Individualized embryo selection strategy developed by stacking machine learning model for better in vitro fertilization outcomes: an application study

Abstract Background To minimize the rate of in vitro fertilization (IVF)- associated multiple-embryo gestation, significant efforts have been made. Previous studies related to machine learning in IVF mainly focused on selecting the top-quality embryos to improve outcomes, however, in patients with s...

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Main Authors: Qingsong Xi, Qiyu Yang, Meng Wang, Bo Huang, Bo Zhang, Zhou Li, Shuai Liu, Liu Yang, Lixia Zhu, Lei Jin
Format: Article
Language:English
Published: BMC 2021-04-01
Series:Reproductive Biology and Endocrinology
Subjects:
Online Access:https://doi.org/10.1186/s12958-021-00734-z
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spelling doaj-5eb452604f8c4e9c93b0db798c1eed2e2021-04-11T11:10:35ZengBMCReproductive Biology and Endocrinology1477-78272021-04-0119111010.1186/s12958-021-00734-zIndividualized embryo selection strategy developed by stacking machine learning model for better in vitro fertilization outcomes: an application studyQingsong Xi0Qiyu Yang1Meng Wang2Bo Huang3Bo Zhang4Zhou Li5Shuai Liu6Liu Yang7Lixia Zhu8Lei Jin9Reproductive Medicine Center, Tongji Hospital, Tongji Medical College, Huazhong University of Science and TechnologyReproductive Medicine Center, Tongji Hospital, Tongji Medical College, Huazhong University of Science and TechnologyReproductive Medicine Center, Tongji Hospital, Tongji Medical College, Huazhong University of Science and TechnologyReproductive Medicine Center, Tongji Hospital, Tongji Medical College, Huazhong University of Science and TechnologyReproductive Medicine Center, Tongji Hospital, Tongji Medical College, Huazhong University of Science and TechnologyReproductive Medicine Center, Tongji Hospital, Tongji Medical College, Huazhong University of Science and TechnologyReproductive Medicine Center, Tongji Hospital, Tongji Medical College, Huazhong University of Science and TechnologyReproductive Medicine Center, Tongji Hospital, Tongji Medical College, Huazhong University of Science and TechnologyReproductive Medicine Center, Tongji Hospital, Tongji Medical College, Huazhong University of Science and TechnologyReproductive Medicine Center, Tongji Hospital, Tongji Medical College, Huazhong University of Science and TechnologyAbstract Background To minimize the rate of in vitro fertilization (IVF)- associated multiple-embryo gestation, significant efforts have been made. Previous studies related to machine learning in IVF mainly focused on selecting the top-quality embryos to improve outcomes, however, in patients with sub-optimal prognosis or with medium- or inferior-quality embryos, the selection between SET and DET could be perplexing. Methods This was an application study including 9211 patients with 10,076 embryos treated during 2016 to 2018, in Tongji Hospital, Wuhan, China. A hierarchical model was established using the machine learning system XGBoost, to learn embryo implantation potential and the impact of double embryos transfer (DET) simultaneously. The performance of the model was evaluated with the AUC of the ROC curve. Multiple regression analyses were also conducted on the 19 selected features to demonstrate the differences between feature importance for prediction and statistical relationship with outcomes. Results For a single embryo transfer (SET) pregnancy, the following variables remained significant: age, attempts at IVF, estradiol level on hCG day, and endometrial thickness. For DET pregnancy, age, attempts at IVF, endometrial thickness, and the newly added P1 + P2 remained significant. For DET twin risk, age, attempts at IVF, 2PN/ MII, and P1 × P2 remained significant. The algorithm was repeated 30 times, and averaged AUC of 0.7945, 0.8385, and 0.7229 were achieved for SET pregnancy, DET pregnancy, and DET twin risk, respectively. The trend of predictive and observed rates both in pregnancy and twin risk was basically identical. XGBoost outperformed the other two algorithms: logistic regression and classification and regression tree. Conclusion Artificial intelligence based on determinant-weighting analysis could offer an individualized embryo selection strategy for any given patient, and predict clinical pregnancy rate and twin risk, therefore optimizing clinical outcomes.https://doi.org/10.1186/s12958-021-00734-zArtificial intelligenceEmbryo selectionMachine learningIn vitro fertilizationIn vitro fertilization prediction
collection DOAJ
language English
format Article
sources DOAJ
author Qingsong Xi
Qiyu Yang
Meng Wang
Bo Huang
Bo Zhang
Zhou Li
Shuai Liu
Liu Yang
Lixia Zhu
Lei Jin
spellingShingle Qingsong Xi
Qiyu Yang
Meng Wang
Bo Huang
Bo Zhang
Zhou Li
Shuai Liu
Liu Yang
Lixia Zhu
Lei Jin
Individualized embryo selection strategy developed by stacking machine learning model for better in vitro fertilization outcomes: an application study
Reproductive Biology and Endocrinology
Artificial intelligence
Embryo selection
Machine learning
In vitro fertilization
In vitro fertilization prediction
author_facet Qingsong Xi
Qiyu Yang
Meng Wang
Bo Huang
Bo Zhang
Zhou Li
Shuai Liu
Liu Yang
Lixia Zhu
Lei Jin
author_sort Qingsong Xi
title Individualized embryo selection strategy developed by stacking machine learning model for better in vitro fertilization outcomes: an application study
title_short Individualized embryo selection strategy developed by stacking machine learning model for better in vitro fertilization outcomes: an application study
title_full Individualized embryo selection strategy developed by stacking machine learning model for better in vitro fertilization outcomes: an application study
title_fullStr Individualized embryo selection strategy developed by stacking machine learning model for better in vitro fertilization outcomes: an application study
title_full_unstemmed Individualized embryo selection strategy developed by stacking machine learning model for better in vitro fertilization outcomes: an application study
title_sort individualized embryo selection strategy developed by stacking machine learning model for better in vitro fertilization outcomes: an application study
publisher BMC
series Reproductive Biology and Endocrinology
issn 1477-7827
publishDate 2021-04-01
description Abstract Background To minimize the rate of in vitro fertilization (IVF)- associated multiple-embryo gestation, significant efforts have been made. Previous studies related to machine learning in IVF mainly focused on selecting the top-quality embryos to improve outcomes, however, in patients with sub-optimal prognosis or with medium- or inferior-quality embryos, the selection between SET and DET could be perplexing. Methods This was an application study including 9211 patients with 10,076 embryos treated during 2016 to 2018, in Tongji Hospital, Wuhan, China. A hierarchical model was established using the machine learning system XGBoost, to learn embryo implantation potential and the impact of double embryos transfer (DET) simultaneously. The performance of the model was evaluated with the AUC of the ROC curve. Multiple regression analyses were also conducted on the 19 selected features to demonstrate the differences between feature importance for prediction and statistical relationship with outcomes. Results For a single embryo transfer (SET) pregnancy, the following variables remained significant: age, attempts at IVF, estradiol level on hCG day, and endometrial thickness. For DET pregnancy, age, attempts at IVF, endometrial thickness, and the newly added P1 + P2 remained significant. For DET twin risk, age, attempts at IVF, 2PN/ MII, and P1 × P2 remained significant. The algorithm was repeated 30 times, and averaged AUC of 0.7945, 0.8385, and 0.7229 were achieved for SET pregnancy, DET pregnancy, and DET twin risk, respectively. The trend of predictive and observed rates both in pregnancy and twin risk was basically identical. XGBoost outperformed the other two algorithms: logistic regression and classification and regression tree. Conclusion Artificial intelligence based on determinant-weighting analysis could offer an individualized embryo selection strategy for any given patient, and predict clinical pregnancy rate and twin risk, therefore optimizing clinical outcomes.
topic Artificial intelligence
Embryo selection
Machine learning
In vitro fertilization
In vitro fertilization prediction
url https://doi.org/10.1186/s12958-021-00734-z
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