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Detecting Abnormal Cell Division Patterns in Early Stage Human Embryo Development

机译:检测早期人体胚胎发育中的异常细胞分裂模式

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Recently, it has been shown that early division patterns, such as cell division timing biomarkers, are crucial to predict human embryo viability. Precise and accurate measurement of these markers requires cell lineage analysis to identify normal and abnormal division patterns. However, current approaches to early-stage embryo analysis only focus on estimating the number of cells and their locations, thus failing to detect abnormal division patterns and potentially yielding incorrect timing biomarkers. In this work we propose an automated tool that can perform lineage tree analysis up to the 5-cell stage, which is sufficient to accurately compute all the known important biomarkers. To this end, we introduce a CRF-based cell localization framework. We demonstrate the benefits of our approach on a data set of 22 human embryos, resulting in correct identification of all abnormal division patterns in the data set.
机译:最近,已经表明,早期分割模式,例如细胞分裂定时生物标志物,对于预测人胚胎活力是至关重要的。这些标记的精确和准确测量需要细胞谱系分析以识别正常和异常的分裂模式。然而,目前的早期胚胎分析方法仅关注估计细胞和其位置的数量,因此未能检测异常分割模式并可能产生不正确的定时生物标志物。在这项工作中,我们提出了一种自动化工具,可以执行谱系分析到5个单元级,足以准确地计算所有已知的重要生物标志物。为此,我们介绍了基于CRF的小区本地化框架。我们展示了我们在22个人胚胎的数据集上的方法的好处,从而正确地识别数据集中的所有异常划分模式。

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