| dc.description.abstract |
Tuberculosis (TB), caused by Mycobacterium tuberculosis, remains a major global health
threat and continues to demand new, effective therapeutic agents. Chemical graph theory
offers a powerful approach to studying molecular structures and predicting their
physicochemical properties without the need for extensive laboratory experiments. In
chemical graph theory, molecules are represented as graphs where atoms are vertices and
covalent bonds are edges, allowing computation of numerical descriptors called topological
indices that capture the structural and connectivity features of molecules. The objective of
this study is to identify the selected Rehan–Lanel(RL) indices that are highly correlated with
the physicochemical properties of anti-tuberculosis drugs and to use these indices to build
regression models capable of predicting properties such as boiling point, flash point, molar
refractivity, molar volume, and polarizability for anti-tuberculosis drugs, namely, amikacin,
bedaquiline, clofazimine, delamanid, ethambutol, ethionamide, imipenem-cilastatin,
isoniazid, levofloxacin, linezolid, moxifloxacin, and 𝑝-aminosalicylic acid. Chemical graphs
of these anti-tuberculosis drugs were constructed, representing each atom as a vertex and
each bond as an edge. The first, second, third, and fourth RL indices and corresponding
Revan versions of these RL indices were calculated for each drug. Six physicochemical
properties were compiled for the same set of compounds. Statistical analyses were performed
to investigate the relationships between each topological index and each physicochemical
property. The results revealed that different indices exhibited strong and highly significant
correlations with specific properties. Certain Rehan–Lanel indices showed the highest
correlations with molar refraction, molar volume, and polarizability, while specific Rehan–
Lanel Revan indices correlated best with boiling point and flash point. This study
demonstrates that chemical graph theory and topological indices provide an efficient, low-
cost approach to predict physicochemical properties of anti-tuberculosis drugs, supporting
early-stage drug screening and design. Future research may focus on integrating these
indices or developing hybrid descriptors to simultaneously predict multiple properties,
further enhancing their application in quantitative structure–property relationship studies
and drug discovery. |
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