MSDeepAMR: antimicrobial resistance prediction based on deep neural networks and transfer learning

被引:5
|
作者
Lopez-Cortes, Xaviera A. [1 ,2 ]
Manriquez-Troncoso, Jose M. [1 ]
Hernandez-Garcia, Ruber [1 ,3 ]
Peralta, Daniel [4 ]
机构
[1] Univ Catolica Maule, Dept Comp Sci & Ind, Talca, Chile
[2] Univ Catolica Maule, Ctr Innovac Ingn Aplicada CIIA, Talca, Chile
[3] Univ Catolica Maule, Lab Technol Res Pattern Recognit LITRP, Talca, Chile
[4] Univ Ghent, Dept Informat Technol, IDLab, Imec, Ghent, Belgium
关键词
MALDI-TOF; deep learning; antibiotic resistance; Escherichia coli; Klebsiella pneumoniae; Staphylococcus aureus; transfer learning; DESORPTION IONIZATION-TIME; TOF MASS-SPECTROMETRY; STAPHYLOCOCCUS-AUREUS; CLINICAL MICROBIOLOGY; RAPID DETECTION; IDENTIFICATION; ENTEROBACTERIACEAE; BACTERIA; SPECTRA;
D O I
10.3389/fmicb.2024.1361795
中图分类号
Q93 [微生物学];
学科分类号
071005 ; 100705 ;
摘要
Introduction Antimicrobial resistance (AMR) is a global health problem that requires early and effective treatments to prevent the indiscriminate use of antimicrobial drugs and the outcome of infections. Mass Spectrometry (MS), and more particularly MALDI-TOF, have been widely adopted by routine clinical microbiology laboratories to identify bacterial species and detect AMR. The analysis of AMR with deep learning is still recent, and most models depend on filters and preprocessing techniques manually applied on spectra. Methods This study propose a deep neural network, MSDeepAMR, to learn from raw mass spectra to predict AMR. MSDeepAMR model was implemented for Escherichia coli, Klebsiella pneumoniae, and Staphylococcus aureus under different antibiotic resistance profiles. Additionally, a transfer learning test was performed to study the benefits of adapting the previously trained models to external data. Results MSDeepAMR models showed a good classification performance to detect antibiotic resistance. The AUROC of the model was above 0.83 in most cases studied, improving the results of previous investigations by over 10%. The adapted models improved the AUROC by up to 20% when compared to a model trained only with external data. Discussion This study demonstrate the potential of the MSDeepAMR model to predict antibiotic resistance and their use on external MS data. This allow the extrapolation of the MSDeepAMR model to de used in different laboratories that need to study AMR and do not have the capacity for an extensive sample collection.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] Deep representation-based transfer learning for deep neural networks
    Yang, Tao
    Yu, Xia
    Ma, Ning
    Zhang, Yifu
    Li, Hongru
    KNOWLEDGE-BASED SYSTEMS, 2022, 253
  • [2] Passenger Flow Prediction in Traffic System Based on Deep Neural Networks and Transfer Learning Method
    Ren, Yi
    Chen, Xu
    Wan, Sheng
    Xie, Kunqing
    Bian, Kaigui
    2019 4TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION ENGINEERING (ICITE 2019), 2019, : 115 - 120
  • [3] Rice leaf diseases prediction using deep neural networks with transfer learning
    Krishnamoorthy, N.
    Prasad, L. V. Narasimha
    Kumar, C. S. Pavan
    Subedi, Bharat
    Abraha, Haftom Baraki
    Sathishkumar, V. E.
    ENVIRONMENTAL RESEARCH, 2021, 198
  • [4] Monkeypox recognition and prediction from visuals using deep transfer learning-based neural networks
    Meena, Gaurav
    Mohbey, Krishna Kumar
    Kumar, Sunil
    MULTIMEDIA TOOLS AND APPLICATIONS, 2024, 83 (28) : 71695 - 71719
  • [5] A Deep Learning Framework for Automated Transfer Learning of Neural Networks
    Balaiah, Thanasekhar
    Jeyadoss, Timothy Jones Thomas
    Thirumurugan, Sainee
    Ravi, Rahul Chander
    2019 11TH INTERNATIONAL CONFERENCE ON ADVANCED COMPUTING (ICOAC 2019), 2019, : 428 - 432
  • [6] Deep Transfer Learning Enables Robust Prediction of Antimicrobial Resistance for Novel Antibiotics
    Ren, Yunxiao
    Chakraborty, Trinad
    Doijad, Swapnil
    Falgenhauer, Linda
    Falgenhauer, Jane
    Goesmann, Alexander
    Schwengers, Oliver
    Heider, Dominik
    ANTIBIOTICS-BASEL, 2022, 11 (11):
  • [7] Breast Cancer Prognosis Based on Transfer Learning Techniques in Deep Neural Networks
    Diwakaran, M.
    Surendran, D.
    INFORMATION TECHNOLOGY AND CONTROL, 2023, 52 (02): : 381 - 396
  • [8] EvoPruneDeepTL: An evolutionary pruning model for transfer learning based deep neural networks
    Poyatos, Javier
    Molina, Daniel
    Martinez, Aritz D.
    Del Ser, Javier
    Herrera, Francisco
    NEURAL NETWORKS, 2023, 158 : 59 - 82
  • [9] A Day-Ahead Photovoltaic Power Prediction via Transfer Learning and Deep Neural Networks
    Miraftabzadeh, Seyed Mahdi
    Colombo, Cristian Giovanni
    Longo, Michela
    Foiadelli, Federica
    FORECASTING, 2023, 5 (01): : 213 - 228
  • [10] A Huanglongbing Detection Method for Orange Trees Based on Deep Neural Networks and Transfer Learning
    Gomez-Flores, Wilfrido
    Jose Garza-Saldana, Juan
    Edmundo Varela-Fuentes, Sostenes
    IEEE ACCESS, 2022, 10 : 116686 - 116696