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应用于牛囊胚和伸长期胚胎整合转录组数据的机器学习方法,以鉴定预测胚胎能力的基因。

Machine-learning methods applied to integrated transcriptomic data from bovine blastocysts and elongating conceptuses to identify genes predictive of embryonic competence.

机构信息

School of Agriculture and Food Science, University College Dublin, Dublin 4, Ireland.

Institute of Animal Sciences, Animal Breeding, University of Bonn, Bonn, Germany.

出版信息

FASEB J. 2023 Mar;37(3):e22809. doi: 10.1096/fj.202201977R.

Abstract

Early pregnancy loss markedly impacts reproductive efficiency in cattle. The objectives were to model a biologically relevant gene signature predicting embryonic competence for survival after integrating transcriptomic data from blastocysts and elongating conceptuses with different developmental capacities and to validate the potential biomarkers with independent embryonic data sets through the application of machine-learning algorithms. First, two data sets from in vivo-produced blastocysts competent or not to sustain a pregnancy were integrated with a data set from long and short day-15 conceptuses. A statistical contrast determined differentially expressed genes (DEG) increasing in expression from a competent blastocyst to a long conceptus and vice versa; these were enriched for KEGG pathways related to glycolysis/gluconeogenesis and RNA processing, respectively. Next, the most discriminative DEG between blastocysts that resulted or did not in pregnancy were selected by linear discriminant analysis. These eight putative biomarker genes were validated by modeling their expression in competent or noncompetent blastocysts through Bayesian logistic regression or neural networks and predicting embryo developmental fate in four external data sets consisting of in vitro-produced blastocysts (i) competent or not, or (ii) exposed or not to detrimental conditions during culture, and elongated conceptuses (iii) of different length, or (iv) developed in the uteri of high- or subfertile heifers. Predictions for each data set were more than 85% accurate, suggesting that these genes play a key role in embryo development and pregnancy establishment. In conclusion, this study integrated transcriptomic data from seven independent experiments to identify a small set of genes capable of predicting embryonic competence for survival.

摘要

早期妊娠丢失显著影响牛的繁殖效率。本研究旨在通过整合具有不同发育能力的囊胚和伸长胚的转录组数据,建立一个能够预测胚胎存活能力的生物学相关基因特征模型,并应用机器学习算法,通过独立的胚胎数据集对潜在的生物标志物进行验证。首先,整合了两个来自体内产生的具有或不具有妊娠维持能力的囊胚的数据集,以及一个来自长和短日照 15 天的胚的数据集。通过统计对比确定了在从有能力的囊胚到长胚的过程中表达上调的差异表达基因(DEG),反之亦然;这些基因富集与糖酵解/糖异生和 RNA 处理相关的 KEGG 途径。接下来,通过线性判别分析选择在妊娠中表现出或不表现出有能力的囊胚之间最具区分性的 DEG。通过贝叶斯逻辑回归或神经网络对这 8 个候选生物标志物基因在有能力或无能力的囊胚中的表达进行建模,并在四个外部数据集(i)体外培养的有能力或无能力的囊胚、(ii)培养过程中暴露或不暴露于有害条件的囊胚、(iii)不同长度的伸长胚、或(iv)在高产或低产小母牛子宫中发育的伸长胚中预测胚胎的发育命运。对每个数据集的预测准确率均超过 85%,这表明这些基因在胚胎发育和妊娠建立中发挥着关键作用。综上所述,本研究整合了来自七个独立实验的转录组数据,确定了一组能够预测胚胎存活能力的基因。

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