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Deep Learning-Based Strategy For Macromolecules Classification with Imbalanced Data from Cellular Electron Cryotomography

机译:基于深度学习的细胞电子冷冻层析成像数据不平衡的大分子分类策略

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Deep learning model trained by imbalanced data may not work satisfactorily since it could be determined by major classes and thus may ignore the classes with small amount of data. In this paper, we apply deep learning based imbalanced data classification for the first time to cellular macromolecular complexes captured by Cryo-electron tomography (Cryo-ET). We adopt a range of strategies to cope with imbalanced data, including data sampling, bagging, boosting, Genetic Programming based method and. Particularly, inspired from Inception 3D network, we propose a multi-path CNN model combining focal loss and mixup on the Cryo-ET dataset to expand the dataset, where each path had its best performance corresponding to each type of data and let the network learn the combinations of the paths to improve the classification performance. In addition, extensive experiments have been conducted to show our proposed method is flexible enough to cope with different number of classes by adjusting the number of paths in our multi-path model. To our knowledge, this work is the first application of deep learning methods of dealing with imbalanced data to the internal tissue classification of cell macromolecular complexes, which opened up a new path for cell classification in the field of computational biology.
机译:由不平衡数据训练的深度学习模型可能无法令人满意地工作,因为它可能是由主要类别决定的,因此可能会忽略少量数据的类别。在本文中,我们首次将基于深度学习的不平衡数据分类应用于通过低温电子层析成像(Cryo-ET)捕获的细胞大分子复合物。我们采用了一系列策略来应对不平衡数据,包括数据采样,装袋,增强,基于遗传编程的方法和。特别是,受Inception 3D网络的启发,我们提出了一种在Cryo-ET数据集上结合了焦点损失和混合的多路径CNN模型,以扩展数据集,其中每种路径都具有与每种数据类型相对应的最佳性能,并让网络学习路径的组合以提高分类性能。此外,已经进行了广泛的实验,表明我们提出的方法足够灵活,可以通过调整多路径模型中的路径数量来应对不同类别的类别。就我们所知,这项工作是将深度学习方法处理不平衡数据首次应用于细胞大分子复合物的内部组织分类,从而为计算生物学领域的细胞分类开辟了一条新途径。

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