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Home/ All Articles/ Molecules Absorption Prediction Using Support Vector, Adaboost, Random Forest and Decision…

Abstract & Article Details

Short Communication • Vol.3, Issue 3 • ISSN: 2766-2276 • Open Access • CC BY 4.0

Open Access Short Communication Vol.3, Issue 3 March 22, 2022

Molecules Absorption Prediction Using Support Vector, Adaboost, Random Forest and Decision Tree Classification

DOI: 10.37871/jbres1433
Authors
Suprapto Suprapto* and Yatim Lailun Nimah
Full Text PDF

Abstract

Classification is supervised machine learning applicable to predict chemicals based on their properties. The chemical properties are derived from its structural and functional groups. Many molecular descriptors have been developed, one of which, was pharmacophore. Pharmacophore is a quantitative measure of molecules in their application as a pharmaceutical ingredient. The training datasets were 59 molecules categorized on their adsorption properties. The classification was carried out to divide the training set into their adsorption class using their pharmacophores. The prediction of enolic curcumin and its degradation product was used to verify the trueness of classification methods based on their pharmacophores. Curcumin and its degradation product were used because there were many studies carried out about curcumin and its pharmaceutical effect.

How to Cite

Suprapto Suprapto* and Yatim Lailun Nimah (2022). Molecules Absorption Prediction Using Support Vector, Adaboost, Random Forest and Decision Tree Classification. Journal of Biomedical Research & Environmental Sciences, 3(3). https://doi.org/10.37871/jbres1433

Article Information

JournalJournal of Biomedical Research & Environmental Sciences (JBRES)
ISSN2766-2276
DOI DOI 10.37871/jbres1433
Volume / IssueVol. 3, Issue 3
PublishedMarch 22, 2022
Article TypeShort Communication
Pages277-282
LicenseCC BY 4.0 — Open Access
PublisherSciRes Literature LLC, Sheridan, WY, USA
LanguageEnglish
Creative Commons BY 4.0

Published under CC BY 4.0 — free to share, copy, adapt, and redistribute with attribution.

Certificate of Publication

Certificate of Publication — Molecules Absorption Prediction Using Support Vector, Adaboost, Random Forest and Decision Tree Classification

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