The construction of machine learning-based predictive models for high-quality embryo formation in poor ovarian response patients with progestin-primed ovarian stimulation

IF 4.2 2区 医学 Q1 ENDOCRINOLOGY & METABOLISM
Yu-Heng Xiao, Yu-Lin Hu, Xing-Yu Lv, Li-Juan Huang, Li-Hong Geng, Pu Liao, Yu-Bin Ding, Chang-Chun Niu
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引用次数: 0

Abstract

To explore the optimal models for predicting the formation of high-quality embryos in Poor Ovarian Response (POR) Patients with Progestin-Primed Ovarian Stimulation (PPOS) using machine learning algorithms. A retrospective analysis was conducted on the clinical data of 4,216 POR cycles who underwent in vitro fertilization (IVF) / intracytoplasmic sperm injection (ICSI) at Sichuan Jinxin Xinan Women and Children’s Hospital from January 2015 to December 2021. Based on the presence of high-quality cleavage embryos 72 h post-fertilization, the samples were divided into the high-quality cleavage embryo group (N = 1950) and the non-high-quality cleavage embryo group (N = 2266). Additionally, based on whether high-quality blastocysts were observed following full blastocyst culture, the samples were categorized into the high-quality blastocyst group (N = 124) and the non-high-quality blastocyst group (N = 1800). The factors influencing the formation of high-quality embryos were analyzed using logistic regression. The predictive models based on machine learning methods were constructed and evaluated accordingly. Differential analysis revealed that there are statistically significant differences in 14 factors between high-quality and non-high-quality cleavage embryos. Logistic regression analysis identified 14 factors as influential in forming high-quality cleavage embryos. In models excluding three variables (retrieved oocytes, MII oocytes, and 2PN fertilized oocytes), the XGBoost model performed slightly better (AUC = 0.672, 95% CI = 0.636–0.708). Conversely, in models including these three variables, the Random Forest model exhibited the best performance (AUC = 0.788, 95% CI = 0.759–0.818). In the analysis of high-quality blastocysts, significant differences were found in 17 factors. Logistic regression analysis indicated that 13 factors influence the formation of high-quality blastocysts. Including these variables in the predictive model, the XGBoost model showed the highest performance (AUC = 0.813, 95% CI = 0.741–0.884). We developed a predictive model for the formation of high-quality embryos using machine learning methods for patients with POR undergoing treatment with the PPOS protocol. This model can help infertility patients better understand the likelihood of forming high-quality embryos following treatment and help clinicians better understand and predict treatment outcomes, thus facilitating more targeted and effective interventions.
基于机器学习的优质胚胎形成预测模型在孕激素刺激卵巢的卵巢反应不良患者中的构建
利用机器学习算法探索预测孕激素促排卵(PPOS)治疗卵巢反应差(POR)患者优质胚胎形成的最佳模型。该研究对2015年1月至2021年12月期间在四川金新新安妇儿医院接受体外受精(IVF)/卵胞浆内单精子显微注射(ICSI)的4216个POR周期的临床数据进行了回顾性分析。根据受精后72 h是否存在优质裂解胚胎,样本被分为优质裂解胚胎组(N = 1950)和非优质裂解胚胎组(N = 2266)。此外,根据完整囊胚培养后是否观察到优质囊胚,样本被分为优质囊胚组(N = 124)和非优质囊胚组(N = 1800)。利用逻辑回归分析了影响优质胚胎形成的因素。构建了基于机器学习方法的预测模型,并进行了相应的评估。差异分析表明,高质量和非高质量卵裂胚胎在 14 个因素上存在显著的统计学差异。逻辑回归分析确定了 14 个影响优质裂解胚胎形成的因素。在排除三个变量(取回的卵母细胞、MII 卵母细胞和 2PN 受精卵母细胞)的模型中,XGBoost 模型的表现稍好一些(AUC = 0.672,95% CI = 0.636-0.708)。相反,在包括这三个变量的模型中,随机森林模型表现最佳(AUC = 0.788,95% CI = 0.759-0.818)。在对优质囊胚的分析中,发现 17 个因素存在显著差异。逻辑回归分析表明,13 个因素影响优质囊胚的形成。将这些变量纳入预测模型后,XGBoost 模型显示出最高的性能(AUC = 0.813,95% CI = 0.741-0.884)。我们利用机器学习方法为接受 PPOS 方案治疗的 POR 患者建立了高质量胚胎形成的预测模型。该模型可帮助不孕症患者更好地了解治疗后形成优质胚胎的可能性,并帮助临床医生更好地了解和预测治疗结果,从而促进更有针对性和更有效的干预。
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来源期刊
Reproductive Biology and Endocrinology
Reproductive Biology and Endocrinology 医学-内分泌学与代谢
CiteScore
7.90
自引率
2.30%
发文量
161
审稿时长
4-8 weeks
期刊介绍: Reproductive Biology and Endocrinology publishes and disseminates high-quality results from excellent research in the reproductive sciences. The journal publishes on topics covering gametogenesis, fertilization, early embryonic development, embryo-uterus interaction, reproductive development, pregnancy, uterine biology, endocrinology of reproduction, control of reproduction, reproductive immunology, neuroendocrinology, and veterinary and human reproductive medicine, including all vertebrate species.
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