Biomarker selection and classification of "- Omics " data using a two-step bayes classification framework
Identification of suitable biomarkers for accurate prediction of phenotypic outcomes is a goal for personalized medicine. However, current machine learning approaches are either too complex or perform poorly. Here, a novel two-step machine-learning framework is presented to address this need. First,...
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th-mahidol.311922018-10-19T12:00:56Z Biomarker selection and classification of "- Omics " data using a two-step bayes classification framework Anunchai Assawamakin Supakit Prueksaaroon Supasak Kulawonganunchai Philip James Shaw Vara Varavithya Taneth Ruangrajitpakorn Sissades Tongsima Mahidol University Thammasat University Thailand National Center for Genetic Engineering and Biotechnology King Mongkut's University of Technology North Bangkok Natioanl Electronic and Computer Technology Center Biochemistry, Genetics and Molecular Biology Immunology and Microbiology Identification of suitable biomarkers for accurate prediction of phenotypic outcomes is a goal for personalized medicine. However, current machine learning approaches are either too complex or perform poorly. Here, a novel two-step machine-learning framework is presented to address this need. First, a Naïve Bayes estimator is used to rank features from which the top-ranked will most likely contain the most informative features for prediction of the underlying biological classes. The top-ranked features are then used in a Hidden Naïve Bayes classifier to construct a classification prediction model from these filtered attributes. In order to obtain the minimum set of the most informative biomarkers, the bottom-ranked features are successively removed from the Naïve Bayes-filtered feature list one at a time, and the classification accuracy of the Hidden Naïve Bayes classifier is checked for each pruned feature set. The performance of the proposed two-step Bayes classification framework was tested on different types of -omics datasets including gene expression microarray, single nucleotide polymorphism microarray (SNParray), and surface-enhanced laser desorption/ionization time-of-flight (SELDI-TOF) proteomic data. The proposed two-step Bayes classification framework was equal to and, in some cases, outperformed other classification methods in terms of prediction accuracy, minimum number of classification markers, and computational time. © 2013 Anunchai Assawamakin et al. 2018-10-19T04:35:14Z 2018-10-19T04:35:14Z 2013-10-07 Article BioMed Research International. Vol.2013, (2013) 10.1155/2013/148014 23146141 23146133 2-s2.0-84884861449 https://repository.li.mahidol.ac.th/handle/123456789/31192 Mahidol University SCOPUS https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=84884861449&origin=inward |
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Biochemistry, Genetics and Molecular Biology Immunology and Microbiology Anunchai Assawamakin Supakit Prueksaaroon Supasak Kulawonganunchai Philip James Shaw Vara Varavithya Taneth Ruangrajitpakorn Sissades Tongsima Biomarker selection and classification of "- Omics " data using a two-step bayes classification framework |
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Identification of suitable biomarkers for accurate prediction of phenotypic outcomes is a goal for personalized medicine. However, current machine learning approaches are either too complex or perform poorly. Here, a novel two-step machine-learning framework is presented to address this need. First, a Naïve Bayes estimator is used to rank features from which the top-ranked will most likely contain the most informative features for prediction of the underlying biological classes. The top-ranked features are then used in a Hidden Naïve Bayes classifier to construct a classification prediction model from these filtered attributes. In order to obtain the minimum set of the most informative biomarkers, the bottom-ranked features are successively removed from the Naïve Bayes-filtered feature list one at a time, and the classification accuracy of the Hidden Naïve Bayes classifier is checked for each pruned feature set. The performance of the proposed two-step Bayes classification framework was tested on different types of -omics datasets including gene expression microarray, single nucleotide polymorphism microarray (SNParray), and surface-enhanced laser desorption/ionization time-of-flight (SELDI-TOF) proteomic data. The proposed two-step Bayes classification framework was equal to and, in some cases, outperformed other classification methods in terms of prediction accuracy, minimum number of classification markers, and computational time. © 2013 Anunchai Assawamakin et al. |
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Mahidol University |
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Mahidol University Anunchai Assawamakin Supakit Prueksaaroon Supasak Kulawonganunchai Philip James Shaw Vara Varavithya Taneth Ruangrajitpakorn Sissades Tongsima |
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Article |
author |
Anunchai Assawamakin Supakit Prueksaaroon Supasak Kulawonganunchai Philip James Shaw Vara Varavithya Taneth Ruangrajitpakorn Sissades Tongsima |
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Anunchai Assawamakin |
title |
Biomarker selection and classification of "- Omics " data using a two-step bayes classification framework |
title_short |
Biomarker selection and classification of "- Omics " data using a two-step bayes classification framework |
title_full |
Biomarker selection and classification of "- Omics " data using a two-step bayes classification framework |
title_fullStr |
Biomarker selection and classification of "- Omics " data using a two-step bayes classification framework |
title_full_unstemmed |
Biomarker selection and classification of "- Omics " data using a two-step bayes classification framework |
title_sort |
biomarker selection and classification of "- omics " data using a two-step bayes classification framework |
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2018 |
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https://repository.li.mahidol.ac.th/handle/123456789/31192 |
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1763497577656877056 |