Anti-Ebola: an initiative to predict Ebola virus inhibitors through machine learning

Rajput, Akanksha and Kumar, Manoj (2021) Anti-Ebola: an initiative to predict Ebola virus inhibitors through machine learning. MOLECULAR DIVERSITY.

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Official URL: https://link.springer.com/article/10.1007/s11030-0...

Abstract

Ebola virus is a deadly pathogen responsible for a frequent series of outbreaks since 1976. Despite various efforts from researchers worldwide, its mortality and fatality are quite high. For antiviral drug discovery, the computational efforts are considered highly useful. Therefore, we have developed an 'anti-Ebola' web server, through quantitative structure-activity relationship information of available molecules with experimental anti-Ebola activities. Three hundred and five unique anti-Ebola compounds with their respective IC50 values were extracted from the 'DrugRepV' database. Later, the compounds were used to extract the molecular descriptors, which were subjected to regression-based model development. The robust machine learning techniques, namely support vector machine, random forest and artificial neural network, were employed using tenfold cross-validation. After a randomization approach, the best predictive model showed Pearson's correlation coefficient ranges from 0.83 to 0.98 on training/testing (T274) dataset. The robustness of the developed models was cross-evaluated using William's plot. The highly robust computational models are integrated into the web server. The 'anti-Ebola' web server is freely available at https://bioinfo.imtech.res.in/manojk/antiebola . We anticipate this will serve the scientific community for developing effective inhibitors against the Ebola virus.

Item Type: Article
Additional Information: Copyright of this article belongs to SPRINGER
Uncontrolled Keywords: Ebola virus; Machine learning; Prediction algorithm; QSAR; Random forest; Web server.
Subjects: Q Science > QR Microbiology
Depositing User: Dr. K.P.S.Sengar
Date Deposited: 28 Mar 2022 05:26
Last Modified: 28 Mar 2022 05:26
URI: http://crdd.osdd.net/open/id/eprint/2725

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