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Construction of a system using a deep learning algorithm to count cell numbers in nanoliter wells for viable single-cell experiments

机译:使用深度学习算法对纳升孔中的细胞数进行计数以进行可行的单细胞实验的系统构建

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摘要

For single-cell experiments, it is important to accurately count the number of viable cells in a nanoliter well. We used a deep learning-based convolutional neural network (CNN) on a large amount of digital data obtained as microscopic images. The training set consisted of 103 019 samples, each representing a microscopic grayscale image. After extensive training, the CNN was able to classify the samples into four categories, i.e., 0, 1, 2, and more than 2 cells per well, with an accuracy of 98.3% when compared to determination by two trained technicians. By analyzing the samples for which judgments were discordant, we found that the judgment by technicians was relatively correct although cell counting was often difficult by the images of discordant samples. Based on the results, the system was further enhanced by introducing a new algorithm in which the highest outputs from CNN were used, increasing the accuracy to higher than 99%. Our system was able to classify the data even from wells with a different shape. No other tested machine learning algorithm showed a performance higher than that of our system. The presented CNN system is expected to be useful for various single-cell experiments, and for high-throughput and high-content screening.
机译:对于单细胞实验,准确计数纳升孔中的活细胞数量非常重要。我们对大量以微观图像形式获得的数字数据使用了基于深度学习的卷积神经网络(CNN)。训练集由103 019个样本组成,每个样本代表一个微观灰度图像。经过广泛的训练后,CNN能够将样品分为四类,即每孔0、1、2和2个以上的细胞,与两名训练有素的技术人员进行测定相比,准确度为98.3%。通过分析判断不一致的样本,我们发现技术人员的判断相对正确,尽管不协调样本的图像通常难以进行细胞计数。根据结果​​,通过引入一种新算法进一步增强了该系统,该算法使用了CNN的最高输出,将准确性提高到99%以上。我们的系统甚至可以对形状不同的井中的数据进行分类。没有其他经过测试的机器学习算法显示出比我们的系统更高的性能。预期所提出的CNN系统可用于各种单细胞实验以及高通量和高含量的筛选。

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