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Automated cell stage predictions in early mouse and human embryos using convolutional neural networks

机译:使用卷积神经网络自动预测早期小鼠和人类胚胎的细胞阶段

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During in-vitro fertilization, the timings of cell divisions in early human embryos are important predictors of embryo viability. Recent developments in time-lapse microscopy (TLM) allows for observing cell divisions in much greater detail than before. However, it is a time-consuming process relying on highly trained staff and subjective observations. We present an automated method based on a convolutional neural network to predict cell divisions from original (unprocessed) TLM images. Our method was evaluated on two embryo TLM image datasets: a public dataset with mouse embryos and a private dataset with human embryos up to 4-cell stage. Compared to embryologists' annotations, our results were almost 100% accurate for mouse embryos and accurate within five frames in 93% of cell stage transitions for human embryos. Our approach can be used to improve consistency and quality of existing annotations or as part of a platform for fully automatic embryo assessment.
机译:在体外受精过程中,早期人类胚胎中细胞分裂的时机是胚胎存活力的重要预测指标。延时显微镜(TLM)的最新发展使观察细胞分裂的细节比以前更为详尽。但是,这是一个耗时的过程,需要训练有素的员工和主观的观察。我们提出了一种基于卷积神经网络的自动化方法,可以根据原始(未处理的)TLM图像预测细胞分裂。我们的方法在两个胚胎TLM图像数据集上进行了评估:一个具有小鼠胚胎的公共数据集和一个具有多达4个细胞阶段的人类胚胎的私有数据集。与胚胎学家的注释相比,我们的结果对于小鼠胚胎而言几乎是100%准确,对于人类胚胎而言,在93%的细胞阶段转换中,在5帧内准确无误。我们的方法可以用于提高现有注释的一致性和质量,也可以用作全自动胚胎评估平台的一部分。

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