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   assessment of machine learning approaches to predict in-hospital mortality in patients underwent prosthetic heart valve replacement surgery  
   
نویسنده shojaeifard maryam ,ahangar hassan ,gohari sepehr ,oveisi mehrdad ,maleki majid ,reshadmanesh tara ,arsang-jang shahram ,mahjani mahsa ,pourkeshavarz mozhgan ,hajianfar ghasem ,mazloomzadeh saeedeh ,shiri isaac ,gohari sheida
منبع journal of advances in medical and biomedical research - 2023 - دوره : 31 - شماره : 146 - صفحه:210 -220
چکیده    Background and objective: machine learning and artificial intelligence are useful tools to analyze data with multiple variables. it has been shown that the prediction models obtained by machine learning have better performance than the conventional statistical methods. this study was aimed to assess the risk factors and determine the best machine learning prediction model/s for in-hospital mortality among patients who underwent prosthetic valve replacement surgery.materials and methods: in this retrospective cross-sectional study, patient’s pre-operative, intra-operative and post-operative data underwent univariate analysis. feature importance determination was carried out using algorithms including principal component analysis (pca), support vector machine (svm), random forest (rf) model-based, and recursive feature elimination (rfe).  then, 13 machine learning classifiers were implemented for in-hospital prediction model.results: the in-hospital mortality rate was 6.36%. data from 2455 patients underwent final analysis. the machine learning results revealed that among pre-operative features, adaptive boost (ab) and rf classifiers (auc: 0.82±0.033; 0.78±0.028, respectively); among intra-operative features, ab and k-nearest neighbors (knn) classifiers (auc: 0.68±0.014); among postoperative features, ab and rf classifiers (auc: 0.9±0.1; 0.88±0.095, respectively); and among all features, ab and lr classifiers (auc: 0.93±0.049; 0.93±0.055, respectively) had the best performance in prediction of in-hospital mortality.conclusion: the ab classifier was determined as the best model in prediction of in-hospital mortality in all 4 datasets.
کلیدواژه prosthetic valve replacement ,in-hospital mortality ,risk factor ,machine learning
آدرس iran university of medical sciences, echocardiography research center, rajaie cardiovascular medical and research center, iran, zanjan university of medical sciences, mousavi hospital, school of medicine, dept. of cardiology, iran, zanjan university of medical sciences, student research center, school of medicine, iran. alborz university of medical sciences, dept. of family medicine, iran, king’s college london, comprehensive cancer centre, school of cancer & pharmaceutical sciences, faculty of life sciences & medicine, uk, iran university of medical sciences, echocardiography research center, rajaie cardiovascular medical and research center, iran, zanjan university of medical sciences, student research center, school of medicine, iran, zanjan university of medical sciences, school of medicine, dept. of biostatistics, iran, shahid beheshti university of medical sciences, school of medicine, iran, iran university of medical science, rajaie cardiovascular medical and research center, dept. of biomedical and health informatics, iran, geneva university hospital, division of nuclear medicine and molecular imaging, switzerland, iran university of medical science, rajaie cardiovascular medical and research center, dept. of biomedical and health informatics, iran, geneva university hospital, division of nuclear medicine and molecular imaging, switzerland, state university of new york at binghamton, dept. of systems science and industrial engineering, usa
پست الکترونیکی sheida.gohari777@gmail.com
 
     
   
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