AI Article Synopsis

  • The study aimed to identify key risk factors for venous thromboembolism (VTE) in urological inpatients using the Caprini scale and an interpretable machine learning method.
  • It utilized the Boruta method for variable selection and the rough set method to create decision rules, comparing the results with advanced machine learning models like random forest, support vector machine, and backpropagation artificial neural networks.
  • Key risk factors identified included age, major surgery, and malignancy, with the backpropagation neural network demonstrating the highest accuracy (97.2%) in predicting VTE risks.

Article Abstract

Purpose: To identify the key risk factors for venous thromboembolism (VTE) in urological inpatients based on the Caprini scale using an interpretable machine learning method.

Methods: VTE risk data of urological inpatients were obtained based on the Caprini scale in the case hospital. Based on the data, the Boruta method was used to further select the key variables from the 37 variables in the Caprini scale. Furthermore, decision rules corresponding to each risk level were generated using the rough set (RS) method. Finally, random forest (RF), support vector machine (SVM), and backpropagation artificial neural network (BPANN) were used to verify the data accuracy and were compared with the RS method.

Results: Following the screening, the key risk factors for VTE in urology were "(C) Age," "(C) Minor Surgery planned," "(C) Obesity (BMI > 25)," "(C) Varicose veins," "(C) Sepsis (< 1 month)," (C) "Serious lung disease incl. pneumonia (< 1month) " (C) COPD," "(C) Other risk," "(C) Major surgery (> 45 min)," "(C) Laparoscopic surgery (> 45 min)," "(C) Patient confined to bed (> 72 h)," "(C18) Malignancy (present or previous)," "(C) Central venous access," "(C) History of DVT/PE," "(C) Other congenital or acquired thrombophilia," and "(C) Stroke (< 1 month." According to the decision rules of different risk levels obtained using the RS method, "(C) Age," "(C) Major surgery (> 45 minutes)," and "(C) Malignancy (present or previous)" were the main factors influencing mid- and high-risk levels, and some suggestions on VTE prevention were indicated based on these three factors. The average accuracies of the RS, RF, SVM, and BPANN models were 79.5%, 87.9%, 92.6%, and 97.2%, respectively. In addition, BPANN had the highest accuracy, recall, F1-score, and precision.

Conclusions: The RS model achieved poorer accuracy than the other three common machine learning models. However, the RS model provides strong interpretability and allows for the identification of high-risk factors and decision rules influencing high-risk assessments of VTE in urology. This transparency is very important for clinicians in the risk assessment process.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11328390PMC
http://dx.doi.org/10.1186/s12959-024-00645-0DOI Listing

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