开发人类胚胎形态动力学状态自动分析系统

Mark G. Kosenko, G. B. Nemkovskiy, Olesya Yu. Tsvetkova, Ivan D. Akinfeev, V. A. Dolgova
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引用次数: 0

摘要

背景:视频固定技术在胚胎学中的应用正在蓬勃发展。这些技术可对每个培养胚胎的早期胚胎发育过程进行客观分析,而无需将培养杯从培养箱中取出。在常规实践中,延时技术可确保检测到传统发育监测方法无法检测到的胚胎发育病理现象 [1,2]。然而,对培养过程中捕捉到的所有帧进行注释和人工评估是一个耗时的过程。此外,视频固定本身并不能消除客观解释所获图像质量的问题 [3]。智能技术,尤其是利用机器学习技术开发的解决方案,在解决此类问题方面取得了成功。目的:本研究旨在开发一套自动分析人类胚胎形态动力学状态的系统,以评估其植入能力。材料与方法:数据在家庭医疗中心(俄罗斯乌法)和母婴集团公司临床医院 IDK(俄罗斯萨马拉)收集。人类胚胎植入前发育至囊胚期(授精后第 0-6 天)的数字图像是使用体外受精实验室培养箱 EmbryoVisor 和延时(超延时)视频固定系统获得的。胚胎在特制的微孔培养皿(Vitrolife,瑞典)中单独培养。数据集使用 Label Studio Community Edition 软件进行标记。选择了一个递归卷积神经网络来分析数据,并使用多张图像进行训练。结果:自动分析系统的开发基于胚胎形态动力学状态的分类,按照胚胎发生的各个阶段:受精、破碎、蜕膜形成和囊胚形成。多个对象(如受精阶段的前核和极体或破碎阶段的胚泡)的分割将根据特定的发育阶段进行。我们计划对是否存在其他特征(多核、内质网的异质性)进行二元分类,对其他特征进行分类/回归(因此,可按离散范围或绝对值估算破碎程度)。最终形成了一个利用深度学习标记胚胎形态动力学特征的系统。这种方法自动化并加快了分析过程,而这在以前需要大量的时间和人力资源。结论:预计所开发的胚胎形态动力学状态自动分析系统将简化体外受精实验室评估人类胚胎质量的过程,减少这一过程所花费的时间和资源。此外,它还将提高评估胚胎植入能力的准确性和可靠性,并有可能成为开发胚胎学医疗决策支持系统的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a system for automatic analysis of the morphokinetic state of the human embryo
BACKGROUND: The application of videofixation technologies in embryology is developing significantly. These technologies permit the objective analysis of the process of early embryogenesis of each cultured embryo without the necessity of removing the culture cup from the incubator. Timelapse technologies in routine practice allow for the guaranteed detection of embryo developmental pathologies that are inaccessible to traditional developmental monitoring methods [1, 2]. Nevertheless, the annotation and manual evaluation of all frames captured during the cultivation process can be a time-consuming process. Furthermore, video fixation itself does not eliminate the issue of objectivizing the quality of interpretation of the obtained images [3]. Intelligent technologies, in particular, solutions developed with the use of machine learning, are successfully employed in the resolution of such problems. AIM: The aim of this study is to develop a system for the automated analysis of the morphokinetic state of the human embryo with the aim of assessing its capacity for implantation. MATERIALS AND METHODS: The data were collected at the Family Medical Center (Ufa, Russia) and the Clinical Hospital IDK of the Mother and Child Group of Companies (Samara, Russia). Digital images of the period of preimplantation development of human embryos up to the blastocyst stage (days 0–6 from insemination) were obtained using an incubator for in vitro fertilization laboratories, the EmbryoVisor, with a timelapse (hyperlapse) video fixation system. Embryos were cultured individually in special micro-well WOW dishes (Vitrolife, Sweden). The data set was labelled using Label Studio Community Edition software. A recurrent convolutional neural network was selected to analyse the data and trained using multiple images. RESULTS: The development of the automatic analysis system is based on the classification of the morphokinetic state of the embryo according to the stages of embryogenesis: fertilization, fragmentation, morula formation, and blastocyst formation. Segmentation of multiple objects, such as pronuclei and polar bodies at the fertilization stage or blastomeres at the fragmentation stage, will be performed depending on a certain stage of development. We plan to build a binary classification of the presence of additional features (multinucleation, heterogeneity of the endoplasmic network), classification/regression of additional features (so, fragmentation can be estimated as discrete ranges or absolute values). The result is a system for labeling the morphodynamic profile of an embryo using deep learning. This method automates and accelerates the analysis process, which previously required significant time and human resources. CONCLUSIONS: It is anticipated that the developed system of automatic analysis of morphokinetic state of embryos will simplify the process of evaluating the quality of human embryos in in vitro fertilization laboratories, reducing the time and resources spent on this process. Furthermore, it will enhance the accuracy and reliability of assessing the implantation ability of embryos and could potentially serve as the foundation for the development of a support system for medical decision-making in embryology.
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CiteScore
1.30
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