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利用高通量植物表型数据分析进行数字生物量积累

Digital Biomass Accumulation Using High-Throughput Plant Phenotype Data Analysis.

作者信息

Rahaman Md Matiur, Ahsan Md Asif, Gillani Zeeshan, Chen Ming

机构信息

.

出版信息

J Integr Bioinform. 2017 Sep 1;14(3):20170028. doi: 10.1515/jib-2017-0028.

Abstract

Biomass is an important phenotypic trait in functional ecology and growth analysis. The typical methods for measuring biomass are destructive, and they require numerous individuals to be cultivated for repeated measurements. With the advent of image-based high-throughput plant phenotyping facilities, non-destructive biomass measuring methods have attempted to overcome this problem. Thus, the estimation of plant biomass of individual plants from their digital images is becoming more important. In this paper, we propose an approach to biomass estimation based on image derived phenotypic traits. Several image-based biomass studies state that the estimation of plant biomass is only a linear function of the projected plant area in images. However, we modeled the plant volume as a function of plant area, plant compactness, and plant age to generalize the linear biomass model. The obtained results confirm the proposed model and can explain most of the observed variance during image-derived biomass estimation. Moreover, a small difference was observed between actual and estimated digital biomass, which indicates that our proposed approach can be used to estimate digital biomass accurately.

摘要

生物量是功能生态学和生长分析中的一个重要表型性状。测量生物量的传统方法具有破坏性,需要培育大量个体进行重复测量。随着基于图像的高通量植物表型分析设施的出现,非破坏性生物量测量方法试图克服这一问题。因此,从植物数字图像估计单株植物的生物量变得越来越重要。在本文中,我们提出了一种基于图像衍生表型性状的生物量估计方法。一些基于图像的生物量研究表明,植物生物量的估计只是图像中植物投影面积的线性函数。然而,我们将植物体积建模为植物面积、植物紧密度和植物年龄的函数,以推广线性生物量模型。所得结果证实了所提出的模型,并能解释图像衍生生物量估计过程中观察到的大部分方差。此外,实际数字生物量与估计数字生物量之间观察到的差异较小,这表明我们提出的方法可用于准确估计数字生物量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/81a7/6042821/e6309f580a95/jib-14-20170028-g001.jpg

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