PREDICTING PROPERTIES OF MOLECULES USING GRAPH INVARIANTS

被引:93
|
作者
BASAK, SC
NIEMI, GJ
VEITH, GD
机构
[1] Center for Water and the Environment, Natural Resources Research Institute, University of Minnesota, Duluth, 55811, MN
[2] US Environmental Protection Agency, Environmental Research Laboratory-Duluth, Duluth, 55804, MN
关键词
D O I
10.1007/BF01200826
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Topological indices (TIs) have been used to study structural-activity relationships (SAR) with respect to the physical, chemical, and biological properties of congeneric sets of molecules. Since there are many TIs and many are correlated, it is important that we identify redundancies and extract useful information from TIs into a smaller number of parameters. Moreover, it is important to determine if TIs, or parameters derived from TIs, can be used for global SAR models of diverse sets of chemicals. We calculated seventy-one TIs for three groups of molecules of increasing complexity and diversity: (a) 74 alkanes, (b) 29 alkylbenzenes, and (c) 37 polycyclic aromatic hydrocarbons (PAHs). Principal components analysis (PCA) revealed that a few principal components (PCs) could extract most of the information encoded by the seventy-one TIs. The structural basis of the first few PCs could be derived from their pattern of correlation with individual TIs. For the three sets of molecules, viz. alkanes, alkylbenzenes and PAHs, PCs were able to predict the boiling points reasonably well. Also, for the combined set of 140 chemicals consisting of the alkanes, alkylbenzenes and PAHs, the derived PCs were not as effective in predicting properties as in the case of individual classes of compounds.
引用
收藏
页码:243 / 272
页数:30
相关论文
共 50 条
  • [21] Predicting the Melting Point of Energetic Molecules Using a Learnable Graph Neural Fingerprint Model
    Song, Siwei
    Wang, Yi
    Tian, Xiaolan
    He, Wei
    Chen, Fang
    Wu, Junnan
    Zhang, Qinghua
    JOURNAL OF PHYSICAL CHEMISTRY A, 2023, 127 (19): : 4328 - 4337
  • [22] Predicting Tandem Mass Spectra of Small Molecules Using Graph Embedding of Precursor-Product Ion Pair Graph
    Zheng, Fujian
    You, Lei
    Zhao, Xinjie
    Lu, Xin
    Xu, Guowang
    ANALYTICAL CHEMISTRY, 2024, 96 (49) : 19190 - 19195
  • [23] THE FRACTAL NATURE, GRAPH INVARIANTS, AND PHYSICOCHEMICAL PROPERTIES OF NORMAL ALKANES
    ROUVRAY, DH
    PANDEY, RB
    JOURNAL OF CHEMICAL PHYSICS, 1986, 85 (04): : 2286 - 2290
  • [24] Duality of graph invariants
    Bu, Kaifeng
    Gu, Weichen
    Jaffe, Arthur
    SCIENCE CHINA-MATHEMATICS, 2020, 63 (08) : 1613 - 1626
  • [25] GRAPH INVARIANTS FOR FULLERENES
    BALABAN, AT
    LIU, X
    KLEIN, DJ
    BABIC, D
    SCHMALZ, TG
    SEITZ, WA
    RANDIC, M
    JOURNAL OF CHEMICAL INFORMATION AND COMPUTER SCIENCES, 1995, 35 (03): : 396 - 404
  • [26] Convex Graph Invariants
    Chandrasekaran, Venkat
    Parrilo, Pablo A.
    Willsky, Alan S.
    SIAM REVIEW, 2012, 54 (03) : 513 - 541
  • [27] Duality of graph invariants
    Kaifeng Bu
    Weichen Gu
    Arthur Jaffe
    Science China(Mathematics), 2020, 63 (08) : 1613 - 1626
  • [28] Duality of graph invariants
    Kaifeng Bu
    Weichen Gu
    Arthur Jaffe
    Science China Mathematics, 2020, 63 : 1613 - 1626
  • [29] Predicting Antibacterial Drugs Properties Using Graph Topological Indices and Machine Learning
    Shafii Abubakar, Muhammad
    Ojonugwa, Ejima
    Sanusi, Ridwan A.
    Hassan Ibrahim, Abdulkarim
    Olalekan Aremu, Kazeem
    IEEE ACCESS, 2024, 12 : 181420 - 181435
  • [30] Unsupervised word spotting using a graph representation based on invariants
    Bui, Quang Anh
    Visani, Muriel
    Mullot, Remy
    2015 13TH IAPR INTERNATIONAL CONFERENCE ON DOCUMENT ANALYSIS AND RECOGNITION (ICDAR), 2015, : 616 - 620