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Adversarial domain adaptation for cross data source macromolecule in situ structural classification in cellular electron cryo-tomograms

机译:细胞电子低温断层图中跨数据源大分子原位结构分类的对抗域适应

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摘要

MotivationSince 2017, an increasing amount of attention has been paid to the supervised deep learning-based macromolecule in situ structural classification (i.e. subtomogram classification) in cellular electron cryo-tomography (CECT) due to the substantially higher scalability of deep learning. However, the success of such supervised approach relies heavily on the availability of large amounts of labeled training data. For CECT, creating valid training data from the same data source as prediction data is usually laborious and computationally intensive. It would be beneficial to have training data from a separate data source where the annotation is readily available or can be performed in a high-throughput fashion. However, the cross data source prediction is often biased due to the different image intensity distributions (a.k.a. domain shift).
机译:动机自2017年以来,由于深度学习的可扩展性大大提高,细胞电子冷冻断层扫描(CECT)中基于监督的基于深度学习的大分子原位结构分类(即子图分类)受到越来越多的关注。但是,这种监督方法的成功很大程度上取决于大量标记培训数据的可用性。对于CECT,从与预测数据相同的数据源创建有效的训练数据通常很费力且计算量大。从单独的数据源获得训练数据将是有益的,在该数据源中,注释很容易获得或可以以高通量的方式执行。但是,由于不同的图像强度分布(也称为域移位),跨数据源预测通常会产生偏差。

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