Combining computational modelling and machine learning to identify covid-19 patients with a high thromboembolism risk

HIGHLIGHTS

  • who: Anass Bouchnita et al. from the Department of Mathematical Sciences, The University of Texas at El Paso, El Paso, TX, USA have published the paper: Combining Computational Modelling and Machine Learning to Identify COVID-19 Patients with a High Thromboembolism Risk, in the Journal: Mathematics 2023, 11, 289. of 15/Nov/2022
  • what: This work proposes a methodology that identifies COVID-19 patients with a high thromboembolism risk using computational modelling and machine learning. Next the authors show that COVID-19 upregulates the peak concentration of thrombin generation (TG) and its endogenous thrombin potential . . .

     

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