutations over-represented in BPD and severe BPD (sBPD) patients, with risk gene sets (RGS) defined as BPD-RGS and sBPD-RGS, respectively. We then developed two predictive models for the risk of BPD and sBPD by integrating patient clinical and genetic features. The performance of the models was evaluated using the area under the receiver operating characteristic curve (AUROC).

RESULTS

Thirty and 21 genes were included in BPD-RGS and sBPD-RGS, respectively. The predictive model for BPD, which combined the BPD-RGS and basic clinical risk factors, showed better discrimination than the model that was only based on basic clinical features (AUROC, 0.915 . AUROC, 0.814, = 0.013, respectively) in the independent testing dataset. The same was observed in the predictive model for sBPD (AUROC, 0.907 . AUROC, 0.826; = 0.016).

CONCLUSION

This study suggests that genetic information contributes to susceptibility to BPD. The predictive model in this study, which combined BPD-RGS with basic clinical risk factors, can thus accurately stratify BPD risk in premature infants.

摘要

背景

对早产儿支气管肺发育不良(BPD)风险进行早期准确评估对于实施预防策略至关重要。目前用于BPD风险预测的模型仅包含临床因素而无遗传因素,要么过于复杂不具实用性,要么区分能力较差。我们旨在早期准确识别遗传因素在BPD风险预测中的作用。

方法

对245例孕周小于32周的早产儿队列进行外显子组测序,其中131例为BPD患儿,114例无BPD的患儿作为对照。进行基因负担测试以寻找在BPD和重度BPD(sBPD)患者中功能丧失突变或错义突变过度富集的风险基因,风险基因集(RGS)分别定义为BPD-RGS和sBPD-RGS。然后,通过整合患者临床和遗传特征,开发了两种BPD和sBPD风险预测模型。使用受试者工作特征曲线下面积(AUROC)评估模型性能。

结果

BPD-RGS和sBPD-RGS分别包含30个和21个基因。在独立测试数据集中,结合BPD-RGS和基本临床风险因素的BPD预测模型比仅基于基本临床特征的模型具有更好的区分能力(AUROC分别为0.915和0.814,P = 0.013)。sBPD预测模型也观察到同样情况(AUROC分别为0.907和0.826;P = 0.016)。

结论

本研究表明遗传信息有助于BPD易感性。本研究中结合BPD-RGS与基本临床风险因素的预测模型能够准确地对早产儿的BPD风险进行分层。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a156/8283015/978ac13f4629/fgene-12-689071-g001.jpg

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