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首页> 外文期刊>PLoS Computational Biology >Red blood cell phenotyping from 3D confocal images using artificial neural networks
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Red blood cell phenotyping from 3D confocal images using artificial neural networks

机译:使用人工神经网络从3D共焦图像中的红细胞表型

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摘要

The investigation of cell shapes mostly relies on the manual classification of 2D images, causing a subjective and time consuming evaluation based on a portion of the cell surface. We present a dual-stage neural network architecture for analyzing fine shape details from confocal microscopy recordings in 3D. The system, tested on red blood cells, uses training data from both healthy donors and patients with a congenital blood disease, namely hereditary spherocytosis. Characteristic shape features are revealed from the spherical harmonics spectrum of each cell and are automatically processed to create a reproducible and unbiased shape recognition and classification. The results show the relation between the particular genetic mutation causing the disease and the shape profile. With the obtained 3D phenotypes, we suggest our method for diagnostics and theragnostics of blood diseases. Besides the application employed in this study, our algorithms can be easily adapted for the 3D shape phenotyping of other cell types and extend their use to other applications, such as industrial automated 3D quality control.
机译:细胞形状的研究大多依赖于2D图像的手动分类,从而基于细胞表面的一部分引起主观和耗时的评估。我们提出了一种双级神经网络架构,用于分析来自3D中的共聚焦显微镜录制的细状细节。在红细胞上测试的系统,使用来自健康供体和先天性血液疾病的患者的培训数据,即遗传性球织毒性。从每个电池的球面谐波频谱揭示特征形状特征,并且自动处理以产生可重复和无偏的形状识别和分类。结果表明了引起疾病的特定基因突变与形状轮廓之间的关系。通过获得的3D表型,我们建议我们对血症疾病的诊断和治疗方法。除本研究中所采用的应用外,我们的算法还可以容易地适应其他细胞类型的3D形状表型,并扩展它们对其他应用的用途,例如工业自动化3D质量控制。

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