NIRSpredict:利用近红外光谱预测植物性状的平台。

IF 4.3 2区 生物学 Q1 PLANT SCIENCES
Axel Vaillant, Grégory Beurier, Denis Cornet, Lauriane Rouan, Denis Vile, Cyrille Violle, François Vasseur
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引用次数: 0

摘要

近红外光谱(NIRS)已成为研究植物表型变异性的常用工具。我们开发了 Shiny NIRSpredict 应用程序,以深度学习为基础,根据近红外光谱值预测拟南芥的 81 个表型性状,包括经典功能性状以及大量常用化合物。可通过以下网址免费访问:https://shiny.cefe.cnrs.fr/NirsPredict/ 。NIRSpredict 有三个主要功能。首先,它允许用户提交光谱值,以便从托管的大连农杆菌数据库建立的模型中获得植物性状的预测结果。其次,用户可以访问用于模型校准的性状数据库。数据可根据用户的选择进行过滤和提取,并在全局范围内可视化。第三,用户可以提交自己的数据集来扩展数据库,并参与应用程序开发。NIRSpredict 为性状预测提供了一种易用、高效的方法,并提供了一个获取大连农杆菌性状值的大型数据集的途径。除了涵盖许多功能性状外,它还能预测大量常用的化学物质。作为描述跨地域植物种群特征的可靠方法,NIRSpredict 可促进表型组学在功能生态学和进化生态学中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NIRSpredict: a platform for predicting plant traits from near infra-red spectroscopy.

Near-infrared spectroscopy (NIRS) has become a popular tool for investigating phenotypic variability in plants. We developed the Shiny NIRSpredict application to get predictions of 81 Arabidopsis thaliana phenotypic traits, including classical functional traits as well as a large variety of commonly measured chemical compounds, based from near-infrared spectroscopy values based on deep learning. It is freely accessible at the following URL: https://shiny.cefe.cnrs.fr/NirsPredict/ . NIRSpredict has three main functionalities. First, it allows users to submit their spectrum values to get the predictions of plant traits from models built with the hosted A. thaliana database. Second, users have access to the database of traits used for model calibration. Data can be filtered and extracted on user's choice and visualized in a global context. Third, a user can submit his own dataset to extend the database and get part of the application development. NIRSpredict provides an easy-to-use and efficient method for trait prediction and an access to a large dataset of A. thaliana trait values. In addition to covering many of functional traits it also allows to predict a large variety of commonly measured chemical compounds. As a reliable way of characterizing plant populations across geographical ranges, NIRSpredict can facilitate the adoption of phenomics in functional and evolutionary ecology.

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来源期刊
BMC Plant Biology
BMC Plant Biology 生物-植物科学
CiteScore
8.40
自引率
3.80%
发文量
539
审稿时长
3.8 months
期刊介绍: BMC Plant Biology is an open access, peer-reviewed journal that considers articles on all aspects of plant biology, including molecular, cellular, tissue, organ and whole organism research.
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