| dc.description.abstract |
Chemical graph theory provides valuable tools for modelling and designing chemical
structures and complex networks. It represents atoms as vertices and bonds as edges.
Topological indices are numerical descriptors derived from molecular graphs of chemical
compounds. These descriptors can be used to investigate structural features of molecules. It
can be categorized as degree-based, distance-based, and spectral-based topological indices.
Degree-based topological indices are the most investigated type of topological indices used
in mathematical chemistry. Although these indices have proven useful, they sometimes fail
to distinguish between non-isomorphic molecular graphs and capture subtle structural
variations. In Quantitative-Structure Property Relationships (QSPR) studies, modifications to
topological indices often enhance their statistical correlation with the physicochemical or
biological properties of molecules, thereby improving predictive performance. Therefore,
researchers develop and study modifications of existing topological indices. This research
aims to modify the existing topological indices, introduce new indices, and validate these
modified topological indices using the QSPR modelling approach. In the study, the novel
modified topological invariants were formulated by modifying the existing indices, namely,
Forgotten index, Atom-bond connectivity index, Sombor index, Nirmala index, Gourava
indices, Randic index, Zagreb indices, Geometric-arithmetic index, Sum-connectivity index,
and Symmetric division degree index. Then, to validate novel topological indices, the QSPR
analysis was conducted. Moreover, the linear regression models were built to predict physical
properties of the ten anti-cancer drugs for these modified topological indices. Also, we
computed the correlation coefficients between the new modified indices and each of the
physical properties of anti-cancer drugs. According to Randic’s desirable attributes for
topological indices, a topological index should have a good correlation with at least one
property. These modified topological indices are strongly correlated with physicochemical
properties of anti-cancer drugs. Therefore, these findings would be beneficial for designing
effective anticancer drugs without conducting expensive and time-consuming laboratory
experiments. Also, these novel modified indices can be used to forecast physicochemical
properties of medicines for other types of diseases. |
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