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Application of MALDI-TOF MS and machine learning for the detection of SARS-CoV-2 and non-SARS-CoV-2 respiratory infections

  • Sergey Yegorov
  • , Irina Kadyrova
  • , Ilya Korshukov
  • , Aidana Sultanbekova
  • , Yevgeniya Kolesnikova
  • , Valentina Barkhanskaya
  • , Tatiana Bashirova
  • , Yerzhan Zhunusov
  • , Yevgeniya Li
  • , Viktoriya Parakhina
  • , Svetlana Kolesnichenko
  • , Yeldar Baiken
  • , Bakhyt Matkarimov
  • , Dmitriy Vazenmiller
  • , Matthew S. Miller
  • , Gonzalo H. Hortelano
  • , Anar Turmukhambetova
  • , Antonella E. Chesca
  • , Dmitriy Babenko
  • McMaster University
  • Karaganda State Medical Academy
  • City Centre for Primary Medical and Sanitary Care
  • Infectious Disease Centre of the Karaganda Regional Clinical Hospital
  • Nazarbayev University
  • Transilvania University of Brasov

Результат исследованийрецензирование

Аннотация

Matrix-assisted laser desorption/ionization time-of-flight mass spectrometry (MALDI-TOF MS) could aid the diagnosis of acute respiratory infections (ARIs) owing to its affordability and high-throughput capacity. MALDI-TOF MS has been proposed for use on commonly available respiratory samples, without specialized sample preparation, making this technology especially attractive for implementation in low-resource regions. Here, we assessed the utility of MALDI-TOF MS in differentiating severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) vs non-COVID acute respiratory infections (NCARIs) in a clinical lab setting in Kazakhstan. Nasopharyngeal swabs were collected from inpatients and outpatients with respiratory symptoms and from asymptomatic controls (ACs) in 2020–2022. PCR was used to differentiate SARS-CoV-2+ and NCARI cases. MALDI-TOF MS spectra were obtained for a total of 252 samples (115 SARS-CoV-2+, 98 NCARIs, and 39 ACs) without specialized sample preparation. In our first sub-analysis, we followed a published protocol for peak preprocessing and machine learning (ML), trained on publicly available spectra from South American SARS-CoV-2+ and NCARI samples. In our second sub-analysis, we trained ML models on a peak intensity matrix representative of both South American (SA) and Kazakhstan (Kaz) samples. Applying the established MALDI-TOF MS pipeline “as is” resulted in a high detection rate for SARS-CoV-2+ samples (91.0%), but low accuracy for NCARIs (48.0%) and ACs (67.0%) by the top-performing random forest model. After re-training of the ML algorithms on the SA-Kaz peak intensity matrix, the accuracy of detection by the top-performing support vector machine with radial basis function kernel model was at 88.0%, 95.0%, and 78% for the Kazakhstan SARS-CoV-2+, NCARI, and AC subjects, respectively, with a SARS-CoV-2 vs rest receiver operating characteristic area under the curve of 0.983 [0.958, 0.987]; a high differentiation accuracy was maintained for the South American SARS-CoV-2 and NCARIs. MALDI-TOF MS/ML is a feasible approach for the differentiation of ARI without specialized sample preparation. The implementation of MALDI-TOF MS/ML in a real clinical lab setting will necessitate continuous optimization to keep up with the rapidly evolving landscape of ARI.

Язык оригиналаEnglish
ЖурналMicrobiology spectrum
Том12
Номер выпуска5
DOI
СостояниеPublished - мая 2024

ЦУР ООН

Работа этого автора способствует достижению следующих Целей устойчивого развития

  1. Good health and well being
    Good health and well being

ASJC Scopus subject areas

  • Physiology
  • Ecology
  • General Immunology and Microbiology
  • Genetics
  • Microbiology (medical)
  • Cell Biology
  • Infectious Diseases

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