A novel ensemble approach with deep transfer learning for accurate identification of foodborne bacteria from hyperspectral microscopy

被引:0
作者
ul Ain, Qurrat [1 ]
Asif, Sohaib [2 ]
机构
[1] Cent South Univ, Xiangya Sch Publ Hlth, Changsha, Peoples R China
[2] Cent South Univ, Sch Comp Sci & Engn, Changsha, Peoples R China
关键词
Ensemble learning; Foodborne bacteria classification; Hyperspectral microscope imaging; Cell classification; Deep learning; SURVEILLANCE; COLONIES;
D O I
10.1016/j.compbiolchem.2024.108238
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
The detection of foodborne bacteria is critical in ensuring both consumer safety and food safety. If these pathogens are not properly identified, it can lead to dangerous cross-contamination. One of the most common methods for classifying bacteria is through the examination of Hyperspectral microscope imaging (HMI). A widely used technique for measuring microbial growth is microscopic cell counting. HMI is a laborious and expensive process, producing voluminous data and needing specialized equipment, which might not be widely available. Machine learning (ML) methods are now frequently utilized to automatically interpret data from hyperspectral microscopy. The objective of our study is to devise a technique that employs deep transfer learning to address the challenge of limited data and utilizes four base classifiers - InceptionResNetV2, MobileNet, ResNet101V2, and Xception - to create an ensemble-based classification model for distinguishing live and dead bacterial cells of six pathogenic strains. In order to determine the optimal weights for the base classifiers, a Powell's optimization method was utilized in conjunction with a weighted average ensemble (WAVE) technique. We carried out an extensive experimental study to verify the efficiency of our proposed ensemble model on live and dead cell images of six different foodborne bacteria. In order to gain a better understanding of the regions, we performed a Grad-CAM analysis to explain the predictions made by our model. Through a series of experiments, our proposed framework has proven its capacity to effectively and precisely detect numerous bacterial pathogens. Specifically, it achieved a perfect identification rate of 100% for Escherichia coli (EC), Listeria innocua (LI), and Salmonella Enteritidis (SE), while achieving rates of 96.30% for Salmonella Typhimurium (ST), 87.13% for Staphylococcus aureus (SA), and 94.12% for Salmonella Heidelberg (SH). As a result, it can be considered as an effective tool for the identification of foodborne pathogens, due to its high level of efficiency.
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页数:14
相关论文
共 41 条
  • [11] Deep Residual Learning for Image Recognition
    He, Kaiming
    Zhang, Xiangyu
    Ren, Shaoqing
    Sun, Jian
    [J]. 2016 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2016, : 770 - 778
  • [12] Densely Connected Convolutional Networks
    Huang, Gao
    Liu, Zhuang
    van der Maaten, Laurens
    Weinberger, Kilian Q.
    [J]. 30TH IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR 2017), 2017, : 2261 - 2269
  • [13] COMPARISON OF CULTURAL METHODS USED WITH MICROCOLONY AND DIRECT FLUORESCENT-ANTIBODY TECHNIQUES TO DETECT SALMONELLAE
    INSALATA, NF
    DUNLAP, WG
    MAHNKE, CW
    [J]. JOURNAL OF MILK AND FOOD TECHNOLOGY, 1975, 38 (04): : 201 - 203
  • [14] Generalization Error in Deep Learning
    Jakubovitz, Daniel
    Giryes, Raja
    Rodrigues, Miguel R. D.
    [J]. COMPRESSED SENSING AND ITS APPLICATIONS, 2019, : 153 - 193
  • [15] Machine learning and deep learning
    Janiesch, Christian
    Zschech, Patrick
    Heinrich, Kai
    [J]. ELECTRONIC MARKETS, 2021, 31 (03) : 685 - 695
  • [16] Differentiation of foodborne bacteria using NIR hyperspectral imaging and multivariate data analysis
    Kammies, Terri-Lee
    Manley, Marena
    Gouws, Pieter A.
    Williams, Paul J.
    [J]. APPLIED MICROBIOLOGY AND BIOTECHNOLOGY, 2016, 100 (21) : 9305 - 9320
  • [17] Single-cell classification of foodborne pathogens using hyperspectral microscope imaging coupled with deep learning frameworks
    Kang, Rui
    Park, Bosoon
    Eady, Matthew
    Ouyang, Qin
    Chen, Kunjie
    [J]. SENSORS AND ACTUATORS B-CHEMICAL, 2020, 309
  • [18] Ketkar N., 2017, Deep learning with python: a hands-on introduction, P97, DOI DOI 10.1007/978-1-4842-2766-4_7
  • [19] Kingma D.P., 2014, arXiv, DOI [DOI 10.48550/ARXIV.1412.6980, 10.48550/arXiv.1412.6980]
  • [20] Advance on Application of Hyperspectral Imaging to Nondestructive Detection of Agricultural Products External Quality
    Li Jiang-bo
    Rao Xiu-qin
    Ying Yi-bin
    [J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2011, 31 (08) : 2021 - 2026