Hospital readmission prediction based on improved feature selection using grey relational analysis and LASSO

This paper develops a robust hospital readmission prediction framework by combining the feature selection algorithm and machine learning (ML) classifiers. The improved feature selection is proposed by considering the uncertainty in patient's attributes that leads to the output variable. Design/...

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Main Authors: Miswan, Nor Hamizah, Chan, Chee Seng, Ng, Chong Guan
Format: Article
Published: Emerald Group Publishing 2021
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Online Access:http://eprints.um.edu.my/35367/
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spelling my.um.eprints.353672022-10-26T04:38:30Z http://eprints.um.edu.my/35367/ Hospital readmission prediction based on improved feature selection using grey relational analysis and LASSO Miswan, Nor Hamizah Chan, Chee Seng Ng, Chong Guan QA75 Electronic computers. Computer science Medical technology This paper develops a robust hospital readmission prediction framework by combining the feature selection algorithm and machine learning (ML) classifiers. The improved feature selection is proposed by considering the uncertainty in patient's attributes that leads to the output variable. Design/methodology/approach - First, data preprocessing is conducted which includes how raw data is managed. Second, the impactful features are selected through feature selection process. It started with calculating the relational grade of each patient towards readmission using grey relational analysis (GRA) and the grade is used as the target values for feature selection. Then, the influenced features are selected using the Least Absolute Shrinkage and Selection Operator (LASSO) method. This proposed method is termed as Grey-LASSO feature selection. The final task is the readmission prediction using ML classifiers. Findings - The proposed method offered good performances with a minimum feature subset up to 54-65% discarded features. Multi-Layer Perceptron with Grey-LASSO gave the best performance. Research limitations/implications - The performance of Grey-LASSO is justified in two readmission datasets. Further research is required to examine the generalisability to other datasets. Originality/value - In designing the feature selection algorithm, the selection on influenced input variables was based on the integration of GRA and LASSO. Specifically, GRA is a part of the grey system theory, which was employed to analyse the relation between systems under uncertain conditions. The LASSO approach was adopted due to its ability for sparse data representation. Emerald Group Publishing 2021-10-19 Article PeerReviewed Miswan, Nor Hamizah and Chan, Chee Seng and Ng, Chong Guan (2021) Hospital readmission prediction based on improved feature selection using grey relational analysis and LASSO. Grey Systems-Theory and Application, 11 (4). pp. 796-812. ISSN 2043-9377, DOI https://doi.org/10.1108/GS-12-2020-0168 <https://doi.org/10.1108/GS-12-2020-0168>. 10.1108/GS-12-2020-0168
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic QA75 Electronic computers. Computer science
Medical technology
spellingShingle QA75 Electronic computers. Computer science
Medical technology
Miswan, Nor Hamizah
Chan, Chee Seng
Ng, Chong Guan
Hospital readmission prediction based on improved feature selection using grey relational analysis and LASSO
description This paper develops a robust hospital readmission prediction framework by combining the feature selection algorithm and machine learning (ML) classifiers. The improved feature selection is proposed by considering the uncertainty in patient's attributes that leads to the output variable. Design/methodology/approach - First, data preprocessing is conducted which includes how raw data is managed. Second, the impactful features are selected through feature selection process. It started with calculating the relational grade of each patient towards readmission using grey relational analysis (GRA) and the grade is used as the target values for feature selection. Then, the influenced features are selected using the Least Absolute Shrinkage and Selection Operator (LASSO) method. This proposed method is termed as Grey-LASSO feature selection. The final task is the readmission prediction using ML classifiers. Findings - The proposed method offered good performances with a minimum feature subset up to 54-65% discarded features. Multi-Layer Perceptron with Grey-LASSO gave the best performance. Research limitations/implications - The performance of Grey-LASSO is justified in two readmission datasets. Further research is required to examine the generalisability to other datasets. Originality/value - In designing the feature selection algorithm, the selection on influenced input variables was based on the integration of GRA and LASSO. Specifically, GRA is a part of the grey system theory, which was employed to analyse the relation between systems under uncertain conditions. The LASSO approach was adopted due to its ability for sparse data representation.
format Article
author Miswan, Nor Hamizah
Chan, Chee Seng
Ng, Chong Guan
author_facet Miswan, Nor Hamizah
Chan, Chee Seng
Ng, Chong Guan
author_sort Miswan, Nor Hamizah
title Hospital readmission prediction based on improved feature selection using grey relational analysis and LASSO
title_short Hospital readmission prediction based on improved feature selection using grey relational analysis and LASSO
title_full Hospital readmission prediction based on improved feature selection using grey relational analysis and LASSO
title_fullStr Hospital readmission prediction based on improved feature selection using grey relational analysis and LASSO
title_full_unstemmed Hospital readmission prediction based on improved feature selection using grey relational analysis and LASSO
title_sort hospital readmission prediction based on improved feature selection using grey relational analysis and lasso
publisher Emerald Group Publishing
publishDate 2021
url http://eprints.um.edu.my/35367/
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score 13.214268