AcrPred: a hybrid optimization with enumerated machine learning algorithm to predict anti-CRISPR proteins

CRISPR-Cas, as a tool for gene editing, has received extensive attention in recent years. Anti-CRISPR (Acr) proteins can inactivate the CRISPR-Cas defense system during interference phase, and can be used as a potential tool for the regulation of gene editing. In-depth study of Anti-CRISPR proteins...

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Main Authors: Dao, Fu-Ying, Liu, Meng-Lu, Su, Wei, Lv, Hao, Zhang, Zhao-Yue, Lin, Hao, Liu, Li
Other Authors: School of Biological Sciences
Format: Article
Language:English
Published: 2023
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Online Access:https://hdl.handle.net/10356/172143
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1721432023-11-27T01:57:25Z AcrPred: a hybrid optimization with enumerated machine learning algorithm to predict anti-CRISPR proteins Dao, Fu-Ying Liu, Meng-Lu Su, Wei Lv, Hao Zhang, Zhao-Yue Lin, Hao Liu, Li School of Biological Sciences Science::Biological sciences Anti-CRISPR Protein Machine Learning CRISPR-Cas, as a tool for gene editing, has received extensive attention in recent years. Anti-CRISPR (Acr) proteins can inactivate the CRISPR-Cas defense system during interference phase, and can be used as a potential tool for the regulation of gene editing. In-depth study of Anti-CRISPR proteins is of great significance for the implementation of gene editing. In this study, we developed a high-accuracy prediction model based on two-step model fusion strategy, called AcrPred, which could produce an AUC of 0.952 with independent dataset validation. To further validate the proposed model, we compared with published tools and correctly identified 9 of 10 new Acr proteins, indicating the strong generalization ability of our model. Finally, for the convenience of related wet-experimental researchers, a user-friendly web-server AcrPred (Anti-CRISPR proteins Prediction) was established at http://lin-group.cn/server/AcrPred, by which users can easily identify potential Anti-CRISPR proteins. This work was supported by a grant from the Sichuan Provincial Science Fund for Distinguished Young Scholars (2020JDJQ0012) and the National Natural Science Foundation of China (62272085). Fu-Ying Dao is supported by China Scholarship Council to visit Nanyang Technological University. 2023-11-27T01:57:25Z 2023-11-27T01:57:25Z 2023 Journal Article Dao, F., Liu, M., Su, W., Lv, H., Zhang, Z., Lin, H. & Liu, L. (2023). AcrPred: a hybrid optimization with enumerated machine learning algorithm to predict anti-CRISPR proteins. International Journal of Biological Macromolecules, 228, 706-714. https://dx.doi.org/10.1016/j.ijbiomac.2022.12.250 0141-8130 https://hdl.handle.net/10356/172143 10.1016/j.ijbiomac.2022.12.250 36584777 2-s2.0-85145263258 228 706 714 en International Journal of Biological Macromolecules © 2022 Elsevier B.V. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Science::Biological sciences
Anti-CRISPR Protein
Machine Learning
spellingShingle Science::Biological sciences
Anti-CRISPR Protein
Machine Learning
Dao, Fu-Ying
Liu, Meng-Lu
Su, Wei
Lv, Hao
Zhang, Zhao-Yue
Lin, Hao
Liu, Li
AcrPred: a hybrid optimization with enumerated machine learning algorithm to predict anti-CRISPR proteins
description CRISPR-Cas, as a tool for gene editing, has received extensive attention in recent years. Anti-CRISPR (Acr) proteins can inactivate the CRISPR-Cas defense system during interference phase, and can be used as a potential tool for the regulation of gene editing. In-depth study of Anti-CRISPR proteins is of great significance for the implementation of gene editing. In this study, we developed a high-accuracy prediction model based on two-step model fusion strategy, called AcrPred, which could produce an AUC of 0.952 with independent dataset validation. To further validate the proposed model, we compared with published tools and correctly identified 9 of 10 new Acr proteins, indicating the strong generalization ability of our model. Finally, for the convenience of related wet-experimental researchers, a user-friendly web-server AcrPred (Anti-CRISPR proteins Prediction) was established at http://lin-group.cn/server/AcrPred, by which users can easily identify potential Anti-CRISPR proteins.
author2 School of Biological Sciences
author_facet School of Biological Sciences
Dao, Fu-Ying
Liu, Meng-Lu
Su, Wei
Lv, Hao
Zhang, Zhao-Yue
Lin, Hao
Liu, Li
format Article
author Dao, Fu-Ying
Liu, Meng-Lu
Su, Wei
Lv, Hao
Zhang, Zhao-Yue
Lin, Hao
Liu, Li
author_sort Dao, Fu-Ying
title AcrPred: a hybrid optimization with enumerated machine learning algorithm to predict anti-CRISPR proteins
title_short AcrPred: a hybrid optimization with enumerated machine learning algorithm to predict anti-CRISPR proteins
title_full AcrPred: a hybrid optimization with enumerated machine learning algorithm to predict anti-CRISPR proteins
title_fullStr AcrPred: a hybrid optimization with enumerated machine learning algorithm to predict anti-CRISPR proteins
title_full_unstemmed AcrPred: a hybrid optimization with enumerated machine learning algorithm to predict anti-CRISPR proteins
title_sort acrpred: a hybrid optimization with enumerated machine learning algorithm to predict anti-crispr proteins
publishDate 2023
url https://hdl.handle.net/10356/172143
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