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Application of Support Vector Machine to Recognize Trans-differentiated Neural Progenitor Cells for Bright-Field Microscopy

机译:支持向量机在明视野显微镜下识别转分化神经祖细胞的应用

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摘要

One possible solution of the investigation of the cell fate decision and its function is the study of cell morphology. 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. In order to automatically analyze and cultivate cells, a system classifying NPCs under bright-field microscopic imaging is necessary. In this paper, we investigate the use of support vector machine (SVM) based on a set of features for this task. The results illustrate that such a data driven approach has remarkable recognition and generalization performance.
机译:研究细胞命运决定及其功能的一种可能解决方案是研究细胞形态。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) 。为了自动分析和培养细胞,需要在明场显微成像下对NPC进行分类的系统。在本文中,我们基于此功能的一组功能,研究了支持向量机(SVM)的使用。结果表明,这种数据驱动方法具有显着的识别和泛化性能。

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