Enhancing predictive models for egg donation: time to blastocyst hatching and machine learning insights

IF 4.2 2区 医学 Q1 ENDOCRINOLOGY & METABOLISM Reproductive Biology and Endocrinology Pub Date : 2024-09-11 DOI:10.1186/s12958-024-01285-9
Jorge Ten, Leyre Herrero, Ángel Linares, Elisa Álvarez, José Antonio Ortiz, Andrea Bernabeu, Rafael Bernabéu
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Abstract

Data sciences and artificial intelligence are becoming encouraging tools in assisted reproduction, favored by time-lapse technology incubators. Our objective is to analyze, compare and identify the most predictive machine learning algorithm developed using a known implantation database of embryos transferred in our egg donation program, including morphokinetic and morphological variables, and recognize the most predictive embryo parameters in order to enhance IVF treatments clinical outcomes. Multicenter retrospective cohort study carried out in 378 egg donor recipients who performed a fresh single embryo transfer during 2021. All treatments were performed by Intracytoplasmic Sperm Injection, using fresh or frozen oocytes. The embryos were cultured in Geri® time-lapse incubators until transfer on day 5. The embryonic morphokinetic events of 378 blastocysts with known implantation and live birth were analyzed. Classical statistical analysis (binary logistic regression) and 10 machine learning algorithms were applied including Multi-Layer Perceptron, Support Vector Machines, k-Nearest Neighbor, Cart and C0.5 Classification Trees, Random Forest (RF), AdaBoost Classification Trees, Stochastic Gradient boost, Bagged CART and eXtrem Gradient Boosting. These algorithms were developed and optimized by maximizing the area under the curve. The Random Forest emerged as the most predictive algorithm for implantation (area under the curve, AUC = 0.725, IC 95% [0.6232–0826]). Overall, implantation and miscarriage rates stood at 56.08% and 18.39%, respectively. Overall live birth rate was 41.26%. Significant disparities were observed regarding time to hatching out of the zona pellucida (p = 0.039). The Random Forest algorithm demonstrated good predictive capabilities for live birth (AUC = 0.689, IC 95% [0.5821–0.7921]), but the AdaBoost classification trees proved to be the most predictive model for live birth (AUC = 0.749, IC 95% [0.6522–0.8452]). Other important variables with substantial predictive weight for implantation and live birth were duration of visible pronuclei (DESAPPN-APPN), synchronization of cleavage patterns (T8-T5), duration of compaction (TM-TiCOM), duration of compaction until first sign of cavitation (TiCAV-TM) and time to early compaction (TiCOM). This study highlights Random Forest and AdaBoost as the most effective machine learning models in our Known Implantation and Live Birth Database from our egg donation program. Notably, time to blastocyst hatching out of the zona pellucida emerged as a highly reliable parameter significantly influencing our implantation machine learning predictive models. Processes involving syngamy, genomic imprinting during embryo cleavage, and embryo compaction are also influential and could be crucial for implantation and live birth outcomes.
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增强捐卵预测模型:囊胚孵化时间和机器学习见解
数据科学和人工智能正成为辅助生殖领域令人鼓舞的工具,受到延时技术孵化器的青睐。我们的目标是分析、比较和识别利用已知胚胎植入数据库开发的最具预测性的机器学习算法,该数据库包含了我们捐卵项目中移植的胚胎的形态动力学和形态学变量,并识别出最具预测性的胚胎参数,以提高试管婴儿治疗的临床效果。这项多中心回顾性队列研究的对象是在 2021 年期间进行过新鲜单胚胎移植的 378 名卵子捐赠受者。所有治疗均采用卵胞浆内单精子显微注射法,使用新鲜或冷冻卵母细胞。胚胎在 Geri® 延时培养箱中培养至第 5 天移植。对已知植入和活产的 378 个囊胚的胚胎形态动力学事件进行了分析。应用了经典统计分析(二元逻辑回归)和 10 种机器学习算法,包括多层感知器、支持向量机、k-近邻、Cart 和 C0.5 分类树、随机森林 (RF)、AdaBoost 分类树、随机梯度提升、袋装 CART 和 eXtrem 梯度提升。这些算法都是通过最大化曲线下面积来开发和优化的。随机森林是最能预测植入的算法(曲线下面积,AUC = 0.725,IC 95% [0.6232-0826])。总体而言,植入率和流产率分别为 56.08% 和 18.39%。总体活产率为 41.26%。孵化出透明带的时间存在显著差异(p = 0.039)。随机森林算法对活产有很好的预测能力(AUC = 0.689,IC 95% [0.5821-0.7921]),但 AdaBoost 分类树被证明是最能预测活产的模型(AUC = 0.749,IC 95% [0.6522-0.8452])。对着床和活产具有重要预测权重的其他重要变量包括可见前核持续时间(DESAPPN-APPN)、分裂模式同步时间(T8-T5)、压实持续时间(TM-TiCOM)、压实持续时间直至首次出现空化迹象(TiCAV-TM)和早期压实时间(TiCOM)。这项研究表明,随机森林和 AdaBoost 是我们捐卵项目已知植入和活产数据库中最有效的机器学习模型。值得注意的是,囊胚孵化出透明带的时间是一个高度可靠的参数,对我们的植入机器学习预测模型有显著影响。涉及合子、胚胎裂解过程中的基因组印记和胚胎压实的过程也有影响,可能对植入和活产结果至关重要。
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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.
期刊最新文献
Discussion on the evaluation of the therapeutic efficacy of uterine artery blood flow parameters and serum PLGF and sFlt-1 in patients with recurrent spontaneous abortion. Asiaticoside ameliorates uterine injury induced by zearalenone in mice by reversing endometrial barrier disruption, oxidative stress and apoptosis Effect of estradiol supplementation on luteal support following a significant reduction in serum estradiol levels after hCG triggering: a prospective randomized controlled trial Enhancing predictive models for egg donation: time to blastocyst hatching and machine learning insights Correction: IVF laboratory management through workflow-based RFID tag witnessing and real-time information entry.
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