论文标题

深度学习介导的单个时间点图像在乳沟阶段的胚胎发育结果的预测

Deep learning mediated single time-point image-based prediction of embryo developmental outcome at the cleavage stage

论文作者

Kanakasabapathy, Manoj Kumar, Thirumalaraju, Prudhvi, Bormann, Charles L, Gupta, Raghav, Pooniwala, Rohan, Kandula, Hemanth, Souter, Irene, Dimitriadis, Irene, Shafiee, Hadi

论文摘要

在常规的临床体内施肥实践中,胚胎在发育的裂解或胚泡阶段转移。裂解阶段转移,尤其是对预后相对较差的患者和在资源有限的环境中的生育中心有益的,在这种情况下,在胚胎内发育失败的可能性更高。但是,在裂解阶段选择胚胎的主要局限性之一是可获得非常少数的手动可识别特征以预测发展结果。尽管已提出了作为可能的解决方案的延时成像系统,但它们的成本较高,需要笨重且昂贵的硬件以及劳动力密集型。卷积神经网络(CNN)的进步已被用来提供许多医学和非医疗对象类别的准确分类。在这里,我们报告了一种使用训练有素的CNN与遗传算法结合的自动化系统,用于分类和选择人类胚胎。该系统在70小时后(HPI)选择了裂解阶段的胚胎,该胚胎最终以70 hpi的速度发展成高质量的胚泡,其精度为64%,表现优于胚胎学家在识别具有最高发育潜力的胚胎方面的能力。通过赋予胚胎学家的能力,在资源贫乏和资源丰富的设置中赋予胚胎学家的能力,可以对IVF程序产生重大影响。

In conventional clinical in-vitro fertilization practices embryos are transferred either at the cleavage or blastocyst stages of development. Cleavage stage transfers, particularly, are beneficial for patients with relatively poor prognosis and at fertility centers in resource-limited settings where there is a higher chance of developmental failure in embryos in-vitro. However, one of the major limitations of embryo selections at the cleavage stage is the availability of very low number of manually discernable features to predict developmental outcomes. Although, time-lapse imaging systems have been proposed as possible solutions, they are cost-prohibitive and require bulky and expensive hardware, and labor-intensive. Advances in convolutional neural networks (CNNs) have been utilized to provide accurate classifications across many medical and non-medical object categories. Here, we report an automated system for classification and selection of human embryos at the cleavage stage using a trained CNN combined with a genetic algorithm. The system selected the cleavage stage embryo at 70 hours post insemination (hpi) that ultimately developed into top-quality blastocyst at 70 hpi with 64% accuracy, outperforming the abilities of embryologists in identifying embryos with the highest developmental potential. Such systems can have a significant impact on IVF procedures by empowering embryologists for accurate and consistent embryo assessment in both resource-poor and resource-rich settings.

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