利用深度学习识别细胞核

Roger Booto Tokime, Hassan Elassady, M. Akhloufi
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引用次数: 9

摘要

新药的开发是一个漫长而复杂的过程,需要经过不同的分析和筛选阶段。在大多数分析阶段,第一步是检测细胞核。这使得研究人员能够识别样本中的单个细胞,因为大多数细胞含有一个充满DNA(脱氧核糖核酸)的细胞核。细胞核的鉴定有助于测量细胞在暴露于各种处理时的反应,并导致理解工作背后的生物学过程。这个过程既费力又缓慢,因为它需要一次识别和分析数千张图像。因此,自动化这一步骤将加快分析过程。因此,新药上市的时间可以大大缩短。这项工作提出了三种深度学习技术来分割图像并识别细胞核。基于语义分割网络的改进架构如UNet、SegNet和FCN被开发出来。获得的结果非常有趣,F1-Scores从FCN的94%到UNet的96%不等。SegNet紧随UNet, F1-Score为95%。
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Identifying the Cells' Nuclei Using Deep Learning
The development time of new drugs is a long and complex process with different stages of analysis and screening. In most of the analysis stage, the first step is the detection of cells' nuclei. This allows researchers to identify the individual cells in a sample because most of the cells contain a nucleus filled with DNA (Deoxyribonucleic acid). Identification of cell nuclei help measure the reactions of cells when exposed to various treatments and lead to understanding the biological process underlying the work. This process is laborious and slow because it requires the identification and analysis of thousands of images at a time. Thus, automating this step would speed up the analytical process. Therefore, the time to market for a new drug can be significantly reduced. This work proposes three deep learning techniques to segment the images and to identify the cells' nuclei. Modified architectures based on semantic segmentation networks such as UNet, SegNet, and FCN were developed. The obtained results are very interesting with F1-Scores ranging from 94% for FCN to 96% for UNet. SegNet follows closely UNet with an F1-Score of 95%.
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