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High Precision Phase Recovery for Single Frame Fringe Pattern of Label-free Cells Detection Based on Deep Learning

机译:基于深度学习的无标签细胞检测单帧条纹图案的高精度相位恢复

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As the basic unit of organism composition and life activity, the change of physiological state of cell is important to clinical disease prediction and diagnosis, especially blood diseases. In order to obtain the morphology of blood cells with abundant information content in 3D space without any biochemical or other complex processing for samples, this study proposed a transverse shear interference 3D imaging detection method for real-time dynamic label-free living cells based on deep learning. The phase extraction and recovery method of single red blood cell interference fringe image obtained by quantitative phase imaging system is carried out by Generating Antagonism Network (GAN). This method has a great improvement in efficiency and accuracy, it has a profound impact on the study of biological cells, and can be extended to the fields of cancer diagnosis and drug development in genomics.
机译:作为生物组成和生命活动的基本单位,细胞生理状态的变化对于临床疾病的预测和诊断,特别是血液疾病,具有重要意义。为了在不进行任何生化或其他复杂处理的情况下获得3D空间中信息量丰富的血细胞形态,本研究提出了一种基于深度的实时动态无标记活细胞横向剪切干扰3D成像检测方法学习。定量相位成像系统获得的单红细胞干涉条纹图像的相位提取和恢复方法是通过产生拮抗网络(GAN)进行的。该方法在效率和准确性上都有很大的提高,对生物细胞的研究产生了深远的影响,可以扩展到基因组学中的癌症诊断和药物开发领域。

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