简化海洋生物毒素数据分析:使用R推进基于神经2a细胞的测定

IF 4.5 1区 生物学 Q1 MARINE & FRESHWATER BIOLOGY
Synne T. Frøstrup , Christian Ritz , Oliver Kappenstein , Astrid Spielmeyer , Christopher R. Loeffler
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引用次数: 0

摘要

海洋生物毒素作为海产品污染物,对公众健康构成重大威胁。在食用海产品前检测MBs,可以保护消费者,并进一步提供质量保证。体外基于神经2a (N2a)细胞的检测(CBA)是一种灵敏、高通量、经济高效的半定量方法,可作为动物实验的替代方法,用于卡卡毒素(CTXs)和短链毒素(PbTxs)等MBs。然而,N2a CBA尚未得到验证,限制了它的实用性。基于软件间不一致、数据传输错误和不当数据处理(计算错误)或处理(处理丢失、损坏或不一致的数据)等几个潜在来源的高数据可变性被认为是该方法面临的主要挑战。数据错误或不准确会破坏数据完整性,导致假阳性或假阴性结果,对健康造成严重影响。为了解决这些问题,开发了定制的R包n2a,作为n2a CBA的第一个标准化和免费的数据分析操作程序。它被设计用于同时剂量-反应分析测定数据和显示参数估计,计算有效浓度(EC50),并产生高质量的图形输出。与传统软件(每个数据集3分钟)相比,n2a包确保了更大数据集的快速剂量反应模型拟合(每个数据集2秒),提高了数据处理效率并减少了数据处理错误的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simplifying marine biotoxin data analysis: Advancing the Neuro-2a cell-based assay using R
Marine biotoxins (MBs) pose a significant public health risk as seafood contaminants. Testing seafood for MBs before consumption can protect consumers and further provide quality assurances. The in vitro Neuro-2a (N2a) cell-based assay (CBA), is a sensitive, high-throughput, and cost-effective method for the semi-quantification of MBs such as ciguatoxins (CTXs) and brevetoxins (PbTxs), serving as an alternative to animal-based testing. However, the N2a CBA has not been validated, limiting its utility. High data variability based on several potential sources including inter-software inconsistencies, data transfer errors, and improper data processing (calculation errors), or handling (dealing with missing, corrupted, or inconsistent data), have been cited as major challenges to the method. Data errors or inaccuracies can disrupt data integrity and lead to false positive or negative results, with serious health implications. To address these issues, a customized R package, n2a, was developed as the first standardized and free data analysis operating procedure for the N2a CBA. It is designed for simultaneous dose-response analysis of assay derived data and displays parameter estimates, calculates effective concentration (EC50), and generates high-quality graphical outputs. The n2a package ensures rapid dose-response model fitting for larger datasets (2 s per dataset) compared to traditional software (3 min per dataset), increasing data processing efficiency and reducing the potential for data handling errors.
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来源期刊
Harmful Algae
Harmful Algae 生物-海洋与淡水生物学
CiteScore
12.50
自引率
15.20%
发文量
122
审稿时长
7.5 months
期刊介绍: This journal provides a forum to promote knowledge of harmful microalgae and macroalgae, including cyanobacteria, as well as monitoring, management and control of these organisms.
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