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利用多种机器学习技术对体外受精-胚胎移植的妊娠结局进行预测建模。

Predictive modeling of pregnancy outcomes utilizing multiple machine learning techniques for in vitro fertilization-embryo transfer.

作者信息

Bai Ru, Li Jia-Wei, Hong Xia, Xuan Xiao-Yue, Li Xiao-He, Tuo Ya

机构信息

Reproductive Centre, The Affiliated Hospital of Inner Mongolia Medical University, No.1 of North Tongdao Road, Huimin District, Hohhot, 010000, Inner Mongolia Autonomous Region, China.

Department of Radiology, The Second Affiliated Hospital of Baotou Medical College, Inner Mongolia University of Science and Technology, Baotou, 014000, Inner Mongolia Autonomous Region, China.

出版信息

BMC Pregnancy Childbirth. 2025 Mar 19;25(1):316. doi: 10.1186/s12884-025-07433-2.

Abstract

OBJECTIVE

This study aims to investigate the influencing factors of pregnancy outcomes during in vitro fertilization and embryo transfer (IVF-ET) procedures in clinical practice. Several prediction models were constructed to predict pregnancy outcomes and models with higher accuracy were identified for potential implementation in clinical settings.

METHODS

The clinical data and pregnancy outcomes of 2625 women who underwent fresh cycles of IVF-ET between 2016 and 2022 at the Reproductive Center of the Affiliated Hospital of Inner Mongolia Medical University were enrolled to establish a comprehensive dataset. The observed features were preprocessed and analyzed. A predictive model for pregnancy outcomes of IVF-ET treatment was constructed based on the processed data. The dataset was divided into a training set and a test set in an 8:2 ratio. Predictive models for clinical pregnancy and clinical live births were developed. The ROC curve was plotted, and the AUC was calculated and the prediction model with the highest accuracy rate was selected from multiple models. The key features and main aspects of IVF-ET treatment outcome prediction were further analyzed.

RESULTS

The clinical pregnancy outcome was categorized into pregnancy and live birth. The XGBoost model exhibited the highest AUC for predicting pregnancy, achieving a validated AUC of 0.999 (95% CI: 0.999-1.000). For predicting live births, the LightGBM model exhibited the highest AUC of 0.913 (95% CI: 0.895-0.930).

CONCLUSION

The XGBoost model predicted the possibility of pregnancy with an accuracy of up to 0.999. While the LightGBM model predicted the possibility of live birth with an accuracy of up to 0.913.

摘要

目的

本研究旨在探讨临床实践中体外受精-胚胎移植(IVF-ET)过程中妊娠结局的影响因素。构建了多个预测模型来预测妊娠结局,并确定了准确性较高的模型以便在临床环境中潜在应用。

方法

纳入2016年至2022年在内蒙古医科大学附属医院生殖中心接受IVF-ET新鲜周期治疗的2625名女性的临床数据和妊娠结局,建立一个综合数据集。对观察到的特征进行预处理和分析。基于处理后的数据构建IVF-ET治疗妊娠结局的预测模型。数据集按8:2的比例分为训练集和测试集。开发了临床妊娠和临床活产的预测模型。绘制ROC曲线,计算AUC,并从多个模型中选择准确率最高的预测模型。进一步分析IVF-ET治疗结局预测的关键特征和主要方面。

结果

临床妊娠结局分为妊娠和活产。XGBoost模型在预测妊娠方面表现出最高的AUC,验证后的AUC为0.999(95%CI:0.999 - 1.000)。对于预测活产,LightGBM模型表现出最高的AUC,为0.913(95%CI:0.895 - 0.930)。

结论

XGBoost模型预测妊娠可能性的准确率高达0.999。而LightGBM模型预测活产可能性的准确率高达0.913。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3956/11921685/5b6c6d25970f/12884_2025_7433_Fig1_HTML.jpg

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