Department of Psychiatry and Psychotropic, Faculty of Medicine, University Medicine Greifswald, Greifswald, Germany.
Department of Medical Informatics, Faculty of Medicine, Mashhad University of Medical Sciences, Mashhad, Iran.
Sci Rep. 2024 Oct 16;14(1):24283. doi: 10.1038/s41598-024-73326-7.
This study aimed to investigate the influence of various sperm quality characteristics, including morphology, motility, and count, on the success rates of clinical pregnancy achieved through assisted reproductive technologies (ART) such as in-vitro fertilization (IVF), intracytoplasmic sperm injection (ICSI), and intrauterine insemination (IUI). The secondary objective was to assess the impact of these sperm parameters on the clinical pregnancy rate that resulted in the detection of a fetal heartbeat during the 11th week of gestation, a crucial milestone in successful ART-derived pregnancies. The researchers employed a retrospective analysis, evaluating data from 734 couples undergoing IVF/ICSI and 1197 couples undergoing IUI across two infertility centers. Exclusion criteria included cases involving donated eggs or sperm, surrogate uteri, and infertile couples with combined male and female factors. Five ensemble machine-learning models were utilized to predict the clinical pregnancy success rates. The Random Forest (RF) model achieved the highest mean accuracy (0.72) and area under the curve (AUC) (0.80), outperforming the other models for both IVF/ICSI and IUI procedures. The Shapley Additive Explanations (SHAP) value analysis revealed that for IUI cycles, all three sperm parameters (morphology, motility, and count) had significant negative impacts on the prediction of clinical pregnancy success. In contrast, for IVF/ICSI cycles, sperm motility had a positive effect, while sperm morphology and count were negative factors. In cycles with 1 to 5 retrieved eggs, sperm motility, and count, they positively affected the clinical pregnancy rate. The study also identified cut-off values for sperm count, with 54 and 35 being the respective thresholds for IVF/ICSI and IUI. Additionally, a significant cut-off point 30 was found for the sperm morphology parameter across all procedures. This study underscores the immense potential of leveraging ensemble machine learning models with traditional sperm quality assessments. This integrated approach can elevate the precision and personalization of clinical decision-making in the field of assisted reproductive technologies, ultimately offering more hope and better outcomes for couples struggling with infertility.
这项研究旨在探讨各种精子质量特征,包括形态、活力和计数,对体外受精(IVF)、胞浆内单精子注射(ICSI)和宫腔内人工授精(IUI)等辅助生殖技术(ART)临床妊娠成功率的影响。次要目标是评估这些精子参数对临床妊娠率的影响,即妊娠 11 周时检测到胎儿心跳,这是成功的 ART 妊娠的一个关键里程碑。研究人员采用回顾性分析,评估了两个不孕不育中心的 734 对接受 IVF/ICSI 和 1197 对接受 IUI 的夫妇的数据。排除标准包括涉及捐赠卵子或精子、代孕子宫以及男性和女性因素合并不孕的夫妇。研究使用了五个集成机器学习模型来预测临床妊娠成功率。随机森林(RF)模型的平均准确率(0.72)和曲线下面积(AUC)(0.80)最高,在 IVF/ICSI 和 IUI 两种情况下均优于其他模型。Shapley 加性解释(SHAP)值分析表明,对于 IUI 周期,所有三个精子参数(形态、活力和计数)对临床妊娠成功预测都有显著的负面影响。相比之下,对于 IVF/ICSI 周期,精子活力有积极影响,而精子形态和计数则是负面因素。在取卵 1 到 5 个的周期中,精子活力和计数对临床妊娠率有积极影响。该研究还确定了精子计数的截止值,IVF/ICSI 和 IUI 的分别为 54 和 35。此外,还发现所有程序中精子形态参数的一个显著截止点为 30。这项研究强调了利用集成机器学习模型和传统精子质量评估的巨大潜力。这种综合方法可以提高辅助生殖技术领域临床决策的精度和个性化程度,最终为那些与不孕不育作斗争的夫妇带来更多的希望和更好的结果。