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Deep Model Based Transfer and Multi-Task Learning for Biological Image Analysis

机译:基于模型的生物学图像分析的转移与多任务学习

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摘要

A central theme in learning from image data is to develop appropriate representations for the specific task at hand. Thus, a practical challenge is to determine what features are appropriate for specific tasks. For example, in the study of gene expression patterns in Drosophila, texture features were particularly effective for determining the developmental stages from in situ hybridization images. Such image representation is however not suitable for controlled vocabulary term annotation. Here, we developed feature extraction methods to generate hierarchical representations for ISH images. Our approach is based on the deep convolutional neural networks that can act on image pixels directly. To make the extracted features generic, the models were trained using a natural image set with millions of labeled examples. These models were transferred to the ISH image domain. To account for the differences between the source and target domains, we proposed a partial transfer learning scheme in which only part of the source model is transferred. We employed multi-task learning method to fine-tune the pre-trained models with labeled ISH images. Results showed that feature representations computed by deep models based on transfer and multi-task learning significantly outperformed other methods for annotating gene expression patterns at different stage ranges.
机译:从图像数据学习中的中心主题是为手头的特定任务制定适当的表示。因此,实际挑战是确定哪些功能适合特定任务。例如,在果蝇中基因表达模式的研究中,纹理特征对于从原位杂交图像中确定发育阶段特别有效。然而,这种图像表示不适合受控的词汇项注释。在这里,我们开发了特征提取方法,为ISH图像生成分层表示。我们的方法基于深度卷积神经网络,可以直接作用于图像像素。为了使提取的特征通用,使用具有数百万标记的示例的自然图像进行培训。这些模型被转移到ISH图像域。要考虑到源域和目标域之间的差异,我们提出了一种部分转移学习方案,其中仅传输了部分源模型。我们使用多任务学习方法来微调带有标记的ISH图像的预先训练的模型。结果表明,基于传输和多任务学习的深层模型计算的特征表示显着优于用于在不同阶段范围内注释基因表达模式的其他方法。

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