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首页> 外文期刊>Ecology and Evolution >BEMOVI, software for extracting behavior and morphology from videos, illustrated with analyses of microbes
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BEMOVI, software for extracting behavior and morphology from videos, illustrated with analyses of microbes

机译:BEMOVI,用于从视频中提取行为和形态的软件,通过对微生物的分析进行说明

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摘要

AbstractMicrobes are critical components of ecosystems and provide vital services (e.g., photosynthesis, decomposition, nutrient recycling). From the diverse roles microbes play in natural ecosystems, high levels of functional diversity result. Quantifying this diversity is challenging, because it is weakly associated with morphological differentiation. In addition, the small size of microbes hinders morphological and behavioral measurements at the individual level, as well as interactions between individuals. Advances in microbial community genetics and genomics, flow cytometry and digital analysis of still images are promising approaches. They miss out, however, on a very important aspect of populations and communities: the behavior of individuals. Video analysis complements these methods by providing in addition to abundance and trait measurements, detailed behavioral information, capturing dynamic processes such as movement, and hence has the potential to describe the interactions between individuals. We introduce BEMOVI, a package using the R and ImageJ software, to extract abundance, morphology, and movement data for tens to thousands of individuals in a video. Through a set of functions BEMOVI identifies individuals present in a video, reconstructs their movement trajectories through space and time, and merges this information into a single database. BEMOVI is a modular set of functions, which can be customized to allow for peculiarities of the videos to be analyzed, in terms of organisms features (e.g., morphology or movement) and how they can be distinguished from the background. We illustrate the validity and accuracy of the method with an example on experimental multispecies communities of aquatic protists. We show high correspondence between manual and automatic counts and illustrate how simultaneous time series of abundance, morphology, and behavior are obtained from BEMOVI. We further demonstrate how the trait data can be used with machine learning to automatically classify individuals into species and that information on movement behavior improves the predictive ability.
机译:摘要微生物是生态系统的重要组成部分,并提供重要的服务(例如光合作用,分解,养分循环利用)。由于微生物在自然生态系统中所扮演的不同角色,因此导致了高水平的功能多样性。量化这种多样性具有挑战性,因为它与形态分化之间的联系不紧密。另外,微生物的小尺寸阻碍了个体水平上的形态和行为测量以及个体之间的相互作用。微生物群落遗传学和基因组学,流式细胞术和静态图像数字分析方面的进展是有前途的方法。但是,他们错过了人口和社区的一个非常重要的方面:个人的行为。视频分析除了提供丰度和特征量度之外,还提供详细的行为信息,捕获动态过程(例如运动),从而补充了这些方法,因此具有描述个人之间相互作用的潜力。我们介绍了BEMOVI,这是一个使用R和ImageJ软件的软件包,可以为视频中的数十万到数千个人提取丰富度,形态和运动数据。通过一系列功能,BEMOVI可以识别视频中存在的个人,通过空间和时间重建他们的运动轨迹,并将这些信息合并到一个数据库中。 BEMOVI是一组模块化功能,可以对其进行自定义,以根据生物特征(例如形态或运动)以及如何将其与背景区分开来分析视频的特殊性。我们以水生原生生物的实验多物种群落为例,说明了该方法的有效性和准确性。我们展示了手动计数和自动计数之间的高度对应关系,并说明了如何从BEMOVI获得同时的丰度,形态和行为时间序列。我们进一步演示了特征数据如何与机器学习一起使用,以将个体自动分类为物种,并且有关运动行为的信息提高了预测能力。

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