KRISHI
ICAR RESEARCH DATA REPOSITORY FOR KNOWLEDGE MANAGEMENT
(An Institutional Publication and Data Inventory Repository)
"Not Available": Please do not remove the default option "Not Available" for the fields where metadata information is not available
"1001-01-01": Date not available or not applicable for filling metadata infromation
"1001-01-01": Date not available or not applicable for filling metadata infromation
Please use this identifier to cite or link to this item:
http://krishi.icar.gov.in/jspui/handle/123456789/81080
Title: | Computational Prediction of RNA Binding Proteins: Features and Models |
Other Titles: | Not Available |
Authors: | Upendra Kumar Pradhan Prabina Kumar Meher |
ICAR Data Use Licennce: | http://krishi.icar.gov.in/PDF/ICAR_Data_Use_Licence.pdf |
Author's Affiliated institute: | ICAR::Indian Agricultural Statistics Research Institute |
Published/ Complete Date: | 2023-12-02 |
Project Code: | AGEDIASRISIL202101700188 |
Keywords: | RNA binding proteins Machine learning Models features |
Publisher: | Chapman and Hall/CRC |
Citation: | Pradhan UK,Meher PK (2023). Computational Prediction of RNA Binding Proteins: Features and Models. In Bioinformatics and Computational Biology. Chapman and Hall/CRC. https://doi.org/10.1201/9781003331247-14 |
Series/Report no.: | Not Available; |
Abstract/Description: | To date, two major layers of gene regulation have been identified during RNA life cycle. These include: transcription regulation by transcription and epigenetic factors and post-transcription regulation by various classes of small RNA (sRNAs). Besides these two layers, there is another layer of gene regulation which is completely regulated by RNA-binding proteins (RBPs). RBPs play crucial roles in gene expression and regulation in both transcriptional and post-transcriptional levels. RBPs account for approximately 6–8% of all proteins. A key objective of computational biology is to identify these RBPs. Although a variety of experimental methods for RBP identification have been developed, these techniques are costly, time-consuming, and labour-intensive. Alternatively, researchers have developed multiple computational approaches for predicting RBPs by integrating multiple machine learning and deep learning methods with numerical RBP features. In this chapter, we discuss the computational methods, datasets, and features for computational recognition of RBPs. We believe that this chapter will provide valuable information as far as computational prediction of RBPs is concerned. |
Description: | Not Available |
ISSN: | 9781003331247 |
Type(s) of content: | Book chapter |
Sponsors: | Not Available |
Language: | English |
Name of Journal: | Not Available |
Journal Type: | Not Available |
NAAS Rating: | Not Available |
Impact Factor: | Not Available |
Volume No.: | Not Available |
Page Number: | Not Available |
Name of the Division/Regional Station: | Statistical Genetics |
Source, DOI or any other URL: | https://doi.org/10.1201/9781003331247-14 |
URI: | http://krishi.icar.gov.in/jspui/handle/123456789/81080 |
Appears in Collections: | AEdu-IASRI-Publication |
Files in This Item:
There are no files associated with this item.
Items in KRISHI are protected by copyright, with all rights reserved, unless otherwise indicated.