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Automated cellular annotation for high-resolution images of adult Caenorhabditis elegans

机译:成年秀丽隐杆线虫的高分辨率图像的自动细胞注释

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摘要

>Motivation: Advances in high-resolution microscopy have recently made possible the analysis of gene expression at the level of individual cells. The fixed lineage of cells in the adult worm Caenorhabditis elegans makes this organism an ideal model for studying complex biological processes like development and aging. However, annotating individual cells in images of adult C.elegans typically requires expertise and significant manual effort. Automation of this task is therefore critical to enabling high-resolution studies of a large number of genes.>Results: In this article, we describe an automated method for annotating a subset of 154 cells (including various muscle, intestinal and hypodermal cells) in high-resolution images of adult C.elegans. We formulate the task of labeling cells within an image as a combinatorial optimization problem, where the goal is to minimize a scoring function that compares cells in a test input image with cells from a training atlas of manually annotated worms according to various spatial and morphological characteristics. We propose an approach for solving this problem based on reduction to minimum-cost maximum-flow and apply a cross-entropy–based learning algorithm to tune the weights of our scoring function. We achieve 84% median accuracy across a set of 154 cell labels in this highly variable system. These results demonstrate the feasibility of the automatic annotation of microscopy-based images in adult C.elegans.>Contact:
机译:>动机:高分辨率显微镜技术的进步最近使得在单个细胞水平上分析基因表达成为可能。成虫线虫Caenorhabditis elegans中固定的细胞谱系使其成为研究复杂的生物过程(如发育和衰老)的理想模型。但是,注释成年秀丽线虫图像中的单个细胞通常需要专业知识和大量的人工。因此,这项任务的自动化对于实现对大量基因的高分辨率研究至关重要。>结果:在本文中,我们描述了一种用于注释154个细胞(包括各种肌肉,肠线虫和皮下细胞)在成人线虫的高分辨率图像中。我们将标记图像中的细胞的任务制定为组合优化问题,其目标是最小化评分功能,该评分功能根据各种空间和形态特征,将测试输入图像中的细胞与来自人工注释蠕虫训练图集的细胞进行比较。我们提出了一种基于减少最小成本最大流量的方法来解决此问题的方法,并应用基于交叉熵的学习算法来调整评分函数的权重。在这个高度可变的系统中,我们在一组154个细胞标签上实现了84%的中值准确性。这些结果证明了在成人线虫中基于显微图像的自动注释的可行性。>联系人:

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