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A Multi-relational Learning Approach for Knowledge Extraction in Vitro Fertilization Domain

机译:一种多关系学习方法,用于在体外施肥结构域内的知识提取

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In the field of assisted reproductive technologies, ICSI fertilization is a medically-assisted reproduction technique, enabling infertile couples to achieve successful pregnancy. In this field crucial points are: the analysis of clinical data of the patient, aimed at adopting an appropriate stimulation protocol to obtain an adequate number of oocytes, and the selection of the best oocytes to fertilize. In this paper we would provide a framework able to extract useful morphological features from oocyte images that combined with the provided clinical data of the patients can be used to discover new information for defining therapeutic plans for new patients as well as selecting the most promising oocytes.
机译:在辅助生殖技术领域,ICSI施肥是一种医学辅助的生殖技术,使不育的夫妇实现成功怀孕。在该场关键点是:分析患者的临床资料,旨在采用适当的刺激方案来获得足够数量的卵母细胞,以及选择最佳卵母细胞以施肥。在本文中,我们将提供一种能够从卵母细胞图像中提取有用的形态特征的框架,该卵母图像与所提供的患者的临床数据相结合,可以用于发现新信息,以确定新患者的治疗计划以及选择最有前途的卵母细胞。

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