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HMIML: Hierarchical Multi-Instance Multi-Label Learning of Drosophila Embryogenesis Images Using Convolutional Neural Networks

机译:HMIML:使用卷积神经网络的果蝇胚胎发生图像的分层多实例多标签学习

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The Drosophila embryonic gene expression images provide important spatio-temporal expression information for understanding the mechanisms of Drosophila embryogenesis. Automatic annotation of these images is an imperative but challenging task. Unlike the auto-annotation for nature images, the labels (terms from a controlled vocabulary) are assigned to genes rather than images. Each gene corresponds to a set of images, and different genes are associated with different numbers of images and labels, thus conventional machine learning methods are not applicable in such a scenario. In this study, we treat this task as a multi-instance multi-label (MIML) problem, and propose a hierarchical MIML learning framework, called HMIML. We implement HMIML at image-level and gene-level, respectively, both using convolutional neural networks. Especially, an image stitching strategy is employed to get a combined image representation at gene-level. Experimental results on the FlyExpress database show that HMIML enhances annotation accuracy on all developmental stages compared with the existing methods.
机译:果蝇胚胎基因表达图像为理解果蝇胚胎发生的机理提供了重要的时空表达信息。这些图像的自动注释是当务之急,但具有挑战性的任务。与自然图像的自动注释不同,标签(来自受控词汇的术语)被分配给基因而不是图像。每个基因对应一组图像,并且不同的基因与不同数量的图像和标记相关联,因此常规的机器学习方法不适用于这种情况。在这项研究中,我们将此任务视为多实例多标签(MIML)问题,并提出了一种称为HMIML的分层MIML学习框架。我们分别使用卷积神经网络在图像级别和基因级别上实现HMIML。特别是,采用图像拼接策略来获得基因水平的组合图像表示。 FlyExpress数据库上的实验结果表明,与现有方法相比,HMIML在所有开发阶段均提高了注释准确性。

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