Deep Learning Method for Estimating Germ-layer Regions of Early Differentiated Human Induced Pluripotent Stem Cells on Micropattern Using Bright-field Microscopy Image.

Slo-Li Chu, Hideo Yokota, Pai-Ting Wang, Kuniya Abe, Yohei Hayashi, Dooseon Cho, Ming-Dar Tsai
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Abstract

Live cell staining is expensive and may bring potential safety issues in downstream clinical applications, bright-field images rather than staining images should be more suitable to reveal time-series changes of differentiating hiPSCs (human induced pluripotent stem cells) and three-germ layers differentiated from the hiPSCs. This study proposed a deep learning method for estimating immunofluorescence regions on a bright-field microscopy images. The networks trained by multiple types of fluorescence images can estimate the types of fluorescence images from a bright-field image. The estimated pseudo Hoechst image is used to segment hiPSCs, and the others classify the segmented hiPSCs as respective germ-layer cells. The experimental results show over 75% correct rates for the segmentation and classification were achieved, indicating the proposed method can be useful tool in evaluating pluripotency of hiPSC and delineating the germ layer formation process without cell staining.

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基于明场显微图像的深度学习方法估计早期分化人诱导多能干细胞胚层区域
活细胞染色成本高,且在下游临床应用中可能带来潜在的安全性问题,因此使用亮场图像而非染色图像更适合揭示人诱导多能干细胞(human induced pluripotent stem cells, hiPSCs)分化和从hiPSCs分化的三种胚层的时间序列变化。本研究提出了一种估计明场显微镜图像免疫荧光区域的深度学习方法。由多种类型的荧光图像训练的网络可以从一幅亮场图像中估计出荧光图像的类型。估计的伪Hoechst图像用于分割hipsc,其他人将分割的hipsc分类为各自的生殖层细胞。实验结果表明,该方法的分割和分类正确率超过75%,表明该方法可作为评估hiPSC多能性和描述胚层形成过程的有效工具。
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