The Prediction of Pharmacokinetic Properties of Compounds in Hemigraphis alternata (Burm.F.) T. Ander Leaves Using pkCSM

https://doi.org/10.22146/ijc.73117

Yeni Yeni(1*), Rizky Arcinthya Rachmania(2)

(1) Department of Pharmacy, Universitas Muhammadiyah Prof. DR. HAMKA, Jl. Delima II/IV, Jakarta 13460, Indonesia
(2) Department of Pharmacy, Universitas Muhammadiyah Prof. DR. HAMKA, Jl. Delima II/IV, Jakarta 13460, Indonesia
(*) Corresponding Author

Abstract


The inflammatory process aids in healing and maintains the body's balance. Untreated acute inflammation can cause organ disease, which can lead to a chronic inflammatory phenotype. Hemigraphis alternata is a plant that has anti-inflammatory activity. The compounds contained in H. alternata leaves have been predicted to have an affinity for receptors involved in the inflammatory process. A large number of drug candidates were withdrawn from preclinical trials due to their poor pharmacokinetic profiles. Drug compounds must cross the barriers that exist in the body to reach their biological targets so that they can generate a biological effect. The pharmacokinetic features of 22 components in H. alternata leaves were predicted in order to search for inflammatory medication candidates with suitable pharmacokinetic profiles. The pkCSM, a strategy for predicting and optimizing the pharmacokinetic properties of small molecules based on distance-based graph signatures was used in this work. The pkCSM employed 20 predictors separated into four groups: absorption, distribution, metabolism, and excretion. Based on the prediction findings, there are five substances with the best pharmacokinetic features, 8a-methyl-3,4,4a,5,6,7-hexahydro-2H-naphthalene-1,8-dione, (E)-3,7,11,15-tetramethylhexadec-2-en-1-ol, 2-methylenecholestan-3-ol, 5-(hydroxymethyl) furan-2-carbaldehyde and 2,3-dihydro-2,5-dimethyl-5H-1,4-dioxepin.


Keywords


Hemigraphis alternata; pharmacokinetic profiles; pkCSM

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DOI: https://doi.org/10.22146/ijc.73117

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