The Arabidopsis leaf quantitative atlas: a cellular and subcellular mapping through unified data integration.

Quantitative plant biology Pub Date : 2024-02-29 eCollection Date: 2024-01-01 DOI:10.1017/qpb.2024.1
Dimitri Tolleter, Edward N Smith, Clémence Dupont-Thibert, Clarisse Uwizeye, Denis Vile, Pauline Gloaguen, Denis Falconet, Giovanni Finazzi, Yves Vandenbrouck, Gilles Curien
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引用次数: 0

Abstract

Quantitative analyses and models are required to connect a plant's cellular organisation with its metabolism. However, quantitative data are often scattered over multiple studies, and finding such data and converting them into useful information is time-consuming. Consequently, there is a need to centralise the available data and to highlight the remaining knowledge gaps. Here, we present a step-by-step approach to manually extract quantitative data from various information sources, and to unify the data format. First, data from Arabidopsis leaf were collated, checked for consistency and correctness and curated by cross-checking sources. Second, quantitative data were combined by applying calculation rules. They were then integrated into a unique comprehensive, referenced, modifiable and reusable data compendium representing an Arabidopsis reference leaf. This atlas contains the metrics of the 15 cell types found in leaves at the cellular and subcellular levels.

拟南芥叶片定量图谱:通过统一数据整合绘制细胞和亚细胞图谱。
要将植物的细胞组织与新陈代谢联系起来,需要进行定量分析和建立模型。然而,定量数据往往分散在多项研究中,寻找这些数据并将其转化为有用信息非常耗时。因此,有必要对现有数据进行集中管理,并突出余下的知识空白。在此,我们介绍了一种逐步从各种信息源中手动提取定量数据并统一数据格式的方法。首先,我们整理了拟南芥叶片的数据,检查了数据的一致性和正确性,并通过交叉核对来源对数据进行了整理。其次,运用计算规则合并定量数据。然后,将这些数据整合到一个代表拟南芥参考叶片的独特、全面、可参考、可修改和可重复使用的数据汇编中。该图集包含叶片中发现的 15 种细胞类型在细胞和亚细胞水平上的指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.50
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