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Automated morphometry toolbox for analysis of microscopic model organisms using simple bright-field imaging

机译:自动化形态学工具箱,用于使用简单明场成像分析微观模型生物

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Model organisms with compact genomes, such as yeast andCaenorhabditiselegans, are particularly useful for understanding organism growth and life/cell cycle. Organism morphology is a critical parameter to measure in monitoring growth and stage in the life cycle. However, manual measurements are both time consuming and potentially inaccurate, due to variations among users and user fatigue. In this paper we present an automated method to segment bright-field images of fission yeast, budding yeast, andC. elegansroundworm, reporting a wide range of morphometric parameters, such as length, width, eccentricity, and others. Comparisons between automated and manual methods on fission yeast reveal good correlation in size values, with the 95% confidence interval lying between ?0.8 and +0.6 μm in cell length, similar to the 95% confidence interval between two manual users. In a head-to-head comparison with other published algorithms on multiple datasets, our method achieves more accurate and robust results with substantially less computation time. We demonstrate the method's versatility on several model organisms, and demonstrate its utility through automated analysis of changes in fission yeast growth due to single kinase deletions. The algorithm has additionally been implemented as a stand-alone executable program to aid dissemination to other researchers.
机译:具有紧凑基因组的模型生物(例如酵母和秀丽隐杆线虫)对于理解生物生长和生命/细胞周期特别有用。生物形态是监测生命周期中生长和阶段的关键参数。但是,由于用户之间的差异和用户疲劳,手动测量既费时又可能不准确。在本文中,我们提出了一种自动方法,用于分割裂变酵母,出芽酵母和C的明场图像。线虫蠕虫,报告了各种各样的形态参数,例如长度,宽度,偏心率等。在裂变酵母上自动方法和手动方法之间的比较显示,大小值具有良好的相关性,细胞长度的95%置信区间在0.8到+0.6μm之间,类似于两个手动用户之间的95%置信区间。与多个数据集上的其他已发布算法进行正面对比,我们的方法以更少的计算时间获得了更准确,更可靠的结果。我们展示了该方法在几种模式生物上的多功能性,并通过对由于单个激酶缺失而引起的裂变酵母生长变化的自动分析来证明其实用性。该算法还被实现为独立的可执行程序,以帮助向其他研究人员传播。

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