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Author | Datasets | Method | Remark |
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[29] Shukla and Tripathi (2020) | DLBCL | (JMI) Joint mutual information (mRMR) information gain (IG) | This research introduced modern filter-based gene selection technique for detecting biomarkers from microarray data. |
[30] Kilicarslan et al. (2020) | Ovarian, leukemia, and Central Nervous system (CNS) | Relief-F of support vector machines (SVM), coevolutionary neural networks (CNN) | This research introduced a hybrid approach based on Relief-F and CNN for cancer diagnosis and classification. |
[31] Pashaei et al. (2016) | Colon tumor ALL, AML, 4 (CNS) MLL | Binary black hole algorithm (BBHA) and random forest ranking (RFR) | The authors introduced gene selection and classification techniques to microarray data based on RFR and BBHA. |
[32] Pradana and Aditsania | Breast cancer | Binary particle swarm optimization (BPSO) and Decision Tree C4.5 | This research introduced binary PSO and DT for cancer detection based on microarray data classification. |
[33] Mantovani et al. | UCI | J48 DTs | They presented induction algorithm and introduced hyperparameter tuning of a Decision Tree induction algorithm. |
[34] Abbas et al. (2021) | Breast cancer | Whale optimization algorithm (WOA), extremely randomized tree BCD-WERT | This research introduced a novel model for breast cancer detection using WOA optimization based on extremely randomized tree algorithm and efficient features. |
[35] Reddy et al. | Srivastava, G. (2020) | UCI heart disease | This research presented an adaptive genetic fuzzy logic algorithm and introduced a hybrid GA and a fuzzy logic classifier for heart diagnosis and disease. |
[36] Qaraad et al. (2020) | Colon cancer, breast cancer, prostate cancer | Elastic NET PSO algorithm | This research introduced parameters optimization of Elastic NET using PSO algorithm for high-dimensional data. |
[37] El Kafrawy et al. (2020) | De novo acute myeloid leukemia | Recursive feature elimination (RFE), tree-based feature selection (TBFS) | This research introduced multifeature selection with machine learning for de novo acute myeloid leukemia in Egypt. |
[38] Turgut et al. (2020) | Breast cancer | AdaBoost and Gradient Boosting random forest, logistic regression | This research introduced classification for microarray breast cancer data using machine learning methods. |
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