Heavy Metals Potentiometric Sensitivity Prediction by Firefly-Support Vector Machine Modeling Method

被引:1
|
作者
Pourbasheer, Eslam [1 ]
Laki, Reza Mahmoudzadeh [1 ]
Khalifehlou, Mohammad Sarafraz [1 ]
机构
[1] Univ Mohaghegh Ardabili, Fac Sci, Dept Chem, POB 179, Ardebil, Iran
来源
关键词
Ion-selective electrode; Heavy metals; QSPR; FireFly; Support vector machine; SENSORS; INHIBITORS; QSPR; QSAR;
D O I
10.22034/abec.2024.715433
中图分类号
O646 [电化学、电解、磁化学];
学科分类号
081704 ;
摘要
The quantitative structure-property relationship (QSPR) method is an efficient and elegant method for estimating the critical parameters of a wide range of compounds. In this work, the QSPR data set included the structures of 45 modified diphenyl phosphoryl acetamide ionophores along with their sensitivity to Cd2+, 2+ , Cu2+, 2+ , and Pb2+. 2+ . The data set was divided into the training set, including 36 compounds, and the test set, including 9 compounds. The stepwise-multiple linear regressions (SW-MLR), firefly multiple linear regressions (FA-MLR), and firefly-support vector machine (FA-SVM) models were produced on the training set with sensitivity of ionophores for Cd2+, 2+ , Cu2+, 2+ , and Pb2+ 2+ for predicting the potentiometric sensitivity of plastic polymer membrane sensors. The FA-SVM model showed good statistical results for all three cations. Internal and external validation was done to ensure the performance of the model. The results showed acceptable accuracy of the proposed method in identifying important descriptors in QSPR. The results of this study and the interpretation of the descriptors entered in the model can help to design new selective ligands.
引用
收藏
页码:764 / 785
页数:22
相关论文
共 50 条
  • [21] An Early Prediction Method of Software Reliability Based on Support Vector Machine
    Li, Xingguo
    Li, Xiaofeng
    Shu, Yanhua
    2007 INTERNATIONAL CONFERENCE ON WIRELESS COMMUNICATIONS, NETWORKING AND MOBILE COMPUTING, VOLS 1-15, 2007, : 6075 - 6078
  • [22] Traffic accident prediction method based on improved support vector machine
    Feng, H.
    Huang, C.X.
    Qiu, S.
    Zhang, C.Y.
    Zhou, Y.T.
    Advances in Transportation Studies, 2024, 2 (Special Issue): : 113 - 128
  • [23] A WAVELET SUPPORT VECTOR MACHINE COUPLED METHOD FOR TIME SERIES PREDICTION
    Ben Mabrouk, Anouar
    Kortas, Hedi
    Dhifaoui, Zouhaier
    INTERNATIONAL JOURNAL OF WAVELETS MULTIRESOLUTION AND INFORMATION PROCESSING, 2008, 6 (06) : 851 - 868
  • [24] A hybrid firefly and support vector machine classifier for phishing email detection
    Adewumi, Oluyinka Aderemi
    Akinyelu, Ayobami Andronicus
    KYBERNETES, 2016, 45 (06) : 977 - 994
  • [25] A Modified Firefly Algorithm with Support Vector Machine for Medical Data Classification
    Sahmadi, Brahim
    Boughaci, Dalila
    Rahmani, Rekia
    Sissani, Noura
    COMPUTATIONAL INTELLIGENCE AND ITS APPLICATIONS, 2018, 522 : 232 - 243
  • [26] Modeling a PEMFC by a support vector machine
    Zhong, Zhi-Dan
    Zhu, Xin-Jian
    Cao, Guang-Yi
    JOURNAL OF POWER SOURCES, 2006, 160 (01) : 293 - 298
  • [27] Support vector machine firefly algorithm based optimization of lens system
    Shamshirband, Shahaboddin
    Petkovic, Dalibor
    Pavlovic, Nenad T.
    Ch, Sudheer
    Altameem, Torki A.
    Gani, Abdullah
    APPLIED OPTICS, 2015, 54 (01) : 37 - 45
  • [28] A Combined Method to Estimate Wind Speed Distribution Based on Integrating the Support Vector Machine with Firefly Algorithm
    Gani, Abdullah
    Mohammadi, Kasra
    Shamshirband, Shahaboddin
    Altameem, Torki A.
    Petkovic, Dalibor
    Ch, Sudheer
    ENVIRONMENTAL PROGRESS & SUSTAINABLE ENERGY, 2016, 35 (03) : 867 - 875
  • [29] Spatial Choice Modeling Using the Support Vector Machine (SVM): Characterization and Prediction
    Yoon, Yong
    PREDICTIVE ECONOMETRICS AND BIG DATA, 2018, 753 : 767 - 778
  • [30] Nonlinear aeroelastic modeling of aircraft using support vector machine method
    Bagherzadeh, Seyed Amin
    AIRCRAFT ENGINEERING AND AEROSPACE TECHNOLOGY, 2020, 92 (03): : 502 - 518