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Performance of convolutional neural networks for identification of bacteria in 3D microscopy datasets

机译:卷积神经网络在3D显微镜数据集中识别细菌的性能

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摘要

Three-dimensional microscopy is increasingly prevalent in biology due to the development of techniques such as multiphoton, spinning disk confocal, and light sheet fluorescence microscopies. These methods enable unprecedented studies of life at the microscale, but bring with them larger and more complex datasets. New image processing techniques are therefore called for to analyze the resulting images in an accurate and efficient manner. Convolutional neural networks are becoming the standard for classification of objects within images due to their accuracy and generalizability compared to traditional techniques. Their application to data derived from 3D imaging, however, is relatively new and has mostly been in areas of magnetic resonance imaging and computer tomography. It remains unclear, for images of discrete cells in variable backgrounds as are commonly encountered in fluorescence microscopy, whether convolutional neural networks provide sufficient performance to warrant their adoption, especially given the challenges of human comprehension of their classification criteria and their requirements of large training datasets. We therefore applied a 3D convolutional neural network to distinguish bacteria and non-bacterial objects in 3D light sheet fluorescence microscopy images of larval zebrafish intestines. We find that the neural network is as accurate as human experts, outperforms random forest and support vector machine classifiers, and generalizes well to a different bacterial species through the use of transfer learning. We also discuss network design considerations, and describe the dependence of accuracy on dataset size and data augmentation. We provide source code, labeled data, and descriptions of our analysis pipeline to facilitate adoption of convolutional neural network analysis for three-dimensional microscopy data.
机译:由于诸如多光子,共聚焦旋转盘和薄板荧光显微镜等技术的发展,三维显微镜在生物学中越来越普遍。这些方法可以进行空前的微观生命研究,但是带来了更大,更复杂的数据集。因此,需要新的图像处理技术以准确和有效的方式分析所得图像。卷积神经网络由于与传统技术相比具有准确性和通用性,正成为图像中对象分类的标准。但是,它们在3D成像数据中的应用相对较新,并且主要应用于磁共振成像和计算机断层扫描领域。对于荧光显微镜中经常遇到的可变背景中离散细胞的图像,卷积神经网络是否提供足够的性能来保证其被采用尚无定论,特别是考虑到人类对它们的分类标准和大型训练数据集的要求的挑战。因此,我们应用了3D卷积神经网络来区分幼虫斑马鱼肠的3D光片荧光显微镜图像中的细菌和非细菌对象。我们发现神经网络的准确性与人类专家相同,优于随机森林和支持向量机分类器,并且通过使用转移学习将其很好地推广到不同的细菌种类。我们还将讨论网络设计注意事项,并描述准确性对数据集大小和数据扩充的依赖性。我们提供源代码,标记的数据以及对我们的分析管道的描述,以促进对三维显微镜数据采用卷积神经网络分析。

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