Blastomere Cell Counting and Centroid Localization in Microscopic Images of Human Embryo

Reza Moradi Rad, Parvaneh Saeedi, J. Au, J. Havelock
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引用次数: 30

Abstract

The time of the first cell cleavage in the embryonic development of a human embryo is an important indicator of the embryo's potential for developing into a healthy baby. The time and synchronicity of following cleavages are also linked to the quality of an embryo. In this paper, a deep learning based framework is proposed to take on the challenging task of automatic counting and centroid localization of embryonic cells (blastomeres) in microscopic images of human embryos. In particular, ensemble of residual dilated UNet is proposed to count blastomeres and localize their centroids. Experimental results confirm that the proposed framework is capable of counting blastomeres in a densely occupied and overlapping space of human embryo by an average accuracy of 88.2% for embryos of 1 - 5 cells.
人胚胎显微图像中卵裂球细胞计数及质心定位
人类胚胎发育过程中第一次细胞分裂的时间是胚胎发育成健康婴儿潜力的重要指标。随后分裂的时间和同步性也与胚胎的质量有关。本文提出了一种基于深度学习的框架来承担人类胚胎显微图像中胚胎细胞(卵裂球)的自动计数和质心定位的挑战性任务。特别提出了残余膨胀UNet集合来计数卵裂球并定位其质心。实验结果证实,所提出的框架能够在1 - 5个细胞的胚胎中对密集重叠的人类胚胎中的卵裂球进行计数,平均准确率为88.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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