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Personalized prediction of live birth prior to the first in vitro fertilization treatment: a machine learning method

机译:首次体外受精治疗之前的活产的个性化预测:一种机器学习方法

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Infertility has become a global health issue with the number of couples seeking in vitro fertilization (IVF) worldwide continuing to rise. Some couples remain childless after several IVF cycles. Women undergoing IVF face greater risks and financial burden. A prediction model to predict the live birth chance prior to the first IVF treatment is needed in clinical practice for patients counselling and shaping expectations. Clinical data of 7188 women who underwent their first IVF treatment at the Reproductive Medical Center of Shengjing Hospital of China Medical University during 2014–2018 were retrospectively collected. Machine-learning based models were developed on 70% of the dataset using pre-treatment variables, and prediction performances were evaluated on the remaining 30% using receiver operating characteristic (ROC) analysis and calibration plot. Nested cross-validation was used to make an unbiased estimate of the generalization performance of the machine learning algorithms. The XGBoost model achieved an area under the ROC curve of 0.73 on the validation dataset and showed the best calibration compared with other machine learning algorithms. Nested cross-validation resulted in an average accuracy score of 0.70?±?0.003 for the XGBoost model. A prediction model based on XGBoost was developed using age, AMH, BMI, duration of infertility, previous live birth, previous miscarriage, previous abortion and type of infertility as predictors. This study might be a promising step to provide personalized estimates of the cumulative live birth chance of the first complete IVF cycle before treatment.
机译:随着世界范围内寻求体外受精(IVF)的夫妇数量不断增加,不育已成为全球性的健康问题。在几次试管婴儿周期后,有些夫妇仍然没有孩子。接受试管婴儿的妇女面临更大的风险和经济负担。在临床实践中,需要一个预测模型来预测首次IVF治疗之前的活产机会,以指导和指导患者的期望。回顾性收集2014-2018年在中国医科大学附属盛京医院生殖医学中心接受首次IVF治疗的7188名妇女的临床数据。使用预处理变量在70%的数据集上开发了基于机器学习的模型,并使用接收器工作特性(ROC)分析和校准图对其余30%的预测性能进行了评估。嵌套交叉验证用于对机器学习算法的泛化性能进行无偏估计。 XGBoost模型在验证数据集上的ROC曲线下获得了0.73的面积,并且与其他机器学习算法相比,显示出最佳的校准效果。嵌套的交叉验证对XGBoost模型的平均准确性得分为0.70±±0.003。使用年龄,AMH,BMI,不孕持续时间,以前的活产,以前的流产,以前的流产和不孕类型作为预测因子,开发了基于XGBoost的预测模型。这项研究可能是一个很有希望的步骤,可以提供治疗前第一个完整IVF周期的累积活产机会的个性化估计。

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