Journal of Clinical Medicine (Dec 2021)

Machine Learning to Calculate Heparin Dose in COVID-19 Patients with Active Cancer

  • Egidio Imbalzano,
  • Luana Orlando,
  • Angela Sciacqua,
  • Giuseppe Nato,
  • Francesco Dentali,
  • Veronica Nassisi,
  • Vincenzo Russo,
  • Giuseppe Camporese,
  • Gianluca Bagnato,
  • Arrigo F. G. Cicero,
  • Giuseppe Dattilo,
  • Marco Vatrano,
  • Antonio Giovanni Versace,
  • Giovanni Squadrito,
  • Pierpaolo Di Micco

DOI
https://doi.org/10.3390/jcm11010219
Journal volume & issue
Vol. 11, no. 1
p. 219

Abstract

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To realize a machine learning (ML) model to estimate the dose of low molecular weight heparin to be administered, preventing thromboembolism events in COVID-19 patients with active cancer. Methods: We used a dataset comprising 131 patients with active cancer and COVID-19. We considered five ML models: logistic regression, decision tree, random forest, support vector machine and Gaussian naive Bayes. We decided to implement the logistic regression model for our study. A model with 19 variables was analyzed. Data were randomly split into training (70%) and testing (30%) sets. Model performance was assessed by confusion matrix metrics on the testing data for each model as positive predictive value, sensitivity and F1-score. Results: We showed that the five selected models outperformed classical statistical methods of predictive validity and logistic regression was the most effective, being able to classify with an accuracy of 81%. The most relevant result was finding a patient-proof where python function was able to obtain the exact dose of low weight molecular heparin to be administered and thereby to prevent the occurrence of VTE. Conclusions: The world of machine learning and artificial intelligence is constantly developing. The identification of a specific LMWH dose for preventing VTE in very high-risk populations, such as the COVID-19 and active cancer population, might improve with the use of new training ML-based algorithms. Larger studies are needed to confirm our exploratory results.

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