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AutoRoot: open-source software employing a novel image analysis approach to support fully-automated plant phenotyping

机译:AutoRoot:采用新颖图像分析方法的开源软件,支持全自动植物表型鉴定

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BackgroundComputer-based phenotyping of plants has risen in importance in recent years. Whilst much software has been written to aid phenotyping using image analysis, to date the vast majority has been only semi-automatic. However, such interaction is not desirable in high throughput approaches. Here, we present a system designed to analyse plant images in a completely automated manner, allowing genuine high throughput measurement of root traits. To do this we introduce a new set of proxy traits. ResultsWe test the system on a new, automated image capture system, the Microphenotron, which is able to image many 1000s of roots/h. A simple experiment is presented, treating the plants with differing chemical conditions to produce different phenotypes. The automated imaging setup and the new software tool was used to measure proxy traits in each well. A correlation matrix was calculated across automated and manual measures, as a validation. Some particular proxy measures are very highly correlated with the manual measures (e.g. proxy length to manual length, r2?>?0.9). This suggests that while the automated measures are not directly equivalent to classic manual measures, they can be used to indicate phenotypic differences (hence the term, proxy ). In addition, the raw discriminative power of the new proxy traits was examined. Principal component analysis was calculated across all proxy measures over two phenotypically-different groups of plants. Many of the proxy traits can be used to separate the data in the two conditions. ConclusionThe new proxy traits proposed tend to correlate well with equivalent manual measures, where these exist. Additionally, the new measures display strong discriminative power. It is suggested that for particular phenotypic differences, different traits will be relevant, and not all will have meaningful manual equivalent measures. However, approaches such as PCA can be used to interrogate the resulting data to identify differences between datasets. Select images can then be carefully manually inspected if the nature of the precise differences is required. We suggest such flexible measurement approaches are necessary for fully automated, high throughput systems such as the Microphenotron.
机译:背景技术近年来,基于计算机的植物表型的重要性日益提高。尽管已经编写了许多软件来帮助使用图像分析进行表型分析,但迄今为止,绝大多数软件只是半自动的。但是,这种交互在高吞吐量方法中是不希望的。在这里,我们介绍了一种旨在以完全自动化的方式分析植物图像的系统,可以对根系性状进行真正的高通量测量。为此,我们引入了一组新的代理特征。结果我们在一个新的自动图像捕获系统Microphenotron上对该系统进行了测试,该系统能够对每小时数以千计的根进行成像。提出了一个简单的实验,用不同的化学条件处理植物以产生不同的表型。使用自动成像设置和新的软件工具来测量每个孔中的代理特征。验证了自动和手动测量之间的相关性矩阵。一些特定的代理度量与手动度量高度相关(例如,代理长度与手动长度之比,r 2 ?>?0.9)。这表明,尽管自动测量并不直接等同于经典的手动测量,但它们可用于指示表型差异(因此称为代理)。此外,还研究了新代理特征的原始判别力。在两个表型不同的植物组中,通过所有代理度量计算主成分分析。许多代理特征可用于在两种情况下分隔数据。结论提出的新代理特质往往与存在的同等人工测量值具有良好的相关性。此外,新措施具有很强的区分力。建议对于特定的表型差异,不同的特征将是相关的,并且并非所有特征都具有有意义的人工等效测量。但是,可以使用诸如PCA之类的方法来查询结果数据以识别数据集之间的差异。如果需要精确区别的性质,则可以仔细地手动检查选择的图像。我们建议这种灵活的测量方法对于诸如Microphenotron的全自动,高通量系统是必需的。

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