A Detection Method for Crop Fungal Spores Based on Microfluidic Separation Enrichment and AC Impedance Characteristics.

Xiaodong Zhang, Boxue Guo, Yafei Wang, Lian Hu, Ning Yang, Hanping Mao
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引用次数: 1

Abstract

The timely monitoring of airborne crop fungal spores is important for maintaining food security. In this study, a method based on microfluidic separation and enrichment and AC impedance characteristics was proposed to detect spores of fungal pathogens that cause diseases on crops. Firstly, a microfluidic chip with tertiary structure was designed for the direct separation and enrichment of Ustilaginoidea virens spores, Magnaporthe grisea spores, and Aspergillus niger spores from the air. Then, the impedance characteristics of fungal spores were measured by impedance analyzer in the enrichment area of a microfluidic chip. The impedance characteristics of fungal spores were analyzed, and four impedance characteristics were extracted: absolute value of impedance (abs), real part of impedance (real), imaginary part of impedance (imag), and impedance phase (phase). Finally, based on the impedance characteristics of extracted fungal spores, K-proximity (KNN), random forest (RF), and support vector machine (SVM) classification models were established to classify the three fungal spores. The results showed that the microfluidic chip designed in this study could well collect the spores of three fungal diseases, and the collection rate was up to 97. The average accuracy of KNN model, RF model, and SVM model for the detection of three disease spores was 93.33, 96.44 and 97.78, respectively. The F1-Score of KNN model, RF model, and SVM model was 90, 94.65, and 96.18, respectively. The accuracy, precision, recall, and F1-Score of the SVM model were all the highest, at 97.78, 96.67, 96.69, and 96.18, respectively. Therefore, the detection method of crop fungal spores based on microfluidic separation, enrichment, and impedance characteristics proposed in this study can be used for the detection of airborne crop fungal spores, providing a basis for the subsequent detection of crop fungal spores.

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基于微流控分离富集和交流阻抗特性的农作物真菌孢子检测方法
及时监测空气传播的作物真菌孢子对维持粮食安全具有重要意义。本研究提出了一种基于微流控分离富集和交流阻抗特性的农作物病原菌孢子检测方法。首先,设计三级结构的微流控芯片,从空气中直接分离富集Ustilaginoidea virens孢子、Magnaporthe grisea孢子和Aspergillus niger孢子。然后,在微流控芯片富集区用阻抗分析仪测量了真菌孢子的阻抗特性。分析了真菌孢子的阻抗特性,提取了阻抗绝对值(abs)、阻抗实部(real)、阻抗虚部(imag)和阻抗相位(phase) 4种阻抗特性。最后,根据提取真菌孢子的阻抗特性,建立k -接近(KNN)、随机森林(RF)和支持向量机(SVM)分类模型,对3种真菌孢子进行分类。结果表明,本研究设计的微流控芯片能够很好地采集3种真菌病害的孢子,采集率高达97%。KNN模型、RF模型和SVM模型对3种病原菌孢子检测的平均准确率分别为93.33、96.44和97.78。KNN模型、RF模型和SVM模型的F1-Score分别为90、94.65和96.18。SVM模型的准确率、精密度、召回率和F1-Score均最高,分别为97.78、96.67、96.69和96.18。因此,本研究提出的基于微流控分离富集和阻抗特性的作物真菌孢子检测方法可用于空气中作物真菌孢子的检测,为后续作物真菌孢子的检测提供依据。
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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