确定接受单次玻璃化温化囊胚移植的高龄产妇活产率的关键预测特征。

IF 4.2 2区 医学 Q1 ENDOCRINOLOGY & METABOLISM
Lidan Liu, Bo Liu, Ming Liao, Qiuying Gan, Qianyi Huang, Yihua Yang
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引用次数: 0

摘要

背景:全世界每六对夫妇中就有一对患有不孕症,其中高龄产妇(AMA)因卵巢储备功能减退和卵母细胞质量下降而面临独特的挑战。单次玻璃化温化囊胚移植(SVBT)已在辅助生殖技术(ART)中显示出前景,但高龄产妇的成功率仍不理想。本研究旨在确定和完善AMA患者SVBT后活产的预测因素,目的是加强临床决策,实现个性化治疗策略:这项回顾性队列研究分析了2016年6月至2022年12月期间在广西医科大学第一附属医院和南宁市妇幼保健院进行的1168个SVBT周期。研究应用了19个机器学习模型来识别活产的关键预测因素。采用特征选择和 10 倍交叉验证对模型进行验证:结果:活产最重要的预测因素包括内细胞质量、滋养层质量、取回的卵母细胞数量、子宫内膜厚度和第 3 天出现 8 细胞胚泡。堆叠模型的预测性能最好(AUC:0.791),其次是额外树(AUC:0.784)和随机森林(AUC:0.768)。这些模型的准确性、灵敏度和特异性均优于传统方法:利用先进的机器学习模型和识别关键预测因素可以提高接受 SVBT 的 AMA 患者的活产结果预测准确性。这些发现为加强临床决策和管理患者期望提供了宝贵的见解。还需要进一步研究,在更大规模的多中心队列中验证这些结果,并探索包括新鲜胚胎移植在内的其他因素,以扩大这些模型在临床实践中的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying key predictive features for live birth rate in advanced maternal age patients undergoing single vitrified-warmed blastocyst transfer.

Background: Infertility affects one in six couples worldwide, with advanced maternal age (AMA) posing unique challenges due to diminished ovarian reserve and reduced oocyte quality. Single vitrified-warmed blastocyst transfer (SVBT) has shown promise in assisted reproductive technology (ART), but success rates in AMA patients remain suboptimal. This study aimed to identify and refine predictive factors for live birth following SVBT in AMA patients, with the goal of enhancing clinical decision-making and enabling personalized treatment strategies.

Methods: This retrospective cohort study analyzed 1,168 SVBT cycles conducted between June 2016 and December 2022 at the First Affiliated Hospital of Guangxi Medical University and Nanning Maternity and Child Health Hospital. Nineteen machine-learning models were applied to identify key predictive factors for live birth. Feature selection and 10-fold cross-validation were employed to validate the models.

Results: The most significant predictors of live birth included inner cell mass quality, trophectoderm quality, number of oocytes retrieved, endometrial thickness, and the presence of 8-cell blastomeres on day 3. The stacking model demonstrated the best predictive performance (AUC: 0.791), followed by Extra Trees (AUC: 0.784) and Random Forest (AUC: 0.768). These models outperformed traditional methods, achieving superior accuracy, sensitivity, and specificity.

Conclusion: Leveraging advanced machine-learning models and identifying critical predictive factors can improve the accuracy of live birth outcome predictions for AMA patients undergoing SVBT. These findings offer valuable insights for enhancing clinical decision-making and managing patient expectations. Further research is needed to validate these results in larger, multi-center cohorts and to explore additional factors, including fresh embryo transfers, to broaden the applicability of these models in clinical practice.

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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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