Screening the predictors for live birth failure in women after the first frozen embryo transfer based on the Lasso algorithm: a retrospective study.

IF 1.5 4区 生物学 Q4 CELL BIOLOGY
Zygote Pub Date : 2023-08-01 Epub Date: 2023-05-15 DOI:10.1017/S0967199423000217
Wumin Jin, Jia Lin, Peiyu Wang, Haiyan Yang, Congcong Jin
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Abstract

This study aimed to screen factors related to live birth outcomes of women with first frozen embryo transfer (FET). The enrolled women were divided into training and validation cohorts. The least absolute shrinkage and selection operator (Lasso) regression algorithm of machine learning and the multiple regression model were then used to screen factors relevant to live birth failure (LBF) for the training dataset. A nomogram risk prediction model was established on the basis of the screened factors, and the consistency index (C-index) and calibration curve were derived for evaluating the model. The validation cohort was utilized to validate the nomogram model further. In total, 2083 women who accepted the first FET in our hospital were included and 44 factors were initially screened in this study. On the basis of the training cohort, the screened risk factors via multiple regression analysis with odds ratio (OR) values were female age (OR: 3.092, 95%CI: 1.065-4.852), body mass index (BMI; OR: 1.106, 95%CI: 1.015-1.546), caesarean section (OR: 1.909, 95%CI: 1.318-2.814), number of high-quality embryos (OR: 0.698, 95%CI: 0.599-0.812), and endometrial thickness (OR: 0.957, CI: 0.904-0.980). The nomogram model was generated based on five predictors. Furthermore, favourable results with C-indexes and calibration curves close to ideal curves indicated the accurate predictive ability of the nomogram. Female age, BMI, caesarean section, number of high-quality embryos, and endometrial thickness were independent predictors for LBF. The five factors of the risk assessment model may help to identify LBF with high accuracy in women who accept FET.

基于 Lasso 算法筛查首次冷冻胚胎移植后妇女活产失败的预测因素:一项回顾性研究。
本研究旨在筛选与首次冷冻胚胎移植(FET)妇女活产结果相关的因素。入组妇女被分为训练组和验证组。然后使用机器学习的最小绝对收缩和选择算子(Lasso)回归算法和多元回归模型筛选训练数据集中与活产失败(LBF)相关的因素。在筛选出的因素基础上,建立了一个提名图风险预测模型,并得出了一致性指数(C-index)和校准曲线,用于评估该模型。验证队列用于进一步验证提名图模型。本研究共纳入了 2083 名在我院接受首次 FET 的女性,初步筛选出 44 个因素。在训练队列的基础上,通过多元回归分析,筛选出的风险因素有女性年龄(OR:3.092,95%CI:1.065-4.852)、体重指数(BMI;OR:1.106,95%CI:1.015-1.546)、剖腹产(OR:1.909,95%CI:1.318-2.814)、优质胚胎数(OR:0.698,95%CI:0.599-0.812)和子宫内膜厚度(OR:0.957,CI:0.904-0.980)。提名图模型是根据五个预测因子生成的。此外,C 指数和校准曲线接近理想曲线的良好结果表明,提名图具有准确的预测能力。女性年龄、体重指数、剖腹产、优质胚胎数和子宫内膜厚度是 LBF 的独立预测因素。风险评估模型的五个因素可能有助于对接受 FET 的妇女进行高准确度的 LBF 识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Zygote
Zygote 生物-发育生物学
CiteScore
1.70
自引率
5.90%
发文量
117
审稿时长
6-12 weeks
期刊介绍: An international journal dedicated to the rapid publication of original research in early embryology, Zygote covers interdisciplinary studies on gametogenesis through fertilization to gastrulation in animals and humans. The scope has been expanded to include clinical papers, molecular and developmental genetics. The editors will favour work describing fundamental processes in the cellular and molecular mechanisms of animal development, and, in particular, the identification of unifying principles in biology. Nonetheless, new technologies, review articles, debates and letters will become a prominent feature.
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