Topological characterization of statistically clustered networks for molecular similarity analysis

被引:0
作者
Sambanthan Gurunathan
Thangaraj Yogalakshmi
Krishnan Balasubramanian
机构
[1] Vellore Institute of Technology,Department of Mathematics, School of Advanced Sciences
[2] Arizona State University,School of Molecular Sciences
来源
Journal of Mathematical Chemistry | 2023年 / 61卷
关键词
Molecular similarity analysis; Statistically clustered networks; Szeged index; Padmakar–Ivan index; Mostar index;
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中图分类号
学科分类号
摘要
Statistical clustering technique is extensively employed in molecular similarity analysis where molecules can be clustered on the basis of Euclidean similarity distances derived from rules of similarity measures. Such clusters can be extremely useful in quantitative structure–property relations as any representative within a cluster would have properties similar to other members of the cluster. Consequently, topological techniques for the characterization of such statistical clusters can be useful in many areas including drug research. We compute distance-based topological indices of the statistical cluster networks such as Szeged, Padmakar–Ivan and Mostar indices which provide different measures such as centrality, peripherality, and other properties of the corresponding networks.
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页码:859 / 876
页数:17
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共 85 条
[1]  
Alaeiyan M(2016)Application of n-distance balanced graphs in distributing management and finding optimal logistical hubs Iran. J. Manag. Stud. 9 783-793
[2]  
Kharazi H(2019)Mostar indices of carbon nanostructures and circumscribed donut benzenoid systems Int. J. Quantum Chem. 119 e26043-154
[3]  
Arockiaraj M(2014)Equal opportunity networks, distance-balanced graphs, and Wiener game Discret. Optim. 12 150-948
[4]  
Clement J(2021)Combinatorics, big data, neural network & AI for medicinal chemistry & drug administration Lett. Drug Des. Discov. 18 943-890
[5]  
Tratnik N(2000)Use of statistical and neural net approaches in predicting toxicity of chemicals J. Chem. Inf. Comput. Sci. 40 885-742
[6]  
Balakrishnan K(2002)Quantitative molecular similarity analysis (QMSA) methods for property estimation: a comparison of property-based, arbitrary, and tailored similarity spaces SAR QSAR Environ. Res. 13 727-217
[7]  
Brešar B(2010)Measuring deprivation in urban neighborhoods—the case of Szeged Geographica Timisiensis 1 209-22
[8]  
Changat M(2016)Molecular spaces quantum quantitative structure–properties relations (QQSPR): a quantum mechanical comprehensive theoretical framework Int. J. Quant. Struct. Prop. Relat. 1 1-182
[9]  
Klavžar S(2015)Quantum polyhedra, definitions, statistics and the construction of a collective quantum similarity index J. Math. Chem. 53 171-466
[10]  
Vesel A(2003)Comparisons and validation of statistical clustering techniques for microarray gene expression data Bioinformatics 19 459-3013