Faculty of Medicine and Health Technology, Tampere University, FI-33520 Tampere, Finland.
Department of Applied Physics, University of Eastern Finland, FI-70211 Kuopio, Finland.
Biomolecules. 2021 Feb 11;11(2):264. doi: 10.3390/biom11020264.
Identifying localization of proteins and their specific subpopulations associated with certain cellular compartments is crucial for understanding protein function and interactions with other macromolecules. Fluorescence microscopy is a powerful method to assess protein localizations, with increasing demand of automated high throughput analysis methods to supplement the technical advancements in high throughput imaging. Here, we study the applicability of deep neural network-based artificial intelligence in classification of protein localization in 13 cellular subcompartments. We use deep learning-based on convolutional neural network and fully convolutional network with similar architectures for the classification task, aiming at achieving accurate classification, but importantly, also comparison of the networks. Our results show that both types of convolutional neural networks perform well in protein localization classification tasks for major cellular organelles. Yet, in this study, the fully convolutional network outperforms the convolutional neural network in classification of images with multiple simultaneous protein localizations. We find that the fully convolutional network, using output visualizing the identified localizations, is a very useful tool for systematic protein localization assessment.
确定与特定细胞区室相关的蛋白质及其特定亚群的定位对于理解蛋白质功能以及与其他大分子的相互作用至关重要。荧光显微镜是评估蛋白质定位的一种强大方法,随着高通量成像技术的不断进步,对自动化高通量分析方法的需求也在不断增加。在这里,我们研究了基于深度神经网络的人工智能在 13 种细胞亚区室的蛋白质定位分类中的适用性。我们使用基于深度学习的卷积神经网络和具有相似架构的全卷积网络进行分类任务,旨在实现准确的分类,但重要的是,还比较了网络。我们的结果表明,这两种类型的卷积神经网络在主要细胞器的蛋白质定位分类任务中表现良好。然而,在这项研究中,全卷积网络在分类具有多种同时蛋白质定位的图像方面优于卷积神经网络。我们发现,使用输出可视化识别的定位的全卷积网络是一种非常有用的工具,可用于系统的蛋白质定位评估。