Towards a Digital Diatom: Image Processing and Deep Learning Analysis of Bacillaria paradoxa Dynamic Morphology

Bradly Alicea, R. Gordon, T. Harbich, Ujjwal Singh, A. Singh, V. Varma
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Abstract

Recent years have witnessed a convergence of data and methods that allow us to approximate the shape, size, and functional attributes of biological organisms. This is not only limited to traditional model species: given the ability to culture and visualize a specific organism, we can capture both its structural and functional attributes. We present a quantitative model for the colonial diatom Bacillaria paradoxa, an organism that presents a number of unique attributes in terms of form and function. To acquire a digital model of B. paradoxa, we extract a series of quantitative parameters from microscopy videos from both primary and secondary sources. These data are then analyzed using a variety of techniques, including two rival deep learning approaches. We provide an overview of neural networks for non-specialists as well as present a series of analysis on Bacillaria phenotype data. The application of deep learning networks allow for two analytical purposes. Application of the DeepLabv3 pre-trained model extracts phenotypic parameters describing the shape of cells constituting Bacillaria colonies. Application of a semantic model trained on nematode embryogenesis data (OpenDevoCell) provides a means to analyze masked images of potential intracellular features. We also advance the analysis of Bacillaria colony movement dynamics by using templating techniques and biomechanical analysis to better understand the movement of individual cells relative to an entire colony. The broader implications of these results are presented, with an eye towards future applications to both hypothesis-driven studies and theoretical advancements in understanding the dynamic morphology of Bacillaria.
迈向数字硅藻:悖论硅藻动态形态的图像处理与深度学习分析
近年来,数据和方法的融合使我们能够近似生物有机体的形状、大小和功能属性。这不仅限于传统的模式物种:鉴于培养和可视化特定生物体的能力,我们可以捕获其结构和功能属性。我们提出了一个定量模型的殖民硅藻矛盾硅藻,一个有机体,提出了一些独特的属性,在形式和功能方面。为了获得悖论b的数字模型,我们从一次和二次来源的显微镜视频中提取了一系列定量参数。然后使用各种技术对这些数据进行分析,包括两种相互竞争的深度学习方法。我们为非专业人士提供了神经网络的概述,并提出了一系列对芽孢杆菌表型数据的分析。深度学习网络的应用有两个分析目的。应用DeepLabv3预训练模型提取描述构成芽孢杆菌菌落的细胞形状的表型参数。在线虫胚胎发生数据(OpenDevoCell)上训练的语义模型的应用提供了一种分析潜在细胞内特征的掩膜图像的方法。我们还通过使用模板技术和生物力学分析来推进芽孢杆菌菌落运动动力学分析,以更好地了解单个细胞相对于整个菌落的运动。提出了这些结果的更广泛的含义,着眼于未来应用于假设驱动的研究和理论进展,以了解芽孢杆菌的动态形态。
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