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A Preliminary Study of Transferring the Existing CNN Models for Small-Size Nuclei Recognition in Histopathology Images

机译:在组织病理学图像中传递现有CNN模型的初步研究

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Automated nuclei recognition and detection is a critical step for a number of computer assisted pathology based on image processing techniques. However, automated nuclei recognition and detection is quite challenging due to the exited heterogeneous characteristics of cancer nuclei such as large variability in size, shape, appearance, and texture of the different nuclei. Deep learning approaches, where the most popular one is the deep Convolutional Neural Network (CNN), have been shown to provide encouraging results in different computer vision tasks, and many CNN models learned already with large-scale image dataset such as ImageNet have been released. How to effectively adopt the exiting CNN models to other domain tasks such as medical image analysis has attracted hot attention for transferring the obtained knowledge from the general image set to the specific domain task, which is called as transfer learning. Since the released CNN model usually require a fixed size of input images, transfer learning strategy compulsorily unifies the available images in the target domain to the required size in the CNN models, which maybe modifies the inherent structure in the target images and affect the final performance. This study exploits an adaptable transfer learning strategy flexibly for any size of input images via removing the mathematical operation components but retaining the learned knowledge in the exiting CNN models. We modify the released CNN models: AlexNet, VGGnet and ResNet previously learned with the ImageNet dataset for dealing with the small-size of image patches to implement nuclei recognition. Experimental results show that our proposed adaptable transfer learning strategy achieves promising performance for nuclei recognition compared with a constructed CNN architecture for small-size of images.
机译:自动核识别和检测是基于图像处理技术的许多计算机辅助病理的关键步骤。然而,由于不同核的尺寸,形状,外观和质地的巨大可变性,自动核识别和检测是非常具有挑战性的癌核的异质特性。最受欢迎的方法,最受欢迎的方法是深度卷积神经网络(CNN),已被证明提供了在不同的计算机视觉任务中的令人鼓舞的结果,并且已经释放了许多已经有大规模图像数据集的CNN模型,例如想象集已经释放。如何有效地将退出的CNN模型用于其他域任务,例如医学图像分析已经吸引了从将所获得的知识传送到特定域任务的全部图像传送到特定域任务的热门关注。由于释放的CNN模型通常需要固定的输入图像大小,因此传输学习策略强制将目标域中的可用图像统一到CNN模型中所需的尺寸,这可能会修改目标图像中的固有结构并影响最终性能。本研究通过去除数学操作组件来利用任何大小的输入图像来灵活地利用适应性的转移学习策略,但在退出的CNN模型中保留所学知识。我们修改了发布的CNN模型:AlexNet,VGGNet和Reset先前使用ImageNet数据集进行了学习,用于处理小尺寸的图像修补程序以实现核心识别。实验结果表明,我们所提出的适应性转移学习策略与用于小型图像的构建的CNN架构相比,核心识别的有希望的性能。

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