Predicting metastasis in gastric cancer patients: machine learning-based approaches

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作者
Atefeh Talebi
Carlos A. Celis-Morales
Nasrin Borumandnia
Somayeh Abbasi
Mohamad Amin Pourhoseingholi
Abolfazl Akbari
Javad Yousefi
机构
[1] Iran University of Medical Sciences,Colorectal Research Center
[2] University of Glasgow,British Heart Foundation Cardiovascular Research Centre
[3] University of Glasgow,Institute of Cardiovascular and Medical Sciences
[4] Shahid Beheshti University of Medical Sciences,Urology and Nephrology Research Center
[5] Islamic Azad University,Department of Mathematics, Isfahan (Khorasgan) Branch
[6] Shahid Beheshti University of Medical Sciences,Gastroenterology and Liver Diseases Research Center, Research Institute for Gastroenterology and Liver Diseases
[7] Iran University of Medical Sciences,Colorectal Research Center
[8] Iran University of Medical Sciences,Department of Internal Medicine, School of Medicine
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摘要
Gastric cancer (GC), with a 5-year survival rate of less than 40%, is known as the fourth principal reason of cancer-related mortality over the world. This study aims to develop predictive models using different machine learning (ML) classifiers based on both demographic and clinical variables to predict metastasis status of patients with GC. The data applied in this study including 733 of GC patients, divided into a train and test groups at a ratio of 8:2, diagnosed at Taleghani tertiary hospital. In order to predict metastasis in GC, ML-based algorithms, including Naive Bayes (NB), Random Forest (RF), Support Vector Machine (SVM), Neural Network (NN), Decision Tree (RT) and Logistic Regression (LR), with 5-fold cross validation were performed. To assess the model performance, F1 score, precision, sensitivity, specificity, area under the curve (AUC) of receiver operating characteristic (ROC) curve and precision-recall AUC (PR-AUC) were obtained. 262 (36%) experienced metastasis among 733 patients with GC. Although all models have optimal performance, the indices of SVM model seems to be more appropiate (training set: AUC: 0.94, Sensitivity: 0.94; testing set: AUC: 0.85, Sensitivity: 0.92). Then, NN has the higher AUC among ML approaches (training set: AUC: 0.98; testing set: AUC: 0.86). The RF of ML-based models, which determine size of tumor and age as two essential variables, is considered as the third efficient model, because of higher specificity and AUC (84% and 87%). Based on the demographic and clinical characteristics, ML approaches can predict the metastasis status in GC patients. According to AUC, sensitivity and specificity in both SVM and NN can be regarded as better algorithms among 6 applied ML-based methods.
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