Tradescantia response to air and soil pollution, stamen hair cells dataset and ANN color classification

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Frontiers in Big Data Pub Date : 2024-05-15 DOI:10.3389/fdata.2024.1384240
Leatrice Talita Rodrigues, Barbara Sanches Antunes Goeldner, Emílio Graciliano Ferreira Mercuri, S. M. Noe
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Abstract

Tradescantia plant is a complex system that is sensible to environmental factors such as water supply, pH, temperature, light, radiation, impurities, and nutrient availability. It can be used as a biomonitor for environmental changes; however, the bioassays are time-consuming and have a strong human interference factor that might change the result depending on who is performing the analysis. We have developed computer vision models to study color variations from Tradescantia clone 4430 plant stamen hair cells, which can be stressed due to air pollution and soil contamination. The study introduces a novel dataset, Trad-204, comprising single-cell images from Tradescantia clone 4430, captured during the Tradescantia stamen-hair mutation bioassay (Trad-SHM). The dataset contain images from two experiments, one focusing on air pollution by particulate matter and another based on soil contaminated by diesel oil. Both experiments were carried out in Curitiba, Brazil, between 2020 and 2023. The images represent single cells with different shapes, sizes, and colors, reflecting the plant's responses to environmental stressors. An automatic classification task was developed to distinguishing between blue and pink cells, and the study explores both a baseline model and three artificial neural network (ANN) architectures, namely, TinyVGG, VGG-16, and ResNet34. Tradescantia revealed sensibility to both air particulate matter concentration and diesel oil in soil. The results indicate that Residual Network architecture outperforms the other models in terms of accuracy on both training and testing sets. The dataset and findings contribute to the understanding of plant cell responses to environmental stress and provide valuable resources for further research in automated image analysis of plant cells. Discussion highlights the impact of turgor pressure on cell shape and the potential implications for plant physiology. The comparison between ANN architectures aligns with previous research, emphasizing the superior performance of ResNet models in image classification tasks. Artificial intelligence identification of pink cells improves the counting accuracy, thus avoiding human errors due to different color perceptions, fatigue, or inattention, in addition to facilitating and speeding up the analysis process. Overall, the study offers insights into plant cell dynamics and provides a foundation for future investigations like cells morphology change. This research corroborates that biomonitoring should be considered as an important tool for political actions, being a relevant issue in risk assessment and the development of new public policies relating to the environment.
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蔓生植物对空气和土壤污染的反应、雄蕊毛细胞数据集和 ANN 颜色分类
苔藓植物是一个复杂的系统,对供水、pH 值、温度、光照、辐射、杂质和营养供应等环境因素具有敏感性。它可用作环境变化的生物监测器;然而,生物测定耗时且人为干扰因素较强,可能会因分析人员的不同而改变结果。我们开发了计算机视觉模型,以研究因空气污染和土壤污染而受压的Tradescantia克隆4430植物雄蕊毛细胞的颜色变化。这项研究引入了一个新的数据集 Trad-204,该数据集包含在翠菊雄蕊毛突变生物测定(Trad-SHM)过程中捕获的翠菊克隆 4430 单细胞图像。该数据集包含两个实验的图像,一个侧重于微粒物质造成的空气污染,另一个基于柴油污染的土壤。这两项实验于 2020 年至 2023 年在巴西库里提巴进行。这些图像代表了不同形状、大小和颜色的单细胞,反映了植物对环境压力的反应。研究开发了一项自动分类任务,以区分蓝色和粉色细胞,并探索了基线模型和三种人工神经网络(ANN)架构,即 TinyVGG、VGG-16 和 ResNet34。研究显示,Tradescantia 对空气中的颗粒物浓度和土壤中的柴油都很敏感。结果表明,残差网络架构在训练集和测试集上的准确性都优于其他模型。该数据集和研究结果有助于理解植物细胞对环境压力的反应,并为进一步研究植物细胞的自动图像分析提供了宝贵的资源。讨论强调了水分压力对细胞形状的影响以及对植物生理学的潜在影响。ANN架构之间的比较与之前的研究一致,强调了ResNet模型在图像分类任务中的优越性能。人工智能识别粉红色细胞提高了计数的准确性,从而避免了由于对颜色的不同感知、疲劳或注意力不集中而造成的人为错误,此外还促进并加快了分析过程。总之,这项研究有助于深入了解植物细胞的动态变化,并为今后开展细胞形态变化等研究奠定了基础。这项研究证实,生物监测应被视为政治行动的重要工具,是风险评估和制定与环境有关的新公共政策的相关问题。
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来源期刊
CiteScore
5.20
自引率
3.20%
发文量
122
审稿时长
13 weeks
期刊最新文献
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