Predicting AAK1/GAK dual-target inhibitor against SARS-CoV-2 viral entry into host cells: an in silico approach / Xavier Chee Wezen ...[et.al.]

Wezen, Xavier Chee and Clement, Sim Jun Wen and Yung Ping, Lilian Siaw and Yeong, Kah Ho and Qing, Kong Hao and Ha, Christopher and San, Hwang Siaw (2021) Predicting AAK1/GAK dual-target inhibitor against SARS-CoV-2 viral entry into host cells: an in silico approach / Xavier Chee Wezen ...[et.al.]. Journal of Smart Science and Technology, 1 (1): 5. pp. 48-67. ISSN 2785-924x

Abstract

Clathrin-mediated endocytosis (CME) is a normal biological process where cellular contents are transported into the cells.However, this process is often hijacked by different viruses to enter host cells and cause infections. Recently, two proteins that regulate CME – AAK1 and GAK – have been proposed
as potential therapeutic targets for designing broad-spectrum antiviral drugs. In this work, we curated two compound datasets containing 83 AAK1 inhibitors and 196 GAK inhibitors each. Subsequently, machine learning methods,namely Random Forest, Elastic Net and Sequential Minimal Optimization, were used to construct Quantitative StructureActivity Relationship (QSAR) models to predict small molecule inhibitors of AAK1 and GAK. To ensure predictivity,
these models were evaluated by using Leave-One-Out (LOO)= cross validation and with an external test set. In all cases, our QSAR models achieved a q2
LOO in range of 0.64 to 0.84 (Root Mean Squared Error; RMSE = 0.41 to 0.52) and a q2 ext in range of 0.57 to 0.92 (RMSE = 0.36 to 0.61). Besides, our
QSAR models were evaluated by using additional QSAR performance metrics and y-randomization test. Finally, by using a concensus scoring approach, nine chemical compounds from the Drugbank compound library were predicted as AAK1/GAK dual-target inhibitors. The electrostatic potential maps for the nine compounds were generated and compared against two known dual-target inhibitors, sunitinib and baricitinib. Our work provides the rationale to validate these nine compounds experimentally against the protein targets AAK1 and GAK.

Metadata

Item Type: Article
Creators:
Creators
Email / ID Num.
Wezen, Xavier Chee
UNSPECIFIED
Clement, Sim Jun Wen
UNSPECIFIED
Yung Ping, Lilian Siaw
UNSPECIFIED
Yeong, Kah Ho
UNSPECIFIED
Qing, Kong Hao
UNSPECIFIED
Ha, Christopher
UNSPECIFIED
San, Hwang Siaw
UNSPECIFIED
Subjects: Q Science > Q Science (General)
Q Science > QH Natural history - Biology
Q Science > QH Natural history - Biology > Biology
R Medicine > R Medicine (General)
Divisions: Universiti Teknologi MARA, Sarawak
Journal or Publication Title: Journal of Smart Science and Technology
UiTM Journal Collections: UiTM Journal > Journal of Smart Science and Technology (JSST)
ISSN: 2785-924x
Volume: 1
Number: 1
Page Range: pp. 48-67
Keywords: QSAR models; machine learning; AAK1; GAK; dual-target inhibitors; viral entry
Date: September 2021
URI: https://ir.uitm.edu.my/id/eprint/63445
Edit Item
Edit Item

Download

[thumbnail of 63445.pdf] Text
63445.pdf

Download (1MB)

ID Number

63445

Indexing

Statistic

Statistic details