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Non-Destructive Fibroblast NIH-3T3 Spheroid Classification Using Convolutional Neural Network

机译:使用卷积神经网络的非破坏性成纤维细胞NIH-3T3球体分类

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Cellular spheroid is a complex aggregate of cells, and imaging is an important step in understanding how cell behavior operates and give references about possibilities according to the cells in the spheroid formation. Identifying structures in these images is manual and time-consuming and have a high rate of variability inter experts. An automated identification can solve these problems. The aim of this work is to present a study of Convolutional Neural Network (CNN) applied to live cells identification in NIH-3T3 spheroid. Four different CNN architectures are exploited in this paper: AlexNet, RcsNctl8, GoogLeNet, and VGG 16 with batch normalization. Many experiments were performed to get the best architecture involving data augmentation, hypcrparameter tuning, and transfer learning using ImageNet. The experiments identify up to five different structures in a spheroid image, where the AlexNct achieved the best performance considering the F1-score as the evaluation metric. The use of CNN for this kind of identification opens the possibility of following the spheroid's behaviour when cultured in more complex images.
机译:蜂窝球状体是细胞的复杂聚集体,并且成像是了解细胞行为如何运行的重要步骤,并根据球形地层中的细胞提供关于可能性的参考。识别这些图像中的结构是手动和耗时的,并且具有高度的变异性专家。自动识别可以解决这些问题。本作作品的目的是展示对卷积神经网络(CNN)的研究,其应用于NIH-3T3球体中的活细胞识别。本文利用了四种不同的CNN架构:alexNet,RCSNCTL8,Googlenet和VGG 16,具有批量标准化。进行了许多实验以获得涉及数据增强,高考性计调谐和使用ImageNet的转移学习的最佳结构。实验在球形图像中识别多达五种不同的结构,其中AlexNCT考虑了作为评估度量的F1分数的最佳性能。在更复杂的图像中培养时,将CNN用于这种识别的可能性开启了在培养时遵循球状体的行为。

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