Recursive Cluster Elimination Based Rank Function (SVM-RCE-R) Implemented in KNIME

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Date

2021

Journal Title

Journal ISSN

Volume Title

Publisher

F1000 Research Ltd

Open Access Color

GOLD

Green Open Access

Yes

OpenAIRE Downloads

108

OpenAIRE Views

135

Publicly Funded

No
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Top 10%
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Top 10%
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Top 10%

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Abstract

In our earlier study, we proposed a novel feature selection approach, Recursive Cluster Elimination with Support Vector Machines (SVM-RCE) and implemented this approach in Matlab. Interest in this approach has grown over time and several researchers have incorporated SVM-RCE into their studies, resulting in a substantial number of scientific publications. This increased interest encouraged us to reconsider how feature selection, particularly in biological datasets, can benefit from considering the relationships of those genes in the selection process, this led to our development of SVM-RCE-R. SVM-RCE-R, further enhances the capabilities of SVM-RCE by the addition of a novel user specified ranking function. This ranking function enables the user to stipulate the weights of the accuracy, sensitivity, specificity, f-measure, area under the curve and the precision in the ranking function This flexibility allows the user to select for greater sensitivity or greater specificity as needed for a specific project. The usefulness of SVM-RCE-R is further supported by development of the maTE tool which uses a similar approach to identify MicroRNA (miRNA) targets. We have also now implemented the SVM-RCE-R algorithm in Knime in order to make it easier to applyThe use of SVM-RCE-R in Knime is simple and intuitive and allows researchers to immediately begin their analysis without having to consult an information technology specialist. The input for the Knime implemented tool is an EXCEL file (or text or CSV) with a simple structure and the output is also an EXCEL file. The Knime version also incorporates new features not available in SVM-RCE. The results show that the inclusion of the ranking function has a significant impact on the performance of SVM-RCE-R. Some of the clusters that achieve high scores for a specified ranking can also have high scores in other metrics. © 2021 Elsevier B.V., All rights reserved.

Description

Keywords

Clustering, Gene Expression, Grouping, Knime, Machine Learning, Ranking, Recursive, MicroRNAs, Article, Biological Functions, Feature Selection, Gene Cluster, Gene Number, Gene Structure, Genetic Database, Genetic Selection, Human, Information Processing, Learning Algorithm, Machine Learning, Measurement Accuracy, Peer Review, Process Optimization, Publication, Recursive Cluster Elimination, Sensitivity and Specificity, Support Vector Machine, Algorithm, MicroRNA, Algorithms, MicroRNAs, Support Vector Machine, Support Vector Machine, Software Tool Article, recursive, KNIME, Recursive, Clustering, MicroRNAs, machine learning, grouping, ranking, Grouping, Machine learning, gene expression, Gene expression, Ranking, Algorithms, clustering

Fields of Science

0301 basic medicine, 0206 medical engineering, 02 engineering and technology, 03 medical and health sciences

Citation

WoS Q

N/A

Scopus Q

Q3
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OpenCitations Citation Count
20

Source

F1000Research

Volume

9

Issue

Start Page

1255

End Page

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Scopus : 25

PubMed : 13

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Mendeley Readers : 6

SCOPUS™ Citations

25

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1

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5

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