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Semantic segmentation of human oocyte images using deep neural networks

机译:利用深神经网络的人卵母细胞图像的语义分割

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Infertility is a significant problem of humanity. In vitro fertilisation is one of the most effective and frequently applied ART methods. The effectiveness IVF depends on the assessment and selection of gametes and embryo with the highest developmental potential. The subjective nature of morphological assessment of oocytes and embryos is still one of the main reasons for seeking effective and objective methods for assessing quality in automatic manner. The most promising methods to automatic classification of oocytes and embryos are based on image analysis aided by machine learning techniques. The special attention is paid on deep neural networks that can be used as classifiers solving the problem of automatic assessment of the oocytes/embryos. This paper deals with semantic segmentation of human oocyte images using deep neural networks in order to develop new version of the predefined neural networks. Deep semantic oocyte segmentation networks can be seen as medically oriented predefined networks understanding the content of the image. The research presented in the paper is focused on the performance comparison of different types of convolutional neural networks for semantic oocyte segmentation. In the case study, the merits and limitations of the selected deep neural networks are analysed. 71 deep neural models were analysed. The best score was obtained for one of the variants of DeepLab-v3-ResNet-18 model, when the training accuracy (Acc) reached about 85% for training patterns and 79% for validation ones. The weighted intersection over union (wIoU) and global accuracy (gAcc) for test patterns were calculated, as well. The obtained values of these quality measures were 0,897 and 0.93, respectively. The obtained results prove that the proposed approach can be applied to create deep neural models for semantic oocyte segmentation with the high accuracy guaranteeing their usage as the predefined networks in other tasks.
机译:不孕症是人类的重大问题。体外施肥是最有效和最常应用的艺术方法之一。 IVF的有效性取决于具有最高发育潜力的配子和胚胎的评估和选择。卵母细胞和胚胎形态学评估的主观性质仍然是寻求以自动方式评估质量的有效和客观方法的主要原因之一。最有希望的卵母细胞和胚胎分类的方法基于机器学习技术的图像分析。在深度神经网络上支付特别注意,可以用作解决卵母细胞/胚胎自动评估问题的分类器。本文使用深神经网络处理人卵母图像的语义分割,以开发新版本的预定义神经网络。深度语义卵母细胞分割网络可以看作是医学上定向的预定义网络,了解图像的内容。本文中提出的研究专注于不同类型的语义卵母细胞分割的不同类型的卷积神经网络的性能比较。在案例研究中,分析了所选深度神经网络的优点和局限。分析了71个深神经模型。当训练精度(ACC)达到训练模式的训练精度(ACC)达到约85%时,获得了最佳分数。计算出用于测试模式的联盟(WIOU)和全局精度(GACC)的加权交叉口。所获得的这些质量措施的值分别为0,897和0.93。所获得的结果证明,可以应用所提出的方法来创建语义卵母细胞分段的深度神经模型,以高精度保证其用作其他任务中的预定义网络。

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