Title of article :
Classification of seed members of five riboswitch families as short sequences based on the features extracted by Block Location-Based Feature Extraction (BLBFE) method
Author/Authors :
Golabi ، Faegheh Genomic Signal Processing Laboratory - Faculty of Biomedical Engineering, Faculty of Advanced Medical Sciences, - Sahand University of Technology , Mehdizadeh Aghdam ، Elnaz , Shamsi ، Mousa Genomic Signal Processing Laboratory - Faculty of Biomedical Engineering - Sahand University of Technology , Sedaaghi ، Mohammad Hossein Faculty of Electrical Engineering - Sahand University of Technology , Barzegar ، Abolfazl Research Institute of Bioscience and Biotechnology - University of Tabriz , Hejazi ، Mohammad Saeid
From page :
101
To page :
109
Abstract :
Introduction: Riboswitches are short regulatory elements generally found in the untranslated regions of prokaryotes’ mRNAs and classified into several families. Due to the binding possibility between riboswitches and antibiotics, their usage as engineered regulatory elements and also their evolutionary contribution, the need for bioinformatics tools of riboswitch detection is increasing. We have previously introduced an alignment independent algorithm for the identification of frequent sequential blocks in the families of riboswitches. Herein, we report the application of block location-based feature extraction strategy (BLBFE), which uses the locations of detected blocks on riboswitch sequences as features for classification of seed sequences. Besides, monoand dinucleotide frequencies, k-mer, DAC, DCC, DACC, PC-PseDNC-General and SC-PseDNC-General methods as some feature extraction strategies were investigated. Methods: The classifiers of the Decision tree, KNN, LDA, and Naïve Bayes, as well as k-fold crossvalidation, were employed for all methods of feature extraction to compare their performances based on the criteria of accuracy, sensitivity, specificity, and f-score performance measures. Results: The outcome of the study showed that the BLBFE strategy classified the riboswitches indicating 87.65% average correct classification rate (CCR). Moreover, the performance of the proposed feature extraction method was confirmed with average values of 94.31%, 85.01%, 95.45% and 85.38% for accuracy, sensitivity, specificity, and f-score, respectively. Conclusion: Our result approved the performance of the BLBFE strategy in the classification and discrimination of the riboswitch groups showing remarkable higher values of CCR, accuracy, sensitivity, specificity and f-score relative to previously studied feature extraction methods.
Keywords :
Riboswitches , Feature extraction , Blockfinding algorithm , BLBFE , Classification
Journal title :
Bioimpacts
Journal title :
Bioimpacts
Record number :
2658443
Link To Document :
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