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激光散斑成像技术在预测苹果缺氧胁迫方面的新应用。

A novel application of laser speckle imaging technique for prediction of hypoxic stress of apples.

作者信息

Pieczywek Piotr Mariusz, Nosalewicz Artur, Zdunek Artur

机构信息

Institute of Agrophysics, Polish Academy of Sciences, Doświadczalna 4, 20-290, Lublin, Poland.

出版信息

Plant Methods. 2024 Sep 28;20(1):147. doi: 10.1186/s13007-024-01271-7.

Abstract

BACKGROUND

Fruit storage methods such as dynamic controlled atmosphere (DCA) technology enable adjusting the level of oxygen in the storage room, according to the physiological state of the product to slow down the ripening process. However, the successful application of DCA requires precise and reliable sensors of the oxidative stress of the fruit. In this study, respiration rate and chlorophyll fluorescence (CF) signals were evaluated after introducing a novel predictors of apples' hypoxic stress based on laser speckle imaging technique (LSI).

RESULTS

Both chlorophyll fluorescence and LSI signals were equally good for stress detection in principle. However, in an application with automatic detection based on machine learning models, the LSI signal proved to be superior, due to its stability and measurement repeatability. Moreover, the shortcomings of the CF signal appear to be its inability to indicate oxygen stress in tissues with low chlorophyll content but this does not apply to LSI. A comparison of different LSI signal processing methods showed that method based on the dynamics of changes in image content was better indicators of stress than methods based on measurements of changes in pixel brightness (inertia moment or laser speckle contrast analysis). Data obtained using the near-infrared laser provided better prediction capabilities, compared to the laser with red light.

CONCLUSIONS

The study showed that the signal from the scattered laser light phenomenon is a good predictor for the oxidative stress of apples. Results showed that effective prediction using LSI was possible and did not require additional signals. The proposed method has great potential as an alternative indicator of fruit oxidative stress, which can be applied in modern storage systems with a dynamically controlled atmosphere.

摘要

背景

动态控制气氛(DCA)技术等水果储存方法能够根据产品的生理状态调节储存室中的氧气水平,以减缓成熟过程。然而,DCA的成功应用需要精确可靠的水果氧化应激传感器。在本研究中,基于激光散斑成像技术(LSI)引入苹果缺氧应激的新型预测指标后,对呼吸速率和叶绿素荧光(CF)信号进行了评估。

结果

原则上,叶绿素荧光和LSI信号在应激检测方面同样出色。然而,在基于机器学习模型的自动检测应用中,LSI信号因其稳定性和测量重复性而被证明更具优势。此外,CF信号的缺点似乎是无法在叶绿素含量低的组织中指示氧气应激,但这不适用于LSI。不同LSI信号处理方法的比较表明,基于图像内容变化动态的方法比基于像素亮度变化测量(惯性矩或激光散斑对比度分析)的方法更能指示应激。与红光激光相比,使用近红外激光获得的数据具有更好的预测能力。

结论

该研究表明,散射激光现象产生的信号是苹果氧化应激的良好预测指标。结果表明,使用LSI进行有效预测是可行的,且不需要额外的信号。所提出的方法作为水果氧化应激的替代指标具有巨大潜力,可应用于具有动态控制气氛的现代储存系统。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/af60/11437772/8b4e2feb371c/13007_2024_1271_Fig1_HTML.jpg

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