Identification of Viable Embryos Using Deep Learning for Medical Image

Qiang Cao, S. Liao, Xiangqian Meng, Han Ye, Zhenbin Yan, Puxi Wang
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引用次数: 11

Abstract

Identifying viable embryos for implantation is one of the most relevant aspects in assisted reproductive technology. However, embryo selection highly depends on visual examination by embryologists via microscopy, and their evaluations are often subjective. The rapid growth of image processing technology has resulted in increased interest in the use of machine learning methods for embryo selection in in vitro fertilization (IVF) programs. The present study uses deep learning method for the morphological classification of embryos based on medical images. The proposed system is trained and tested on a real data set of 1,310 images from 344 embryos and evaluated by comparison with other traditional machine learning methods to solve similar classification problems. The results indicate that our new deep learning model significantly outperforms other methods. Our work contributes immensely to the fields of assisted reproductive technology, medical image processing, and decision support system design.
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基于深度学习的医学图像存活胚胎识别
确定可行的胚胎植入是辅助生殖技术中最相关的方面之一。然而,胚胎的选择高度依赖于胚胎学家通过显微镜的视觉检查,他们的评估往往是主观的。图像处理技术的快速发展导致人们对体外受精(IVF)计划中使用机器学习方法进行胚胎选择的兴趣增加。本研究利用深度学习方法对医学图像上的胚胎进行形态分类。该系统在来自344个胚胎的1310张图像的真实数据集上进行了训练和测试,并通过与其他传统机器学习方法进行比较来评估,以解决类似的分类问题。结果表明,我们的新深度学习模型明显优于其他方法。我们的工作对辅助生殖技术,医学图像处理和决策支持系统设计领域做出了巨大贡献。
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