Feature-ranking-based ensemble classifiers for survivability prediction of intensive care unit patients using lab test data
Autor: | M. Sohel Rahman, Md. Zahangir Alam, Muhammad Ali Nayeem, M. Saifur Rahman, Mohammad M. Masud, Muhsin Cheratta |
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Rok vydání: | 2021 |
Předmět: |
0301 basic medicine
Lab test data Computer science Feature vector Vital signs Health Informatics lcsh:Computer applications to medicine. Medical informatics Machine learning computer.software_genre Clinical decision support system Clustering law.invention 03 medical and health sciences 0302 clinical medicine law business.industry Feature grouping Intensive care unit 030104 developmental biology ICU Patients 030220 oncology & carcinogenesis Clinical prediction Data analysis Feature vector compaction lcsh:R858-859.7 Artificial intelligence F1 score business computer Classifier (UML) Test data |
Zdroj: | Informatics in Medicine Unlocked, Vol 22, Iss, Pp 100495-(2021) |
ISSN: | 2352-9148 |
DOI: | 10.1016/j.imu.2020.100495 |
Popis: | Clinical decision support systems (CDSSs) have received increasing research attention in recent years because they can improve the quality, safety, efficiency, and effectiveness of healthcare. A CDSS combined with advanced data analytics is more accurate and efficient than traditional systems. In this domain, survival or deterioration prediction of critical care patients, e.g., intensive care unit (ICU) patients, is an active research area. Early deterioration prediction can help healthcare providers in providing efficient and effective patient care. Research in this field is primarily based on vital signs. However, very few studies have investigated survival prediction using lab test data. Although some studies have made advancements in this field, accuracy remains insufficient. Thus, this study aims to improve the accuracy and efficiency of survival prediction for ICU patients. We propose a feature-ranking-based ensemble of classifiers for survival prediction of ICU patients using only lab test data. In the proposed method, features are evaluated first, and subsets of useful features are selected. Subsequently, training data with the selected features are clustered using a feature vector compaction (FVC) technique. Finally, ensemble classifier models are trained. Extensive experiments with over 3000 different settings on six ICU patient datasets were performed to evaluate the efficacy of the proposed method. The proposed technique achieves weighted average F1 score ( F w a ) as high as 82.6% with support vector machine classifier when feature ranking is used with a combination of vertical and horizontal grouping-based FVC. All experimental results demonstrate that this technique outperforms existing methods, with the F w a score difference being as high as 4.5%. |
Databáze: | OpenAIRE |
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