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Inner Cell Mass and Trophectoderm Segmentation in Human Blastocyst Images using Deep Neural Network

机译:使用深层神经网络的人类胚泡图像中的内部细胞团和滋养层分割

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Embryo quality assessment based on morphological attributes is important for achieving higher pregnancy rates from in vitro fertilization (IVF). The accurate segmentation of the embryo's inner cell mass (ICM) and trophectoderm epithelium (TE) is important, as these parameters can help to predict the embryo viability and live birth potential. However, segmentation of the ICM and TE is difficult due to variations in their shape and similarities in their textures, both with each other and with their surroundings. To tackle this problem, a deep neural network (DNN) based segmentation approach was implemented. The DNN can identify the ICM region with 99.1% accuracy, 94.9% precision, 93.8% recall, a 94.3% Dice Coefficient, and a 89.3% Jaccard Index. It can extract the TE region with 98.3% accuracy, 91.8% precision, 93.2% recall, a 92.5% Dice Coefficient, and a 85.3% Jaccard Index.
机译:基于形态属性的胚胎质量评估对于通过体外受精(IVF)获得更高的妊娠率非常重要。胚胎内细胞团(ICM)和滋养外层上皮细胞(TE)的准确分段非常重要,因为这些参数可以帮助预测胚胎的生存能力和活产潜力。但是,由于ICM和TE彼此之间以及周围环境的形状变化和质地相似,因此很难进行分段。为了解决这个问题,实现了基于深度神经网络(DNN)的分割方法。 DNN可以以99.1%的精度,94.9%的精度,93.8%的召回率,94.3%的骰子系数和89.3%的Jaccard指数识别ICM区域。它可以以98.3%的精度,91.8%的精度,93.2%的查全率,92.5%的骰子系数和85.3%的Jaccard指数提取TE区域。

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