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http://krishi.icar.gov.in/jspui/handle/123456789/72379
Title: | GIpred: a computational tool for prediction of GIGANTEA proteins using machine learning algorithm |
Other Titles: | Not Available |
Authors: | Prabina Kumar Meher Sagarika Dash Tanmaya Kumar Sahu Subhrajit Satpathy Sukanta Kumar Pradhan |
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: | 2022-01-24 |
Project Code: | Not Available |
Keywords: | GIGANTEA protein machine learning algorithm |
Publisher: | Springer India |
Citation: | Meher, P.K., Dash, S., Sahu, T.K. et al. (2022). GIpred: a computational tool for prediction of GIGANTEA proteins using machine learning algorithm. Physiol Mol Biol Plants 28, 1–16 (2022). https://doi.org/10.1007/s12298-022-01130-6 |
Series/Report no.: | Not Available; |
Abstract/Description: | In plants, GIGANTEA (GI) protein plays different biological functions including carbon and sucrose metabolism, cell wall deposition, transpiration and hypocotyl elongation. This suggests that GI is an important class of proteins. So far, the resource-intensive experimental methods have been mostly utilized for identification of GI proteins. Thus, we made an attempt in this study to develop a computational model for fast and accurate prediction of GI proteins. Ten different supervised learning algorithms i.e., SVM, RF, JRIP, J48, LMT, IBK, NB, PART, BAGG and LGB were employed for prediction, where the amino acid composition (AAC), FASGAI features and physico-chemical (PHYC) properties were used as numerical inputs for the learning algorithms. Higher accuracies i.e., 96.75% of AUC-ROC and 86.7% of AUC-PR were observed for SVM coupled with AAC + PHYC feature combination, while evaluated with five-fold cross validation. With leave-one-out cross validation, 97.29% of AUC-ROC and 87.89% of AUC-PR were respectively achieved. While the performance of the model was evaluated with an independent dataset of 18 GI sequences, 17 were observed as correctly predicted. We have also performed proteome-wide identification of GI proteins in wheat, followed by functional annotation using Gene Ontology terms. A prediction server “GIpred” is freely accessible at http://cabgrid.res.in:8080/gipred/ for proteome-wide recognition of GI proteins. |
Description: | Not Available |
ISSN: | Not Available |
Type(s) of content: | Research Paper |
Sponsors: | Not Available |
Language: | English |
Name of Journal: | Physiology and Molecular Biology of Plants |
Volume No.: | 28 |
Page Number: | 1-16 |
Name of the Division/Regional Station: | Not Available |
Source, DOI or any other URL: | https://link.springer.com/article/10.1007/s12298-022-01130-6 |
URI: | http://krishi.icar.gov.in/jspui/handle/123456789/72379 |
Appears in Collections: | AEdu-IASRI-Publication |
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