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Convolutional Neural Networks in Automatic Recognition of Trans-differentiated Neural Progenitor Cells under Bright-Field Microscopy

机译:卷积神经网络在明视场显微镜下自动识别转分化神经祖细胞

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The study of cell morphology changes leads the investigation of the cell fate decision and its function. Bright-field imaging analysis allow us to use a labeling free and non-invasive approach to measure the morphological dynamics during cellular reprogramming, which includes induced pluripotent stem cells (iPSCs), and trans-differentiated neural progenitor cells (NPCs) from somatic cell source. However, the traditional method to study the NPC differentiation and its related function involves staining, and cell lysis, which can not materialized further for the clinical uses. In order to automatically, non-invasively, non-labelled analyze and cultivate cells, a system classifying NPCs under bright-field microscopic imaging is necessary. In this paper, we propose a novel recognition system based on convolutional neural networks, which could pre-process images and classify NPCs and non-NPCs. Experimental results prove that the proposed system provides a new tool for fundamental research in iPSCs and NPCs based generation medicine.
机译:细胞形态变化的研究导致对细胞命运决定及其功能的研究。明场成像分析使我们能够使用无标记的非侵入性方法来测量细胞重编程期间的形态动力学,其中包括来自体细胞来源的诱导性多能干细胞(iPSC)和转分化神经祖细胞(NPC) 。然而,传统的研究NPC分化及其相关功能的方法涉及染色和细胞裂解,无法进一步应用于临床。为了自动,无创,无标记地分析和培养细胞,在明场显微成像下对NPC进行分类的系统是必要的。在本文中,我们提出了一种基于卷积神经网络的新型识别系统,该系统可以对图像进行预处理并对NPC和非NPC进行分类。实验结果证明,该系统为基于iPSC和NPC的世代医学基础研究提供了新的工具。

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