Abstract

Background: This study intended to use a machine learning model to identify critical preoperative and intraoperative variables and predict the risk of several severe complications (myocardial infarction, stroke, renal failure, and hospital mortality) after cardiac valvular surgery.Study Design and Methods: A total of 1,488 patients undergoing cardiac valvular surgery in eight large tertiary hospitals in China were examined. Fifty-four perioperative variables, such as essential demographic characteristics, concomitant disease, preoperative laboratory indicators, operation type, and intraoperative information, were collected. Machine learning models were developed and validated by 10-fold cross-validation. In each fold, Recursive Feature Elimination was used to select key variables. Ten machine learning models and logistic regression were developed. The area under the receiver operating characteristic (AUROC), accuracy (ACC), Youden index, sensitivity, specificity, F1-score, positive predictive value (PPV), and negative predictive value (NPV) were used to compare the prediction performance of different models. The SHapley Additive ex Planations package was applied to interpret the best machine learning model. Finally, a model was trained on the whole dataset with the merged key variables, and a web tool was created for clinicians to use.Results: In this study, 14 vital variables, namely, intraoperative total input, intraoperative blood loss, intraoperative colloid bolus, Classification of New York Heart Association (NYHA) heart function, preoperative hemoglobin (Hb), preoperative platelet (PLT), age, preoperative fibrinogen (FIB), intraoperative minimum red blood cell volume (Hct), body mass index (BMI), creatinine, preoperative Hct, intraoperative minimum Hb, and intraoperative autologous blood, were finally selected. The eXtreme Gradient Boosting algorithms (XGBOOST) algorithm model presented a significantly better predictive performance (AUROC: 0.90) than the other models (ACC: 81%, Youden index: 70%, sensitivity: 89%, specificity: 81%, F1-score:0.26, PPV: 15%, and NPV: 99%).Conclusion: A model for predicting several severe complications after cardiac valvular surgery was successfully developed using a machine learning algorithm based on 14 perioperative variables, which could guide clinical physicians to take appropriate preventive measures and diminish the complications for patients at high risk.

Highlights

  • The prevalence of unhealthy lifestyles, such as long-term highfat diet and lack of exercise, has caused the higher and higher incidence of cardiac diseases

  • In the complication occurred cohort, 12.73% of the patients died in the hospital, 61.82% of the patients had a myocardial infarction after the operation, 30.91% of the patients had a stroke, and 74.55% of the patients had renal failure after the operation

  • The proposed model significantly outperformed the conventional LR (AUC: 0.74) and seven other machine learning models

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Summary

Introduction

The prevalence of unhealthy lifestyles, such as long-term highfat diet and lack of exercise, has caused the higher and higher incidence of cardiac diseases. Patients with cardiac diseases will suffer serious morbidity and mortality without reasonable interventions, which increased the number of cardiac surgery significantly. There has been a sharp increase in the number of patients with valvular diseases, many of which are severe and must be treated with cardiac surgery to replace insufficient valves [2, 3]. A large number of cardiac patients always along with various of complications after cardiac valvular surgery, these postoperative complications mainly including myocardial infarction, stroke, acute renal failure, death, and so on [4]. This study intended to use a machine learning model to identify critical preoperative and intraoperative variables and predict the risk of several severe complications (myocardial infarction, stroke, renal failure, and hospital mortality) after cardiac valvular surgery

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