RNA family classification using the conditional random fields model
RNA family classification is one of the neccesary tasks needed to characterize sequenced genomes. RNA families are defined by member sequences which perform the same function in different species. Such functions have a strong relationship with RNA secondary structures but not the primary sequence. T...
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th-cmuir.6653943832-68842014-08-30T03:51:21Z RNA family classification using the conditional random fields model Subpaiboonkit S. Thammarongtham C. Chaijaruwanich J. RNA family classification is one of the neccesary tasks needed to characterize sequenced genomes. RNA families are defined by member sequences which perform the same function in different species. Such functions have a strong relationship with RNA secondary structures but not the primary sequence. Thus RNA sequences alone are not sufficient to classify RNA families. Here, we focus on computational RNA family classification by exploring primary sequences with RNA secondary structures as the selected feature to classify the RNA family using the method of conditional random fields (CRFs). This model treats RNA classification as a sequence labeling problem. Our CRFs models can classify the RNA families of the test RNA data sets with optimal F-score prediction between 98.77% - 99.32% for different RNA families. 2014-08-30T03:51:21Z 2014-08-30T03:51:21Z 2012 Article 1252526 http://www.scopus.com/inward/record.url?eid=2-s2.0-84856571106&partnerID=40&md5=b5a484bc3a4f93a2392cff1d995ce7bd http://cmuir.cmu.ac.th/handle/6653943832/6884 English |
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RNA family classification is one of the neccesary tasks needed to characterize sequenced genomes. RNA families are defined by member sequences which perform the same function in different species. Such functions have a strong relationship with RNA secondary structures but not the primary sequence. Thus RNA sequences alone are not sufficient to classify RNA families. Here, we focus on computational RNA family classification by exploring primary sequences with RNA secondary structures as the selected feature to classify the RNA family using the method of conditional random fields (CRFs). This model treats RNA classification as a sequence labeling problem. Our CRFs models can classify the RNA families of the test RNA data sets with optimal F-score prediction between 98.77% - 99.32% for different RNA families. |
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Article |
author |
Subpaiboonkit S. Thammarongtham C. Chaijaruwanich J. |
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Subpaiboonkit S. Thammarongtham C. Chaijaruwanich J. RNA family classification using the conditional random fields model |
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Subpaiboonkit S. Thammarongtham C. Chaijaruwanich J. |
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Subpaiboonkit S. |
title |
RNA family classification using the conditional random fields model |
title_short |
RNA family classification using the conditional random fields model |
title_full |
RNA family classification using the conditional random fields model |
title_fullStr |
RNA family classification using the conditional random fields model |
title_full_unstemmed |
RNA family classification using the conditional random fields model |
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rna family classification using the conditional random fields model |
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2014 |
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http://www.scopus.com/inward/record.url?eid=2-s2.0-84856571106&partnerID=40&md5=b5a484bc3a4f93a2392cff1d995ce7bd http://cmuir.cmu.ac.th/handle/6653943832/6884 |
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1681420697453199360 |