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A novel machine learning based approach for iPS progenitor cell identification

机译:一种新颖的基于机器学习的iPS祖细胞识别方法

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Identification of induced pluripotent stem (iPS) progenitor cells could provide valuable information for studying the origin and underlying mechanism of iPS cells. However, it is very difficult to identify experimentally since there are no biomarkers known for early progenitor cells, and only after about 6 days of induction, iPS cells can be experimentally determined via fluorescent probes. What is more, the percentage of the progenitor cells during the early induction period is below 5%, too low to capture experimentally in early stage. In this work, we proposed an approach for the identification of iPS progenitor cells, the iPS forming cells, based on machine learning and microscopic image analysis. The aim is to help biologists to enrich iPS progenitor cells during the early stage of induction, which allows experimentalists to select iPS progenitor cells with much higher probability, and furthermore to study the biomarkers which trigger the reprogramming process.
机译:诱导多能干(iPS)祖细胞的鉴定可为研究iPS细胞的起源和潜在机制提供有价值的信息。然而,由于没有早期祖细胞已知的生物标记,因此很难通过实验鉴定,并且只有在诱导约6天后,才能通过荧光探针通过实验确定iPS细胞。此外,诱导初期的祖细胞百分比低于5%,太低而无法在早期进行实验捕获。在这项工作中,我们提出了一种基于机器学习和显微图像分析的iPS祖细胞,iPS形成细胞的鉴定方法。目的是帮助生物学家在诱导的早期阶段丰富iPS祖细胞,这使实验人员可以更有可能选择iPS祖细胞,并进一步研究触发重新编程过程的生物标记。

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