Division of Clinical Embryology, Department of Reproductive Science, Kasturba Medical College, Manipal Academy of Higher Education, Manipal, 576 104, India.
Division of Reproductive Genetics, Department of Reproductive Science, Kasturba Medical College, Manipal Academy of Higher Education, Manipal, 576 104, India.
Reprod Sci. 2023 Mar;30(3):984-994. doi: 10.1007/s43032-022-01071-1. Epub 2022 Sep 12.
This study investigated whether combining metabolomic and embryologic data with machine learning (ML) models improve the prediction of embryo implantation potential. In this prospective cohort study, infertile couples (n=56) undergoing day-5 single blastocyst transfer between February 2019 and August 2021 were included. After day-5 single blastocyst transfer, spent culture medium (SCM) was subjected to metabolite analysis using nuclear magnetic resonance (NMR) spectroscopy. Derived metabolite levels and embryologic parameters between successfully implanted and failed groups were incorporated into ML models to explore their predictive potential regarding embryo implantation. The SCM of blastocysts that resulted in successful embryo implantation had significantly lower pyruvate (p<0.05) and threonine (p<0.05) levels compared to medium control but not compared to SCM related to embryos that failed to implant. Notably, the prediction accuracy increased when classical ML algorithms were combined with metabolomic and embryologic data. Specifically, the custom artificial neural network (ANN) model with regularized parameters for metabolomic data provided 100% accuracy, indicating the efficiency in predicting implantation potential. Hence, combining ML models (specifically, custom ANN) with metabolomic and embryologic data improves the prediction of embryo implantation potential. The approach could potentially be used to derive clinical benefits for patients in real-time.
这项研究旨在探讨代谢组学和胚胎学数据与机器学习 (ML) 模型相结合是否能提高胚胎着床潜能的预测能力。在这项前瞻性队列研究中,纳入了 2019 年 2 月至 2021 年 8 月期间进行第 5 天单囊胚移植的不孕夫妇(n=56)。第 5 天单囊胚移植后,使用核磁共振(NMR)光谱法对囊胚的剩余培养液(SCM)进行代谢物分析。将成功着床组和失败组之间的衍生代谢物水平和胚胎学参数纳入 ML 模型,以探讨其对胚胎着床的预测潜力。与未着床胚胎相关的 SCM 相比,着床成功的囊胚 SCM 中的丙酮酸(p<0.05)和苏氨酸(p<0.05)水平显著降低,但与正常培养液相比则无差异。值得注意的是,当经典 ML 算法与代谢组学和胚胎学数据相结合时,预测准确性会提高。具体来说,代谢组学数据正则化参数的定制人工神经网络(ANN)模型的准确率达到 100%,表明其在预测着床潜能方面的效率很高。因此,将 ML 模型(特别是定制 ANN)与代谢组学和胚胎学数据相结合,可以提高胚胎着床潜能的预测能力。该方法有可能实时为患者带来临床获益。