Laboratório de Matemática Aplicada, Department of Biological Sciences, School of Languages and Sciences, Campus Assis, São Paulo State University (UNESP), Assis, SP, Brazil.
Laboratório de Micromanipulação Embrionária, Department of Biological Sciences, School of Sciences and Languages, Campus Assis, São Paulo State University (UNESP), Assis, SP, Brazil.
JBRA Assist Reprod. 2020 Oct 6;24(4):470-479. doi: 10.5935/1518-0557.20200014.
Based on growing demand for assisted reproduction technology, improved predictive models are required to optimize in vitro fertilization/intracytoplasmatic sperm injection strategies, prioritizing single embryo transfer. There are still several obstacles to overcome for the purpose of improving assisted reproductive success, such as intra- and inter-observer subjectivity in embryonic selection, high occurrence of multiple pregnancies, maternal and neonatal complications. Here, we compare studies that used several variables that impact the success of assisted reproduction, such as blastocyst morphology and morphokinetic aspects of embryo development as well as characteristics of the patients submitted to assisted reproduction, in order to predict embryo quality, implantation or live birth. Thereby, we emphasize the proposal of an artificial intelligence-based platform for a more objective method to predict live birth.
基于辅助生殖技术需求的不断增长,需要改进预测模型以优化体外受精/胞浆内精子注射策略,优先选择单胚胎移植。然而,仍有几个障碍需要克服,以提高辅助生殖的成功率,例如胚胎选择中的内、观察者主观性,多胎妊娠的高发生率,以及母婴并发症。在这里,我们比较了使用几种变量的研究,这些变量会影响辅助生殖的成功率,例如囊胚形态和胚胎发育的形态动力学方面,以及接受辅助生殖的患者的特征,以预测胚胎质量、着床或活产。因此,我们强调提出一个基于人工智能的平台,以更客观的方法来预测活产。