基于纳米生物传感器和神经网络的作物早期病原预测特征提取与分类

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Mohammad Khalid Imam Rahmani , Hayder M.A. Ghanimi , Syeda Fizzah Jilani , Muhammad Aslam , Meshal Alharbi , Roobaea Alroobaea , Sudhakar Sengan
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引用次数: 0

摘要

全球最普遍的由微生物引起的降低农业产量的问题是病毒和细菌感染。由于目前的生活状况,识别病原体目前相当具有挑战性。生物传感器已成为监测微生物和病毒大分子的标准。通过追踪感染释放的纳米颗粒,可以改善疾病诊断。由于传感器的数据包括不同的学习模式,因此使用机器学习(ML)方法对其进行分析和解释。本文旨在研究是否可以使用基于卷积神经网络(CNN)的特征提取(FE)和特征分类(FC)的近红外(nIR)和红、绿、蓝(RGB)成像来定义和检测植物疾病(PD)。使用自制的单壁碳纳米管(SWCNTs),用与Hemi(HeApt+DNA+SWCNT)传感装置结合的脱氧核糖核酸(DNA)适体来分析茶树叶样品的近红外(nIR)和RGB图像。使用基于Wasserstein距离(WD)的特征提取模型(FEM)从nIR+RGB中提取三个标签,然后将所有这些标签加载到所提出的CNN模型中,以确保精确分类。将所提出的Wasserstein距离卷积神经网络(WD2CNN)模型与同一数据集上的不同CNN架构进行比较,获得了98.72%的最高精度。它也是计算效率最高的,每个历元的平均时间最短。该模型在生物传感器图像分类方面表现出较高的性能和效率,有助于作物疾病的早期检测和预防。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early Pathogen Prediction in Crops Using Nano Biosensors and Neural Network-Based Feature Extraction and Classification

The most prevalent microbe-caused issues that reduce agricultural output globally are viral and bacterial infections. It is currently quite challenging to identify pathogens due to the current living situation. Biosensors have become the standard for monitoring microbial and viral macromolecules. Disease diagnosis is improved by following the nanoparticles released by infections. Since the sensors' data includes different learning patterns, Machine Learning (ML) methods are used to analyze and interpret it. This research paper aimed to study whether Near-infrared (nIR) and Red, Green, and Blue (RGB) imaging might be used to define and detect Plant Disease (PD) using Convolutional Neural Network (CNN)-based Feature Extraction (FE) and Feature Classification (FC). A home-built Single-Walled Carbon NanoTube (SWCNTs) implemented with a Deoxyribonucleic Acid (DNA) aptamer that binds to a Hemi (HeApt + DNA + SWCNT) sensing device was used to analyze near-infrared (nIR) and RGB images of tea plant leaf samples. Three labels are extracted from the nIR + RGB using a Wasserstein Distance (WD)-based Feature Extraction Model (FEM), and then all those labels are loaded into the proposed CNN model to ensure precise classification. The proposed Wasserstein Distance-to-Convolutional Neural Network (WD2CNN) model was compared to different CNN architectures on the same dataset, achieving the highest accuracy of 98.72%. It is also the most computationally efficient, with the shortest average time per epoch. The model demonstrates high performance and efficiency in classifying biosensor images, which could aid in the early detection and prevention of Crop Diseases (CD).

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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