Abstract
Background: As blood testing is radiation-free, low-cost and simple to operate, some researchers use machine learning to detect COVID-19 from blood test data. However, few studies take into consideration the imbalanced data distribution, which can impair the performance of a classifier.
Method: A novel combined dynamic ensemble selection (DES) method is proposed for imbalanced data to detect COVID-19 from complete blood count. This method combines data preprocessing and improved DES. Firstly, we use the hybrid synthetic minority over-sampling technique and edited nearest neighbor (SMOTE-ENN) to balance data and remove noise. Secondly, in order to improve the performance of DES, a novel hybrid multiple clustering and bagging classifier generation (HMCBCG) method is proposed to reinforce the diversity and local regional competence of candidate classifiers.
Results: The experimental results based on three popular DES methods show that the performance of HMCBCG is better than only use bagging. HMCBCG+KNE obtains the best performance for COVID-19 screening with 99.81% accuracy, 99.86% F1, 99.78% G-mean and 99.81% AUC.
Conclusion: Compared to other advanced methods, our combined DES model can improve accuracy, G-mean, F1 and AUC of COVID-19 screening.
Keywords: COVID-19 screening; Candidate classifier generation; Dynamic ensemble selection; Hybrid multiple clustering and bagging; Imbalanced data.
【저자키워드】 COVID-19 screening, Candidate classifier generation, Dynamic ensemble selection, Hybrid multiple clustering and bagging, Imbalanced data., 【초록키워드】 COVID-19, Local, Accuracy, complete blood count, Clustering, sampling, distribution, Blood, blood test, blood count, hybrid, Diversity, AUC, Classifier, candidate, experimental results, dynamic, researcher, classifiers, IMPROVE, detect, impair, DES, 【제목키워드】 COVID-19, detect,